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Article

A Probabilistic Approach to Overestimation by an Imperfect Inspector Subject to Random Defective Rates

Department of Management Engineering, College of Science & Technology, Dankook University, Cheonan 31116, Republic of Korea
Symmetry 2025, 17(2), 284; https://doi.org/10.3390/sym17020284
Submission received: 15 December 2024 / Revised: 14 January 2025 / Accepted: 7 February 2025 / Published: 12 February 2025
(This article belongs to the Section Mathematics)

Abstract

:
This study investigates overestimations in defect inspections performed by imperfect inspectors, particularly in scenarios involving random defective rates. Mathematical models are developed under two key assumptions: (1) inspection errors are either constant or uniformly distributed and (2) defective rates follow a random uniform distribution. Four analytical models are used to evaluate the probability of overestimation (PO) and identify critical defect rate thresholds (CFBs). The findings reveal that the PO approaches 100% as defect rates approach zero, irrespective of inspection error characteristics. Sensitivity analysis demonstrates model robustness under varying error distributions and parameter changes. Addressing practical concerns, this research highlights the need to revise inspection schemes to mitigate biases, especially in industries with stringent quality control standards, such as electronics and pharmaceuticals. Recommendations include integrating probabilistic error models and adopting dynamic calibration systems to improve inspection accuracy. By providing a theoretical foundation for tackling overestimation, this study has significant implications for improving fairness and efficiency in global supply chains.

1. Introduction

As an example, assume that there exists a batch of items with some defective rate (DR) whose constancy is unknown and is exposed to an imperfect inspector with nonzero inspection errors for the purpose of estimating the true value. This far-from-perfect inspector might be an automatic inspection machine. The inspector can have both a false high and a false low true defect rate (TDR). If a series of groups with heterogeneous DRs are presented to the inspector, the chance that the inspector overestimates, called the global probability of overestimation (PO), is calculated by taking the ratio of the number of overestimations recorded and the total number of groups diagnosed. In the early 2020s, a BLU manufacturer in Korea performed similar factory experiments and suggested an interpretation that imperfect inspectors are prone to overestimate the TDR if it is very low. Put simply, the inspector defective rate (IDR), the rate of defects detected by the inspector, might reliably exceed the TDR when the TDR is equal to zero. Should they be correct, the ramifications would likely require a revision of current inspection protocols. Also, if the PO is deemed necessary in traditional inspections for product “flawless” inspection, then traditional inspection methods will have to include the PO. The difficulty is proving their hypothesis in a coherent way. In order to prove or disprove their conjecture, various methodologies covering the statistical concepts of the PO and methods of PO computation would be required. To ensure mathematical rigor, the formal derivation and proofs of these properties are provided in Appendix A.
Since the 1970s, research on inspector errors has explored various aspects of quality control, including the effects of inspection errors on lot acceptance probability, average outgoing quality, and optimal inspection cycles. Collins et al. (1970), Dorris and Foote, Raz and Thomas, Tang, Lee, Duffuaa and Khan, and Yang and Cho examined different aspects of inspection errors, such as the impact of Type I and Type II errors on defect detection and strategies for optimizing inspection sequences [1,2,3,4,5,6,7]. Sylla and Drury [8] proposed the concept of inspector liability, analyzing how error-related payoffs and discriminability between noise and signal distributions influence quality decisions. Burk et al. [9] established a mathematical relationship between TDR and IDR, showing that for high-quality processes, IDR approaches Type I error as TDR decreases. Additionally, Yang [10] introduced a K-stage inspection-rework (K-IR) system and mathematically demonstrated that IDR always exceeds TDR under certain conditions, which highlighted the challenges of achieving accurate defect rate estimations in multi-stage inspections.
This issue of overestimating defective rates has continued to be a crucial research topic in the field of quality control. Recent studies have highlighted the significant impact of overestimation on various industrial settings. For instance, a hydrogen pipeline inspection study demonstrated how data-driven approaches can effectively address such overestimation issues while enhancing prediction accuracy [11].
The overestimation of defective rates by imperfect inspectors remains a significant challenge in quality control, especially in industries where maintaining extremely low defective rates (e.g., parts per million) is essential. For instance, in the BLU manufacturing industry, such overestimation can result in unnecessary financial losses, inefficiencies, and strained relationships in global supply chains. Addressing these challenges is critical to ensuring fairness and accuracy in international trade. This study developed a theoretical framework to better understand and mitigate overestimation, providing a foundation for revising inspection protocols.
Despite advancements, research addressing the systematic analysis of random defective rates and their influence on overestimation remains limited. While recent studies have proposed Bayesian models for inspection optimization [12] and examined the effects of inspection errors in inventory control [13,14], these approaches have primarily focused on specific applications such as rail systems and additive manufacturing. However, a more generalized probabilistic model applicable across diverse industries is still lacking. In an effort to mitigate inspection errors and enhance quality control, recent studies have integrated data-driven methodologies. Song et al. (2024) developed a data-driven quality prediction model incorporating uncertainty quantification to improve active sampling inspection in steel production. Their approach highlights the potential of leveraging uncertainty modeling to refine defect rate estimation. Inspired by such advancements, our research aims to systematically analyze the overestimation phenomenon using probabilistic models applicable to various industrial contexts [15].
In this context, recent studies have further emphasized the need for probabilistic models to address these inspection inaccuracies. Additionally, data-driven approaches, such as random forest models, have been adopted in manufacturing to enhance prediction accuracy and address quality control challenges [16].
For instance, Altay and Baykal-Gürsoy [12] developed a Bayesian model addressing the defect arrival rates in rail systems where zero-inflated miss rates affect inspection reliability. Their model offers insights into optimizing inspection schedules and maintenance to minimize the consequences of missed defects. Manna et al. [13] investigated the influence of inspection errors on inventory models, analyzing the implications of Type I and Type II errors on production results. Their research indicates that improving inspection and warranty strategies can help reduce the financial consequences of misidentified defects. Furthermore, Mokhtari and Asadkhani [14] extended economic order quantity models to include inspection errors, demonstrating that even small error rates can substantially reduce profits if not addressed with tailored strategies.
These recent research trends can be seen as further developments and extensions of the initial work by Yang and Chang [17], who were the first authors to study the overestimation conjecture from the factory perspective and proved statistically a significant theorem that the PO approaches 100% as the TDR approaches zero regardless of inspectors. Their research provided a fundamental understanding of the overestimation problem, and subsequent studies have built upon this foundation to develop models applicable to more complex situations and various industrial sectors.
In comparison with these past studies, our research extends Yang and Chang’s theorem by incorporating the case where TDR itself is treated as a random variable, allowing for a more generalized application of the model. While previous approaches have often been tailored to specific industries, such as rail systems or additive manufacturing, this study proposes an analytical framework that can be applied to broader manufacturing settings where defective rates are extremely low, and inspection errors are nonzero. By systematically analyzing the impact of TDR randomness on overestimation, our research provides new insights into improving defect rate estimation and refining quality control protocols in various industries.

2. Problem Statement

Yang and Chang [17] developed formulas for the IDR (the defect rate as determined by an imperfect inspector) and the likelihood of the inspector overestimating, given certain conditions. These conditions include an imperfect inspector with nonzero inspection errors evaluating an endless series of items one at a time, where the true defect rate (TDR) is constant q and unknown to the inspector. The formulas are as follows:
Q c = q + lim n 1 n ( 1 q ) i = 1 n A i q i = 1 n B i
P O ( q ) = P r Q c > q = P r lim n 1 n ( 1 q ) i = 1 n A i q i = 1 n B i > 0
In these equations, i represents the number of inspected items. The term A i denotes the chance that the inspector incorrectly classifies the i-th conforming item as nonconforming and wrongly rejects it. Conversely, B i signifies the probability that the inspector mistakenly identifies the i-th nonconforming item as conforming and incorrectly accepts it.
This study incorporated the following premises:
1.
The A i values were presumed to be either
  • A fixed α across all i or;
  • Independently and identically distributed according to a uniform density function f A ( a ) = 1 α u · I ( 0 , α u ] ( a ) , for 0 < α u 1 .
2.
Similarly, the B i values were assumed to be either
  • A constant β for every i or;
  • Independently and identically distributed according to a uniform density function f B ( b ) = 1 β u · I ( 0 , β u ] ( b ) , for 0 < β u 1 .
3.
The constants α and β were defined as E [ A ] and E [ B ] , respectively, with E [ X ] denoting the expected value of a random variable X.
Since a constant can be regarded as a random variable with zero variance, it follows that Equations (1) and (2) can be obtained, respectively, as
Q c = ( 1 q ) A + q ( 1 B )
P O ( q ) = P r Q c > q = P r ( 1 q ) A q B > 0
Sylla and Drury [8] defined the apparent nonconforming fraction as
( 1 q ) α + q ( 1 β ) .
Yang and Chang [17] described CF as a critical fraction defective (CF), defined as the critical defect rate at which the probability of overestimation or underestimation is exactly 50%. Mathematically, this is represented as P O ( C F ) = 50 % or, equivalently, C F = P O 1 ( 0.5 ) . Since the true defect rate (TDR) assumptions affect the derivation of both P O ( q ) and CF, we use P O C ( q ) and CFC when the TDR is a constant q as well as P O ( q ) and CFR when the TDR is a random variable Q with distribution f Q ( q ) = 1 q u I ( 0 , q u ] ( q ) for 0 < q u 1 .
Based on their assumptions and results from four statistical models, they established the following theorem:
1.
An imperfect inspector with ρ has a unique P O curve with CF, where ρ = E [ B ] / E [ A ] .
2.
P O is a function of q and ρ , denoted as P O C ( q , ρ ) .
3.
P O decreases with q, reaching its maximum at P O C ( 0 , ρ ) = 1 and minimum at P O C ( 1 , ρ ) = 0 .
4.
P O decreases with ρ , with P O C ( q , 0 ) = 1 and P O C ( q , 1 ) = 0 .
5.
A unique C F C = 1 1 + ρ always exists, dependent only on inspection errors, not q.
6.
The inspector overestimates q when P O > 0.5 for 0 q < C F C , accurately estimates q when P O = 0.5 for q = C F C , and underestimates q when P O < 0.5 for C F C < q 1 .
The third statement indicates that P O approaches 100% as q nears 0%, regardless of ρ . We aimed to determine if this theorem holds when he TDR follows the random variable Q distributed with f Q ( q ) . By substituting Q with q in Equations (3) and (4), we derive IDR and P O as
Q r = ( 1 Q ) A + Q ( 1 B )
P O ( q u ) = Pr Q r > Q = Pr ( 1 Q ) A > Q B
The P O under our assumptions should be expressed using input parameters q u , α u or α , and β u or β . However, as P O is a function of q u and ρ (where ρ = E [ B ] / E [ A ] ), we focus on the P O as a function of q u , and we use P O ( q u ) for simplicity. If a unique q u * exists, where P O ( q u * ) = 0.5 , it is termed “the critical DR bound” or the C F B . The C F B does not exist if and only if P O ( q u ) > 0.5 for 0 < q u 1 . Since inspection errors A and B can be constant or random, we require four types of analysis for P O and C F B , as illustrated in Table 1.
This research problem can be concisely stated as follows: derive P O ( q u ) and C F B for each model and address the fundamental question: does their theorem remain valid when the TDR itself is a random variable?

3. Analysis of Model R-I (C, C)

The key input and output variables for Model R-I are summarized in Table 2. Consider the scenario where A = α and B = β , with α and β being constants. Given that α and β can be interpreted as E [ A ] and E [ B ] , respectively, the correlation coefficient ρ can be calculated as
ρ = β α
The subsequent proposition demonstrates that the characteristic form of P O 1 ( q u ) changes based on the value of ρ , as illustrated in Figure 1. Additionally, the critical fraction bound C F B 1 is given by
C F B 1 = 2 1 + ρ ,
which depends solely on ρ and exists only when ρ 1 (refer to Figure 1b,c). It is noteworthy that
P O 1 ( q u ) = 1 for 0 < q u C F B 1 .
Figure 1a indicates that P O 1 ( q u ) , determined exclusively by the inspector with ρ < 1 , consistently remains above the 50% horizontal line, regardless of extremely low inspection error values. For instance, when ( α , β ) = ( 10 9 % , 10 10 % ) , the probability of overestimation P O 1 ( q u ) exceeds 90.9%:
P O 1 ( q u ) = 1 1 + ρ , where ρ = 0.1 .
This outcome is not easily explained through conventional reasoning.
Figure 1b displays the graph of P O 1 ( q u ) for ρ = 1 , where C F B 1 = 100 % . Consequently, the P O surpasses 50% if and only if 0 < ρ < 1 .
Figure 1c depicts an actual case from a BLU company in Korea, with ρ = 5 and C F B 1 = 16.7 % . As quality control managers have expressed concern, an imperfect inspector always overestimates with
P O = 100 % if q u 16.7 % ,
and overestimates with
P O = 50 % if 16.7 % q u 33.3 % .
These percentages, 16.7% and 33.3%, likely exceed the typical fraction defective in BLU manufacturing.
Proposition 1.
For Model R-I (C, C), the following formulas and statements are true:
1. 
P O 1 ( q u ) = P O 11 ( q u ) = 1 f o r 0 < q u 1 1 + ρ P O 12 ( q u ) = 1 ( 1 + ρ ) q u f o r 1 1 + ρ q u 1 .
2. 
P O 12 ( q u ) is a strictly decreasing convex function with the maximum P O 12 ( 1 1 + ρ ) = 1 and the minimum P O 12 ( 1 ) = 1 1 + ρ , where 0 < 1 1 + ρ < 1 .
3. 
For 0 < ρ < 1 , the critical fraction bound C F B 1 does not exist, and the inspector with ρ consistently overestimates, with P O > 50 % .
4. 
When ρ 1 , there exists a unique C F B 1 = 2 1 + ρ . In this case,
  • The inspector overestimates with P O > 50 % for 0 < q u C F B 1 .
  • The inspector provides an accurate estimate with P O = 50 % when q u = C F B 1 .
  • The inspector underestimates with P O < 50 % for C F B 1 < q u 1 .
Proof. 
1.
Since α + β > 0 , Equations (5) and (6) can be expressed as
Q r 1 = Q + α ( 1 Q ) β Q
P O 1 ( q u ) = P r { Q r 1 > Q } = P r { Q < α α + β }
Equation (7) can be further reduced to
P O 1 ( q u ) = P O 11 ( q u ) = 1 for 0 < q u α α + β P O 12 ( q u ) = F Q ( α α + β ) = 1 ( 1 + ρ ) q u for α α + β q u 1
where F Q ( q ) = 0 q f Q ( q ) d q . Hence, Proposition 1(1) holds true.
2.
Given that P O 12 ( q u ) = 1 ( 1 + ρ ) q u 2 < 0 and P O 12 ( q u ) = 2 ( 1 + ρ ) q u 3 > 0 , P O 12 ( q u ) exhibits a strict monotonic decrease and convexity for 1 1 + ρ q u 1 . It follows that P O 12 ( 1 ) = 1 1 + ρ P O 12 ( q u ) 1 and 0 < 1 1 + ρ < 1 .
3.
C F B 1 does not exist if and only if the minimum of P O 12 ( q u ) exceeds 0.5, i.e., P O 12 ( 1 ) = 1 1 + ρ > 0.5 , for ρ > 0 , which gives 0 < ρ < 1 . For ρ 1 , since P O 12 ( q u ) is a strictly decreasing function with 0 < P O 12 ( q u ) 1 , there exists one and only one C F B , which can be obtained by solving P O 12 ( C F B 1 ) = 0.5 for 1 1 + ρ C F B 1 1 . Thus, we have C F B 1 = 2 1 + ρ , and Proposition 1(3) holds true.
Example 1.
For q u = 5 % and the different inspection errors of inspector j for j = 1 , 2 , 3 given in Table 3, P O 1 ( q u ) and C F B 1 for each inspector can be computed by using Proposition 1 and are summarized in the table. If we would like to select the inspector satisfying P O 1 ( q u ) = 50 % , then inspector 3 must be selected even though they or an automatic inspection machine is the worst of all in the sense that α 1 < α 2 < α 3 and β 1 < β 2 < β 3 .

4. Analysis of Model R-II (R, C)

The parameters for Model R-II are provided in Table 4. Suppose that B = β for constant β , and A is distributed with f A ( a ) . Since β is assumed to be E [ B ] , ρ can be obtained as 2 β / α u . In the following proposition, the representative shape of P O 2 ( q u ) as shown in Figure 2 varies depending on the value of ρ , and C F B 2 exists if and only if ρ > ρ 2 0.7959 . Figure 2a shows a typical graph of P O 2 ( q u ) for 0 < ρ < ρ 2 without C F B 2 since P O 2 ( q u ) > 0.5 for 0 < ρ < ρ 2 . Figure 2b shows a graph of P O 2 ( q u ) for ρ = ρ 2 with C F B 2 = 100 % . Figure 2c shows a real case of the BLU company in Korea, where ρ = 5 > ρ 2 , and C F B 2 ( = 2 + ρ ln ( ρ 2 + ρ ) 31.8 % ) . Just as shown in the previous example, we are confronted with a similar and unbelievable phenomenon: an imperfect inspector overestimates with P O > 50 % if q u < 31.8 % .
Proposition 2.
For Model R-II (R, C), the following formulas and statements are true:
1. 
P O 2 ( q u ) = P O 21 ( q u ) = 1 + ρ 2 + ρ ln ( 1 q u ) 2 q u f o r 0 < q u 2 2 + ρ P O 22 ( q u ) = 1 q u 1 + ρ 2 ln ρ 2 + ρ f o r 2 2 + ρ q u 1 .
2. 
P O 21 ( q u ) is a strictly decreasing concave function with the supremum lim q u 0 P O 21 ( q u ) = 1 and the minimum P O 21 ( 2 2 + ρ ) , and P O 22 ( q u ) is a strictly decreasing convex function with the maximum P O 22 ( 2 2 + ρ ) and the minimum P O 22 ( 1 ) where
0.5 < P O 21 ( 2 2 + ρ ) = P O 22 ( 2 2 + ρ ) = 1 + ρ 2 + ρ ( 2 + ρ ) 4 ln ρ 2 + ρ < 1 and 0 < P O 22 ( 1 ) = 1 + ρ 2 ln ρ 2 + ρ < 1 .
3. 
For 0 < ρ < ρ 2 , C F B 2 does not exist, and an inspector with ρ overestimates with P O > 50 % , where ρ 2 can be approximately obtained as 0.7959.
For ρ ρ 2 , there exists one and only one C F B 2 = 2 + ρ ln ( ρ 2 + ρ ) and an inspector with ρ overestimates with P O > 50 % for 0 < q u < C F B 2 , estimates with P O = 50 % for q u = C F B 2 and underestimates with P O < 50 % for C F B 2 < q u 1 .
Proof. 
1.
Equations (5) and (6) can be expressed as
Q r 2 = Q + A ( 1 Q ) β Q
P O 2 ( q u ) = P r { Q r 2 > Q } = P r { ( 1 Q ) A β Q > 0 }
Equation (8) can be further reduced to
P O 2 ( q u ) = P r { ( 1 q ) A β q > 0 } f Q ( q ) d q = ( q , a ) S 2 f A ( a ) f Q ( q ) d a d q
where S 2 = { ( q , a ) | a > β q / ( 1 q ) , 0 < a α u , 0 < q q u } .
Since the shape of S 2 depends upon q u and α u , which are dependent each other, Equation (9) can be reduced as follows: For α u β q u / ( 1 q u ) (or equivalently, 0 < q u 2 / ( 2 + ρ ) ), as shown in Figure 3a,
P O 21 ( q u ) = 1 α u q u 0 q u β q 1 q α u d a d q = 1 + ρ 2 + ρ ln ( 1 q u ) 2 q u .
For α u β q u / ( 1 q u ) (or equivalently, 2 / ( 2 + ρ ) q u < 1 ), as shown in Figure 3b,
P O 22 ( q u ) = 1 α u q u 0 α u 0 a a + β d a d q = 1 q u { 1 + ρ 2 ln ( ρ 2 + ρ ) } .
Even if q u = 1 , the above integral equation holds true since α u < 1 and S 2 does not change.
2.
Since P O 21 ( q u ) = ρ { q u + ( 1 q u ) ln ( 1 q u ) } / 2 q u 2 ( 1 q u ) < 0 from Property A1(1) and P O 21 ( q u ) = ρ { q u ( 3 q u 2 ) 2 ( 1 q u ) 2 ln ( 1 q u ) } / 2 q u 3 ( 1 q u ) 2 < 0 from Property A1(2), P O 21 ( q u ) is a strictly decreasing concave function. Since P O 22 ( q u ) = { 1 + ρ ln ( ρ / ( 2 + ρ ) ) / 2 } q u 2 < 0 and P O 22 = 2 { 1 + ρ ln ( ρ / ( 2 + ρ ) ) / 2 } / q u 3 > 0 from Property A1(3), P O 22 ( q u ) is a strictly decreasing convex function. Replacing ρ with 2 x and using Property A1(4) gives 0.5 < P O 21 ( 2 / ( 2 + ρ ) ) = 1 + 0.5 ρ + 0.25 ρ ( 2 + ρ ) ln ( ρ / ( 2 + ρ ) ) < 1 , and we have 0 < P O 22 ( 1 ) < 1 + 0.5 ρ ln ( ρ / ( 2 + ρ ) ) < 1 from Property A1(3).
3.
C F B 2 does not exist if and only if the minimum of P O 22 ( q u ) exceeds 0.5, i.e., P O 22 ( 1 ) > 0.5 for ρ > 0 . Since P O 22 ( 1 ) is a strictly decreasing function of ρ from Property A1(3), solving P O 22 ( 1 ) > 0.5 gives 0 < ρ < ρ 2 , where ρ 2 can be approximately obtained as 0.7959.
For ρ ρ 2 , since P O 21 ( q u ) > 0.5 and P O 22 ( q u ) is a strictly decreasing function with 0 < P O 22 ( q u ) < 1 , there exists one and only one C F B , which can be obtained by solving P O 22 ( C F B 2 ) = 0.5 for 2 / ( 2 + ρ ) C F B 2 1 . It follows that C F B 2 = 2 { 1 + 0.5 ρ ln ( ρ / ( 2 + ρ ) ) } , and Proposition 2(3) holds true.
Figure 3. The shape of region S 2 depending on q u and α u : (a) for α u β q u 1 q u ( q u α u α u + β ) ; (b) for α u β q u 1 q u ( q u α u α u + β ) .
Figure 3. The shape of region S 2 depending on q u and α u : (a) for α u β q u 1 q u ( q u α u α u + β ) ; (b) for α u β q u 1 q u ( q u α u α u + β ) .
Symmetry 17 00284 g003
Example 2.
For q u = 5 % and the different inspection errors of inspector j for j = 1 , 2 , 3 given in Table 5, P O 2 ( q u ) and C F B 2 for each inspector can be computed by using Proposition 2, which are summarized in the table. If we would like to select the inspector satisfying P O 2 ( q u ) = 50 % , then, since the P O of inspector 3 is the closest to 50%, inspector 3 must be selected again even though they/it are/is the worst inspector in the sense that α u 1 < α u 2 < α u 3 and β 1 < β 2 < β 3 .

5. Analysis of Model R-III (C, R)

The key parameters influencing Model R-III are outlined in Table 6. Supposing that A is constant, α and β are distributed with f B ( b ) . Since α is assumed to be E [ A ] , ρ can be obtained as β u / 2 α . In the following proposition, (1) the shape of P O 3 ( q u ) as shown in Figure 4 varies depending on the value of ρ , (2) P O 3 ( q u ) = 1 for 0 < q u < 1 / ( 1 + 2 ρ ) , and (3) C F B 3 exists if and only if ρ ρ 3 1.2564 . Figure 4a shows that the CFB does not exist since P O 3 ( q u ) exceeds 50% regardless of the value of q u . Figure 4b shows a graph of P O 3 ( q u ) for ρ = ρ 3 1.2564 and C F B 3 = 100 % . Figure 4c shows a real case of a BLU company, where ρ = 5 and C F B 3 = 42.3 % . It can be observed that an imperfect inspector overestimates with P O = 100 % if 0 < q u < 9.1 % , overestimates with P O > 50 % if 9.1 % < q u < 42.3 % , and underestimates with P O < 50 % if 42.3 % < q u < 100 % .
Proposition 3.
For Model R-III (C, R), the following formulas and statements are true:
1. 
P O 3 ( q u ) = P O 31 ( q u ) = 1 f o r 0 < q u 1 1 + 2 ρ P O 32 ( q u ) = 1 2 ρ q u 1 q u + ln { ( 1 + 2 ρ ) q u } f o r 1 1 + 2 ρ q u 1 .
2. 
P O 32 ( q u ) is a strictly decreasing concave function for 1 1 + 2 ρ q u e 1 + 2 ρ and a strictly decreasing convex function for e 1 + 2 ρ q u 1 , with the maximum P O 32 ( 1 1 + 2 ρ ) = 1 and the minimum P O 32 ( 1 ) = ln ( 1 + 2 ρ ) 2 ρ , where 0 < P O 32 ( 1 ) = ln ( 1 + 2 ρ ) 2 ρ < 1 .
3. 
For 0 < ρ < ρ 3 , C F B 3 does not exist, and an inspector with ρ overestimates with P O > 50 % , where ρ 3 can be approximately obtained as 1.2564.
For ρ ρ 3 , there exists one and only one C F B 3 , which can be obtained by solving
( 1 + ρ ) C F B 3 ln C F B 3 = 1 + ln ( 1 + 2 ρ ) ,
and an inspector with ρ ρ 3 overestimates with P O > 50 % for 0 < q u < C F B 3 , estimates with P O = 50 % for q u = C F B 3 and underestimates with P O < 50 % for C F B 3 < q u 1 .
Proof. 
1.
Equations (5) and (6) can be expressed as
Q r 3 = Q + α ( 1 Q ) B Q
P O 3 ( q u ) = P r { Q r 3 > Q } = P r { α ( 1 Q ) B Q > 0 }
Equation (10) can be further reduced to
P O 3 ( q u ) = P r { α ( 1 q ) B q > 0 } f Q ( q ) d q = ( q , b ) S 3 f B ( b ) f Q ( q ) d b d q
where S 3 = { ( q , b ) | b < α ( 1 q ) / q , 0 < b β u , 0 < q q u } .
Since the shape of S 3 depends upon q u and β u , Equation (11) can be reduced as follows: For 0 < q u α / ( α + β u ) , as shown in Figure 5a,
P O 31 ( q u ) = 1 β u q u 0 q u 0 β u d b d q = 1
For α / ( α + β u ) q u 1 , as shown in Figure 5b,
P O 32 ( q u ) = 1 β u q u 0 α α + β u 0 β u d b d q + α α + β u q u 0 α ( 1 q ) q d b d q = 1 2 ρ q u 1 q u + ln { ( 1 + 2 ρ ) q u }
2.
The first and second derivatives of P O 32 ( q u ) can be obtained, respectively, as
P O 32 ( q u ) = ln { ( 1 + 2 ρ ) q u } 2 ρ q u 2
P O 32 ( q u ) = 1 2 ρ 1 q u 3 [ 1 2 ln { ( 1 + 2 ρ ) q u } ]
P O 32 ( q u ) is negative since ( 1 + 2 ρ ) q u > 1 . By solving P O 32 ( q u ) = 0 , the inflection point of P O 32 ( q u ) can be obtained at q u = e / ( 1 + 2 ρ ) , and it can be proven that P O 32 ( q u ) is negative for 1 / ( 1 + 2 ρ ) q u < e / ( 1 + 2 ρ ) and positive for e / ( 1 + 2 ρ ) < q u . The condition that the inflection point exists within 1 becomes ρ > 0.5 ( e 1 ) 0.3244 . It follows that if ρ > 0.5 ( e 1 ) , P O 32 ( q u ) is a strictly decreasing concave function for 1 / ( 1 + 2 ρ ) q u e / ( 1 + 2 ρ ) and a strictly decreasing convex function for e / ( 1 + 2 ρ ) q u 1 . If 0 < ρ 0.5 ( e 1 ) , P O 32 ( q u ) is a strictly decreasing concave function with P O 32 ( 1 ) P O 32 ( q u ) 1 for 1 / ( 1 + 2 ρ ) q u 1 , where 0 < P O 32 ( 1 ) = 0.5 ln ( 1 + 2 ρ ) / ρ < 1 from Property A1(6).
3.
C F B 3 does not exist if and only if the minimum of P O 32 ( q u ) exceeds 0.5, i.e., P O 32 ( 1 ) = 0.5 ln ( 1 + 2 ρ ) / ρ > 0.5 for ρ > 0 , which gives 0 < ρ < ρ 3 , where ρ 3 can be approximately obtained as 1.2564. For ρ ρ 3 , since P O 32 ( q u ) is a strictly decreasing function with 0 < P O 32 ( q u ) 1 , there exists one and only one C F B , which can be obtained by solving P O 32 ( C F B 3 ) = 0.5 or equivalently ( 1 + ρ 3 ) C F B 3 ln C F B 3 = 1 + ln ( 1 + 2 ρ ) for 1 / ( 1 + 2 ρ ) C F B 3 1 . It follows that Proposition 3(3) holds true.
Figure 5. The shape of the S 3 region depending on q u and β u : (a) S 3 for α α + β u q u ; (b) S 3 for α α + β u q u .
Figure 5. The shape of the S 3 region depending on q u and β u : (a) S 3 for α α + β u q u ; (b) S 3 for α α + β u q u .
Symmetry 17 00284 g005
Example 3.
For q u = 5 % and the different inspection errors of inspector j for j = 1 , 2 , 3 given in Table 7, P O 3 ( q u ) and C F B 3 for each inspector can be computed by using Proposition 3 and summarized in the table. If we would like to select the inspector satisfying P O 3 ( q u ) = 50 % , then since the P O of inspector 3 is the closest to 50% of all, inspector 3 must be selected again even if α 1 < α 2 < α 3 and β u 1 < β u 2 < β u 3 .

6. Analysis of Model R-IV (R, R)

Further details on Model R-IV’s input and output variables are provided in Table 8. Suppose that A and B are distributed with f A ( a ) and f B ( b ) , respectively. Since E [ A ] = 0.5 α u and E [ B ] = 0.5 β u , ρ can be obtained as β u / α u . The computation of P O 4 ( q u ) requires careful consideration of numerical aspects to ensure accurate results. For q u q 4 , P O 41 ( q u ) is calculated directly using the formula P O 41 ( q u ) = 1 + ρ 2 + ρ ln ( 1 q u ) 2 q u . Special attention is needed as q u approaches 0, where the logarithmic term ln ( 1 q u ) requires careful numerical handling.
For q u > q 4 , the calculation transitions to P O 42 ( q u ) , which involves the evaluation of multiple terms including ρ 2 ln ρ 1 + ρ . The computation near the transition point q 4 = 1 1 + ρ is particularly important as it determines the continuity of the probability curve. This transition can be verified by evaluating both formulas at q 4 , which should yield identical results.
The existence of C F B 4 is determined by examining P O 42 ( 1 ) . When ρ 1 , C F B 4 exists and can be found by solving ( 1 + ρ ) C F B 4 ln { ( 1 + ρ ) C F B 4 } = 1 + ρ + ρ 2 ln ρ 1 + ρ . This equation requires careful numerical treatment to ensure accurate results, particularly when ρ is large.
In the following proposition, the representative shape of P O 4 ( q u ) , which consists of two functions P O 41 ( q u ) and P O 42 ( q u ) , varies depending on the value of ρ , and C F B 4 exists if and only if ρ 1 , as shown in Figure 6. Figure 6a shows a typical graph of P O 4 ( q u ) for 0 < ρ < 1 , which does not have C F B 4 since P O 4 ( q u ) > 0.5 for 0 < ρ < 1 . Figure 6b shows a graph of P O 4 ( q u ) for ρ = 1 , which has C F B 4 = 100 % . Figure 6c shows a real case of a BLU company, where ρ = 5 , C F B 4 37.6 % . As quality control managers have conjectured, an imperfect inspector overestimates with P O > 50 % if q u 37.6 % .
Proposition 4.
For Model R-IV (R, R), P O 4 ( q u ) can be obtained as
P O 4 ( q u ) = P O 41 ( q u ) = 1 + ρ 2 + ρ ln ( 1 q u ) 2 q u f o r 0 < q u q 4 P O 42 ( q u ) = 1 2 ρ q u 1 + ρ + ρ 2 ln ρ 1 + ρ q u + ln { ( 1 + ρ ) q u } f o r q 4 < q u < 1
where q 4 = 1 1 + ρ
Proof. 
1.
Equations (5) and (6) can be expressed as
Q r 4 = Q + ( 1 Q ) A B Q
P O 4 ( q u ) = P r { Q r 4 > Q } = P r { ( 1 Q ) A B Q > 0 } = P r { ( 1 q ) A q B > 0 } f Q ( q ) d q = ( a , b ) S r f A ( a ) f B ( b ) d a d b f Q ( q ) d q
where S r = { ( a , b ) | b < q s a , 0 < a α u , 0 < a β u , and 0 < α u , β u 1 } , and q s = ( 1 q ) / q . From Proposition 7 by Yang and Chang [17], we have ( a , b ) S r f A ( a ) f B ( b ) d a d b = 1 ρ q 2 ( 1 q ) for 0 < q q 4 ( 1 q ) 2 ρ q for q 4 < q < 1
Hence, Equation (12) can be further reduced as follows:
(1) For q u q 4 (or for ρ 4 q s r = ( 1 q u ) / q u ) , we have
P O 41 ( q u ) = 0 q u ( a , b ) S r f A ( a ) f B ( b ) d a d b f Q ( q ) d q = 0 q u 1 ρ q 2 ( 1 q ) f Q ( q ) d q = 1 q u 0 q u 1 ρ q 2 ( 1 q ) d q = 1 + ρ 2 + ρ ln ( 1 q u ) 2 q u
(2) For q 4 q u (or for ρ q s r ), we have
P O 42 ( q u ) = 0 q u ( a , b ) S r f A ( a ) f B ( b ) d a d b f Q ( q ) d q = 1 q u 0 1 1 + ρ 4 1 ρ q 2 ( 1 q ) d q + 1 1 + ρ q u 1 q 2 ρ q d q = 1 q u 2 + ρ 2 ( 1 + ρ ) + ρ 2 ln ρ 1 + ρ + 1 2 ρ 1 1 + ρ q u + ln q u ( 1 + ρ ) = 1 2 ρ q u 1 + ρ + ρ 2 ln ρ 1 + ρ + ln q u ( 1 + ρ ) q u
Proposition 5.
1. 
P O 41 ( q u ) is a strictly decreasing concave function with the minimum P O 41 ( q 4 ) = 1 + 0.5 ρ + 0.5 ρ ( 1 + ρ ) ln ρ 1 + ρ and the supremum lim q u 0 P O 4 ( q u ) = 1 , where 0.75 < P O 41 ( q 4 ) < 1 .
2. 
P O 42 ( q u ) is a strictly decreasing function with the maximum P O 42 ( q 4 ) and the minimum P O 42 ( 1 ) = 1 2 1 + ρ ln ρ 1 + ρ + ln ( 1 + ρ ) ρ , where P O 42 ( q 4 ) = P O 41 ( q 4 ) and P O 42 ( 1 ) > 0 . In addition, P O 4 ( q u ) is differentiable at q u = q 4 .
3. 
C F B 4 does not exist for 0 < ρ < 1 , and an inspector with ρ < 1 overestimates with P O > 0.5 . For ρ 1 , there exists one and only one C F B 4 , which can be obtained by solving
( 1 + ρ ) C F B 4 ln { ( 1 + ρ ) C F B 4 } = 1 + ρ + ρ 2 ln ρ 1 + ρ ,
and an inspector with ρ 1 overestimates with P O > 0.5 for 0 < q u < C F B 4 , estimates with P O = 0.5 for q u = C F B 4 and underestimates with P O < 0.5 for C F B 4 < q u 1 .
4. 
When 0 < ρ ρ 0 , P O 42 ( q u ) is concave for q 4 q u 1 , and when ρ 0 < ρ , P O 42 ( q u ) is concave for q 4 q u q inf and convex for q inf q u 1 .
Proof. 
1.
For P O 42 ( 1 ) > 0.5 , 0.5 { 1 + ρ ln ( ρ / ( 1 + ρ ) ) + ln ( 1 + ρ ) / ρ } > 0.5 holds true if and only if 0 < ρ < 1 from Property A1(7). If 0 < ρ < 1 , we have P O 41 ( q u ) > 0.75 from Property A1(4) and P O 42 ( q u ) > 0.5 from Property A1(8). It follows that P O 4 ( q u ) > 0.5 , and thus C F B 4 does not exist. If ρ 1 and since P O 42 ( q u ) is a strictly decreasing function with 0 < P O 42 ( q u ) 1 from Property A1(9), there exists one and only one C F B 4 , which can be obtained by solving P O 42 ( C F B 4 ) = 0.5 or, equivalently ( 1 + ρ ) C F B 4 ln { ( 1 + ρ ) C F B 4 } = 1 + ρ + ρ 2 ln ( ρ / ( 1 + ρ ) ) for q 4 < C F B 4 1 . Hence, an inspector with ρ 1 overestimates with P O > 0.5 for 0 < q u < C F B 4 , estimates with P O = 0.5 for q u = C F B 4 , and underestimates with P O < 0.5 for C F B 4 < q u 1 .
2.
Since P O 42 ( q u ) < 0 for q 4 < q u < q inf and P O 42 ( q u ) > 0 for q inf < q u 1 from Property A3, P O 42 ( q u ) is concave for q u < q inf and convex for q u > q inf . From Property A2(3), we have q 4 < 1 q inf if and only if ρ ρ 0 (which equality holds when ρ = ρ 0 ) and q 4 < q inf < 1 if and only if ρ > ρ 0 , where ρ 0 can be approximately obtained as 0.3646 by solving the equation q inf = 1 , which is equivalent to L ( ρ 0 ) = ln ( 1 + ρ 0 ) . Hence, statement (4) holds true.
Example 4.
For q u = 5 % and the different errors of inspector j for j = 1 , 2 , 3 given in Table 9, P O 4 ( q u ) and C F B 4 for each inspector can be computed and are summarized in the table. If we would like to select the inspector satisfying P O 4 ( q u ) = 50 % , then the worst inspector 3 must be selected again since the P O is the closest to 50%. By solving P O 42 ( C F B 4 ) = 0.5 for each inspector, the values of C F B are computed approximately as 11.09%, 17.14%, and 11.6% respectively. Hence, we may conclude that inspector 1 overestimates with P O > 50 % if C F B < 11.09 % , estimates with P O = 50 % if C F B = 11.09 % , and underestimates with P O < 50 % if C F B > 11.09 % . Similar interpretation can be applied to the remaining inspectors. The values of q 4 and q inf for each inspector can be obtained as in Table 9 and the P O curve for each inspector is shown in Figure 7.

7. Summary and Concluding Remarks

The major results of Propositions 1– 5 are summarized in Table 10. From this table, the following can be observed:
1.
An imperfect inspector with nonzero inspection errors ( E [ A ] , E [ B ] ) has their/its own continuous P O curve P O ( q u ) , which depends on two variables q u and ρ , and is a strictly decreasing function of q u . It follows that the minimum value of P O ( q u ) is P O ( 1 ) > 0 , and the supremum value of P O ( q u ) is lim q u 0 P O ( q u ) . From the results of Proposition 1 and 3, we have lim q u 0 P O 11 ( q u ) = 1 for Model R-I (C, C) and lim q u 0 P O 31 ( q u ) = 1 for Model R-III (C, R). From the results of Proposition 2 and 4, we have lim q u 0 P O 21 ( q u ) = 1 for Model R-II (R, C) lim q u 0 P O 41 ( q u ) = 1 for Model R-IV (R, R). It follows that lim q u 0 P O ( q u ) = 1 . That is, P O approaches one as q u approaches zero.
2.
C F B does not exist if and only if P O ( 1 ) > 50 % . Since P O ( 1 ) is a function of ρ , solving P O ( 1 ) > 50 % gives the form 0 < ρ < ρ c . From Proposition 1–5, the value of ρ c is obtained as one in Model R-I (C, C), ρ 2 ( 0.7959 ) in Model R-II (R, C), ρ 3 ( 1.2564 ) in Model R-III (C, R), and one in Model R-IV (R, R). It follows that C F B does not exist if and only if 0 < ρ < ρ c , and it means that an inspector with ρ < ρ c overestimates with P O more than 50% regardless of q u . On the other hand, C F B always exists if and only if ρ ρ c , and it can be obtained by using the analytical formula given in Model R-I (C, C) or Model R-II (R, C), while it can be obtained by solving the equation given in Model R-III (C, R) or Model R-IV (R, R). When C F B is obtained, an inspector with ρ ρ c overestimates with P O ( 1 ) > 50 % if 0 q u < C F B , estimates with P O = 50 % if q u = C F B , and underestimates with P O ( 1 ) < 50 % if C F B < q u 1 .
Table 10. Input and output summary of four types of P O / C F B analysis under the assumption of α = E [ A ] and β = E [ B ] .
Table 10. Input and output summary of four types of P O / C F B analysis under the assumption of α = E [ A ] and β = E [ B ] .
ModelsInput ParametersDerived ρ Output Results
Model R-I (C, C)Type I error: constant, α Type II error: constant, β ρ = β α P O 1 ( q u ) , C F B 1
Model R-II (R, C)Type I error: f A ( a ) = ( 1 / α u ) I ( 0 , α u ] ( a ) Type II error: constant, β ρ = 2 β α u P O 2 ( q u ) , C F B 2
Model R-III (C, R)Type I error: constant, α Type II error: f B ( b ) = ( 1 / β u ) I ( 0 , β u ] ( b ) ρ = β u 2 α P O 3 ( q u ) , C F B 3
Model R-IV (R, R)Type I error: f A ( a ) = ( 1 / α u ) I ( 0 , α u ] ( a ) Type II error: f B ( b ) = ( 1 / β u ) I ( 0 , β u ] ( b ) ρ = β u α u P O 4 ( q u ) , C F B 4
Theorem 1.
Assuming an infinite sequence of items with a random DR Q and nonzero inspection errors with α = E [ A ] = α u 2 and β = E [ B ] = β u 2 , the following statements are true:
1. 
An imperfect inspector with nonzero inspection errors ( E [ A ] , E [ B ] ) has their/its own P O curve with or without C F B .
2. 
P O depends on two variables, q u and ρ, and can be denoted by P O ( q u , ρ ) , where ρ = E [ B ] E [ A ] .
3. 
P O ( q u , ρ ) is a decreasing function of q u with the minimum P O ( ρ ) and maximum lim q u 0 P O ( q u , ρ ) = 1 , i.e., P O approaches one as q u approaches zero.
4. 
For 0 < ρ < ρ c , the C F B does not exist, and an inspector with ρ < ρ c overestimates with P O > 0.5 , where ρ c satisfies P O ( 1 , ρ c ) = 0.5 .
5. 
For ρ ρ c , there exists one and only one C F B , which can be obtained by solving P O ( C F B , ρ ) = 0.5 , and an inspector with ρ ρ c overestimates with P O > 0.5 for 0 < q u < C F B , estimates with P O = 0.5 for q u = C F B and underestimates with P O < 0.5 for C F B < q u 1 .
Our theorem implies that the ratio of Type I error to Type II error must go to infinity or the Type I error must become zero. Otherwise, all commercial inspection plans should be, if a given DR is very or extremely low, revised with the concept of the PO for fairness of commercial trades since, from the smaller up to the several hundreds of ppm levels, the larger the DR sold by many sellers, the larger their unfair loss.
These findings have significant implications for industries such as the electronics, automotive, and pharmaceutical industries, where maintaining extremely low defective rates is critical. Overestimation in such contexts can lead to financial inefficiencies, reputational risks, and strained global supply chain relationships. To address these challenges, we recommend incorporating probabilistic models, such as those proposed in this study, into inspection protocols. These models can help establish fairer and more accurate standards in international trade, minimizing unnecessary product rejections. For instance, in semiconductor manufacturing or medical device production, where stringent defect tolerances are essential, our approach can improve inspection accuracy and trade fairness.
Our findings provide valuable insights into the impact of imperfect inspections on overestimation issues. These results can guide revisions to existing inspection schemes by recommending error calibration methods tailored to reduce overestimation biases. For example, the regular recalibration of inspectors’ error rates or the implementation of predictive monitoring systems can improve the reliability of quality assessments. Additionally, our models could complement existing frameworks such as Statistical Process Control (SPC) by incorporating probabilistic error distributions, enabling the more precise control of quality parameters. These practical applications highlight the broader relevance of our theoretical contributions to real-world quality control and inspection strategies.

8. Discussion

This study provides valuable insights into the phenomenon of overestimation during inspection processes. Our theoretical models demonstrate that the probability of overestimation (PO) approaches one as the defect rate (q) approaches zero, regardless of the inspector’s error characteristics. This finding is supported by Monte Carlo simulations, confirming the consistency of PO behavior across various error distributions. Furthermore, the fundamental relationship between q u and PO is maintained across all tested models, and ρ ( = E [ B ] / E [ A ] ) is identified as a critical factor determining the existence of the critical fraction bound (CFB).
Figure 8 illustrates how PO ( q u ) changes as q u decreases, highlighting that PO approaches 1 as q u approaches zero. Further details on the comparative analysis of PO ( q u ) curves can be found in Appendix B. This pattern is consistently observed across different ρ values, supporting the theoretical prediction that overestimation becomes inevitable at extremely low defect rates.
Our sensitivity analysis reveals several important implications. The nonlinear relationships between Type I and Type II errors indicate that small changes in parameters can lead to significant variations in the PO within certain critical regions.
Figure 9 further demonstrates these effects by comparing PO ( q u ) under different error distributions. The detailed setup and methodology of the Monte Carlo simulation are presented in Appendix C. The Monte Carlo simulation results confirm that PO can vary significantly depending on the inspector’s accuracy levels ( α and β values), reinforcing the need for precise calibration of inspection criteria to minimize overestimation biases.
These interaction effects are particularly pronounced when the magnitudes of Type I and Type II errors are comparable. These findings highlight the importance of understanding parameter sensitivity in developing more robust inspection strategies.
Despite the robustness of our theoretical models, there are practical limitations that must be addressed. First, the assumption of independence between Type I and Type II errors may not hold in real-world settings, where correlations can arise due to inspector fatigue or environmental factors. Such correlations could have a significant impact, particularly in automated inspection systems. Second, our models assume time-invariant error rates, which do not account for the temporal variations that may occur in practice. These variations could result in discrepancies between theoretical predictions and actual long-term inspection performance.
The industrial implications of our findings are significant, especially for industries dealing with extremely low defect rates. Conventional inspection protocols may require re-evaluation under these conditions, and optimized inspector selection criteria can be established by considering the relationship between ρ and the CFB. Additionally, the regular recalibration of inspection systems is critical for maintaining accuracy in low-defect-rate environments. From an economic perspective, overestimation in such scenarios can lead to unnecessary costs, underscoring the need for a balanced approach to inspection accuracy and cost management. Investments in enhanced inspection systems are justified for processes where low defect rates are essential.
Future research should focus on extending the current models to incorporate time-dependent error rates and correlated errors. Developing models that integrate measurement system capability limitations would also be beneficial. Validation studies using long-term industrial data are necessary to ensure the practical applicability of our findings. Furthermore, comparative analyses of overestimation patterns across different industries could provide additional insights.
This study contributes to the existing literature by expanding Yang and Chang’s initial research to include random defect rates and enhancing Altay and Baykal-Gürsoy’s inspection scheduling framework. Our work introduces a comprehensive sensitivity analysis, identifies critical parameter regions, and provides practical guidelines for designing more effective inspection systems. While our theoretical framework offers robust insights, careful consideration of its limitations is essential for real-world application. The findings of this study are particularly relevant for industries where maintaining extremely low defect rates is critical, emphasizing the need for a fundamental reassessment of quality control systems.

Funding

The present research was supported by there search fund of Dankook University in 2023.

Data Availability Statement

Not applicable.

Acknowledgments

The author sincerely thanks Moon Hee Yang for his invaluable feedback and guidance on this paper.

Conflicts of Interest

The author declares that there are no conflicts of interest regarding the publication of this paper.

Abbreviations

The following abbreviations are used in this manuscript:
CFCritical fraction defective
CFBCritical fraction bound
IDRImperfect defective rate
POProbability of overestimation
SPCStatistical Process Control
TDRTrue defective rate
PDF      Probability density function
ρ Error rate ratio
α Type I error rate
β Type II error rate
qTrue defective rate (constant)
QTrue defective rate (random variable)
f Q ( q ) Distribution of Q
f A ( a ) Distribution of Type I errors
f B ( b ) Distribution of Type II errors
C F B 1 Critical fraction bound for Model R-I
C F B 2 Critical fraction bound for Model R-II
C F B 3 Critical fraction bound for Model R-III
C F B 4 Critical fraction bound for Model R-IV
P O 1 ( q u ) Probability of overestimation in R-I
P O 2 ( q u ) Probability of overestimation in R-II
P O 3 ( q u ) Probability of overestimation in R-III
P O 4 ( q u ) Probability of overestimation in R-IV
E [ X ] Expected value of random variable X

Appendix A. Mathematical Properties and Proofs

This appendix contains detailed mathematical properties and proofs that support the main results presented in this paper. These are included here to maintain the flow of the main text while providing interested readers with the full mathematical details.

Appendix A.1. Properties of Auxiliary Functions

1.
f 1 ( x ) is a strictly increasing function with f 1 ( x ) > 0 , where f 1 ( x ) = x + ( 1 x ) ln ( 1 x ) for 0 < x 1 .
2.
f 2 ( x ) is a strictly increasing function with f 2 ( x ) > 0 , where f 2 ( x ) = x ( 3 x 2 ) 2 ( 1 x ) 2 ln ( 1 x ) for 0 < x 1 .
3.
f 3 ( x ) is a strictly decreasing convex function with 0 < f 3 ( x ) < 1 , where f 3 ( x ) = 1 + x 2 ln x 2 + x for x > 0 .
4.
f 4 ( x ) is a strictly decreasing convex function with 0.5 < f 4 ( x ) < 0 , where f 4 ( x ) = x + x ( x + 1 ) ln x x + 1 for x > 0 .
5.
f 5 ( x ) is a strictly decreasing convex function with 0 < f 5 ( x ) < 2 , where f 5 ( x ) = ln ( 2 x + 1 ) x for x > 0 .
6.
f 6 ( x ) is a strictly increasing function with f 6 ( x ) > 0 , where f 6 ( x ) = 1 + ρ ln ρ 1 + ρ + 1 ρ ln { ( 1 + ρ ) x } for 1 1 + ρ x 1 .
7.
f 7 ( x ) is a strictly decreasing convex function with 1 < f 7 ( x ) < 0 , where f 7 ( x ) = x ln x x + 1 for x > 0 .
8.
f 8 ( x ) is a strictly decreasing convex function with 1 < f 8 ( x ) < 1 , where f 8 ( x ) = x ln x x + 1 + ln ( x + 1 ) x for x > 0 .
9.
f 9 ( x ) is a strictly decreasing convex function with f 9 ( x ) > 0 , where f 9 ( x ) = x + ln ( 1 + x ) + x 2 ln x 1 + x for x > 0 .
10.
f 10 ( x ) is a strictly decreasing convex function with f 10 ( x ) > 0 , where f 10 ( x ) = 0.5 x x 2 ln x x + 1 for x > 0 .

Appendix A.2. Properties Related to Critical Points

1.
q 4 < q inf , where q inf = e L ( ρ ) 1 + ρ and L ( q 4 ) = 1 2 ρ ρ 2 ln ρ 1 + ρ .
2.
q inf 1 if and only if 0 < ρ ρ 0 (equality holds when ρ = ρ 0 ), and q inf < 1 if and only if ρ > ρ 0 , when ρ 0 is approximately 0.3646, satisfying ln ( 1 + ρ 0 ) = L ( ρ 0 ) .
3.
q 4 < 1 q inf if and only if 0 < ρ ρ 0 (equality holds when ρ = ρ 0 ), and q 4 < q inf < 1 if and only ρ > ρ 0 .

Appendix A.3. Properties of PO42(qu)

1.
P O 42 ( q u ) is negative for 0 < q u < q inf , zero for q u = q inf , and positive for q inf < q u 1 .
2.
If 0 < ρ ρ 0 , then P O 42 ( q u ) is strictly decreasing concave for ρ 4 q u 1 .
3.
If ρ ρ 0 , then P O 42 ( q u ) is strictly decreasing concave for ρ 4 q u q inf , and strictly decreasing concave for q inf q u 1 .

Appendix B. Comparison of PO ( q u ) Curves

Comparison of P O ( q u ) Curves
This section presents a comparative analysis of the P O ( q u ) curves for the three cases: R-I, R-II, and R-III. The probability of overestimation P O ( q u ) is analyzed using both constant and random defective rates to demonstrate how the results vary across the models.
The equations representing P O ( q u ) for each case are as follows:
P O ( q u ) R - I = 1 1 ( 1 + ρ ) q u ,
P O ( q u ) R - II = 1 e ρ q u ( 1 + ρ ) ,
P O ( q u ) R - III = 1 e ρ q u .
Here, ρ is the error rate ratio; q u is the true defective rate threshold.
These equations describe how the probability of overestimation changes with the defective rate model.
Figure A1 shows the P O ( q u ) curves for each model. The curves highlight the differences in overestimation probabilities across the three cases.
Figure A1. Comparison of P O ( q u ) curves for the R-I, R-II, and R-III models. The figure demonstrates how the probability of overestimation changes with the defective rate.
Figure A1. Comparison of P O ( q u ) curves for the R-I, R-II, and R-III models. The figure demonstrates how the probability of overestimation changes with the defective rate.
Symmetry 17 00284 g0a1

Appendix B.1. Interpretation of Results

1.
Case R-I: The curve is influenced significantly by the parameter ρ and shows a steeper decline as q u increases.
2.
Case R-II: The curve exhibits a moderate decline, capturing the combined effects of both the error rate ratio and the defective rate threshold.
3.
Case R-III: The curve reflects an exponential relationship and displays the smoothest decline among the three models.
The results demonstrate that the choice of model has a substantial impact on the overestimation probability, particularly when dealing with random defective rates. These findings provide valuable insights into the design of inspection systems under varying defective rate assumptions.

Appendix C. Simulation Study for Random Defective Rate

This appendix provides a detailed simulation study that was conducted to analyze the probability of overestimation (POE) under random defective rates. The results are compared with the findings of Yang and Chang (2014), who considered constant defective rates, to demonstrate the robustness of our extended models.

Appendix C.1. Simulation Setup

The simulation used a uniform distribution for random defective rates to align with the assumptions in this study. The following parameters were applied:
  • Random defective rate Q Uniform ( 0 , q u ) , with mean defective rates ( μ ) : 0.05, 0.1, 0.2;
  • Inspection errors: α = 0.001 , β = 0.02 ;
  • Sample size: 1000;
  • Models analyzed: R-I to R-IV.

Appendix C.2. Results and Discussion

The simulation results show distinct POE characteristics for each model. A comparison with the constant defective rate findings from Yang and Chang (2014) highlighted the following:
1.
Low defective rates ( μ = 0.05 ): - R-I exhibits a high concentration of POE near 1, consistent with Yang and Chang’s results for constant defective rates. - R-II shows a wider distribution range with bimodal characteristics, indicating sensitivity to random variability. - R-III and R-IV demonstrate more symmetric distributions, reflecting the mixed characteristics of R-I and R-II.
2.
Medium defective rates ( μ = 0.1 ): - POE distributions for all models become broader, with R-II showing the most sensitivity to changes in the defective rate. - Compared to Yang and Chang’s results, R-I remains aligned, while the other models provide distinct patterns due to random variability.
3.
High defective rates ( μ = 0.2 ): - POE decreases significantly across all models, with lower variability. - R-I and R-IV continue to exhibit higher concentrations near their respective critical fractions.

Appendix C.3. Summary Statistics

Table A1 provides a summary of the mean POE and 95% confidence intervals (CIs) for each model under varying defective rates.
Table A1. Summary statistics for POE under random defective rates.
Table A1. Summary statistics for POE under random defective rates.
Mean QModelMean POE95% CI
0.05R-I0.849[0.279, 1.000]
R-II0.248[0.000, 0.814]
R-III0.381[0.171, 1.000]
R-IV0.372[0.173, 0.833]
0.10R-I0.279[0.197, 1.000]
R-II0.004[0.000, 0.025]
R-III0.158[0.103, 0.243]
R-IV0.157[0.101, 0.252]
0.20R-I0.144[0.123, 0.172]
R-II0.000[0.000, 0.000]
R-III0.068[0.054, 0.087]
R-IV0.068[0.053, 0.087]

Appendix C.4. Figures

Figure A2 presents the POE distributions for different models under random defective rates, illustrating distinct patterns in overestimation probability. Furthermore, Figure A3 provides a sensitivity analysis, demonstrating how defective rate variability and inspection errors influence the POE.
Figure A2. POE distributions for different models under random defective rates.
Figure A2. POE distributions for different models under random defective rates.
Symmetry 17 00284 g0a2
Figure A3. Sensitivity analysis: effect of defective rate variability and inspection errors on POE.
Figure A3. Sensitivity analysis: effect of defective rate variability and inspection errors on POE.
Symmetry 17 00284 g0a3

Appendix C.5. Conclusions

The results confirm the robustness of POE behavior under random defective rates. The patterns observed in R-I align closely with Yang and Chang’s constant defective rate analysis, demonstrating the consistency of our models. Other models provide additional insights into the influence of random variability on the POE.

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Figure 1. Three representative graphs of P O 1 ( q u ) depending on the value of ρ : (a) a typical graph of P O 1 ( q u ) for 0 < ρ < 1 without C F B 1 ; (b) a graph of P O 1 ( q u ) for ρ = 1 with C F B 1 = 1 ; (c) a typical graph of P O 1 ( q u ) for ρ > 1 with single C F B 1 .
Figure 1. Three representative graphs of P O 1 ( q u ) depending on the value of ρ : (a) a typical graph of P O 1 ( q u ) for 0 < ρ < 1 without C F B 1 ; (b) a graph of P O 1 ( q u ) for ρ = 1 with C F B 1 = 1 ; (c) a typical graph of P O 1 ( q u ) for ρ > 1 with single C F B 1 .
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Figure 2. Three representative graphs of P O 2 ( q u ) : (a) a typical graph of P O 2 ( q u ) for 0 < ρ < ρ 2 without C F B 2 ; (b) a graph of P O 2 ( q u ) for ρ = ρ 2 = 0.7959 with C F B 2 = 1 ; (c) a typical graph of P O 2 ( q u ) for ρ > ρ 2 with single C F B 2 .
Figure 2. Three representative graphs of P O 2 ( q u ) : (a) a typical graph of P O 2 ( q u ) for 0 < ρ < ρ 2 without C F B 2 ; (b) a graph of P O 2 ( q u ) for ρ = ρ 2 = 0.7959 with C F B 2 = 1 ; (c) a typical graph of P O 2 ( q u ) for ρ > ρ 2 with single C F B 2 .
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Figure 4. Three representative graphs of P O 3 ( q u ) : (a) a typical graph of P O 3 ( q u ) for 0 < ρ < ρ 3 1.2564 without C F B 3 ; (b) a graph of P O 3 ( q u ) for ρ = ρ 3 with C F B 3 = 1 ; (c) a typical graph of P O 3 ( q u ) for ρ ρ 3 with single C F B 3 .
Figure 4. Three representative graphs of P O 3 ( q u ) : (a) a typical graph of P O 3 ( q u ) for 0 < ρ < ρ 3 1.2564 without C F B 3 ; (b) a graph of P O 3 ( q u ) for ρ = ρ 3 with C F B 3 = 1 ; (c) a typical graph of P O 3 ( q u ) for ρ ρ 3 with single C F B 3 .
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Figure 6. Three representative graphs of P O 4 ( q u ) : (a) a typical graph of P O 4 ( q u ) for 0 < ρ < 1 without C F B 4 ; (b) a graph of P O 4 ( q u ) for ρ = 1 with C F B 4 = 1 ; (c) a typical graph of P O 4 ( q u ) for ρ > 1 with single C F B 4 .
Figure 6. Three representative graphs of P O 4 ( q u ) : (a) a typical graph of P O 4 ( q u ) for 0 < ρ < 1 without C F B 4 ; (b) a graph of P O 4 ( q u ) for ρ = 1 with C F B 4 = 1 ; (c) a typical graph of P O 4 ( q u ) for ρ > 1 with single C F B 4 .
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Figure 7. Graph of P O 4 ( q u ) for each inspector.
Figure 7. Graph of P O 4 ( q u ) for each inspector.
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Figure 8. Analysis of overestimation behavior and model sensitivity: (a) PO variation with different ρ values in Model R-I, showing a consistent pattern as q u 0 ; (b) impact of Type I error ( α ) variations on the PO, demonstrating model robustness; (c) Model R-II behavior under varying ρ values, confirming theoretical predictions; (d) comparison between Models R-I and R-II at ρ = 2 , validating model consistency.
Figure 8. Analysis of overestimation behavior and model sensitivity: (a) PO variation with different ρ values in Model R-I, showing a consistent pattern as q u 0 ; (b) impact of Type I error ( α ) variations on the PO, demonstrating model robustness; (c) Model R-II behavior under varying ρ values, confirming theoretical predictions; (d) comparison between Models R-I and R-II at ρ = 2 , validating model consistency.
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Figure 9. Validation and practical limitation analysis: (a) Monte Carlo simulation results comparing uniform and normal error distributions; (b) Uncertainty analysis with 95% confidence intervals showing model stability; (c) Comparative analysis of PO under different error distribution assumptions; (d) Time-dependent inspection error patterns demonstrating practical limitations in real inspection environments.
Figure 9. Validation and practical limitation analysis: (a) Monte Carlo simulation results comparing uniform and normal error distributions; (b) Uncertainty analysis with 95% confidence intervals showing model stability; (c) Comparative analysis of PO under different error distribution assumptions; (d) Time-dependent inspection error patterns demonstrating practical limitations in real inspection environments.
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Table 1. Four types of P O / C F B analysis with f Q ( q ) = 1 q u I ( 0 , q u ) ( q ) , f A ( a ) = 1 a u I ( 0 , a u ) ( a ) , and f B ( b ) = 1 β u I ( 0 , β u ) ( b ) . Input parameters and output results are clearly separated.
Table 1. Four types of P O / C F B analysis with f Q ( q ) = 1 q u I ( 0 , q u ) ( q ) , f A ( a ) = 1 a u I ( 0 , a u ) ( a ) , and f B ( b ) = 1 β u I ( 0 , β u ) ( b ) . Input parameters and output results are clearly separated.
ModelInput ParametersOutput PO Output CFB
Model R-I (C, C)DR: random variable, Q f Q ( q ) Type I error: constant, α Type II error: constant, β P O 1 ( q u ) C F B 1
Model R-II (R, C)DR: random variable, Q f Q ( q ) Type I error: random variable, A f A ( a ) Type II error: constant, β P O 2 ( q u ) C F B 2
Model R-III (C, R)DR: random variable, Q f Q ( q ) Type I error: constant, α Type II error: random variable, B f B ( b ) P O 3 ( q u ) C F B 3
Model R-IV (R, R)DR: random variable, Q f Q ( q ) Type I error: random variable, A f A ( a ) Type II error: random variable, B f B ( b ) P O 4 ( q u ) C F B 4
Table 2. Key input and output variables for Model R-I.
Table 2. Key input and output variables for Model R-I.
Variable TypeVariableDescription
Input α Type I error rate
Input β Type II error rate
Input q u Upper bound of defective rate
Output P O 1 ( q u ) Probability of overestimation
Output C F B 1 Critical fraction bound
Table 3. P O 1 ( q u ) and C F B 1 for q u = 5 % and different inspection errors.
Table 3. P O 1 ( q u ) and C F B 1 for q u = 5 % and different inspection errors.
Inspector 1Inspector 2Inspector 3
α j 0.1%0.2%0.3%
β j 2.0%2.5%11.7%
P O 1 ( q u ) 95.2%100.0%50.0%
C F B 1 9.52%14.81%5.00%
Table 4. Key input and output variables for Model R-II.
Table 4. Key input and output variables for Model R-II.
Variable TypeVariableDescription
Input f A ( a ) Probability density function for Type I errors
Input β Type II error rate
Input q u Upper bound of defective rate
Output P O 2 ( q u ) Probability of overestimation
Output C F B 2 Critical fraction bound
Table 5. P O 2 ( q u ) and C F B 2 for q u = 5 % and different inspection errors.
Table 5. P O 2 ( q u ) and C F B 2 for q u = 5 % and different inspection errors.
Inspector 1Inspector 2Inspector 3
α u j 0.2%0.4%0.6%
β j 2.0%2.5%11.7%
P O 2 ( q u ) 74.1%83.8%49.6%
C F B 2 9.38%14.47%4.96%
Table 6. Key input and output variables for Model R-III.
Table 6. Key input and output variables for Model R-III.
Variable TypeVariableDescription
Input α Type I error rate
Input f B ( b ) Probability density function for Type II errors
Input q u Upper bound of defective rate
Output P O 3 ( q u ) Probability of overestimation
Output C F B 3 Critical fraction bound
Table 7. P O 3 ( q u ) and C F B 3 for q u = 5 % and different inspection errors.
Table 7. P O 3 ( q u ) and C F B 3 for q u = 5 % and different inspection errors.
Inspector 1Inspector 2Inspector 3
α j 0.1%0.2%0.3%
β u j 4.0%5.0%23.4%
P O 3 ( q u ) 83.4%97.0%59.6%
C F B 3 12.57%19.39%6.65%
Table 8. Key input and output variables for Model R-IV.
Table 8. Key input and output variables for Model R-IV.
Variable TypeVariableDescription
Input f A ( a ) Probability density function for Type I errors
Input f B ( b ) Probability density function for Type II errors
Input q u Upper bound of defective rate
Output P O 4 ( q u ) Probability of overestimation
Output C F B 4 Critical fraction bound
Table 9. P O 4 ( q u ) and C F B 4 for q u = 5 % and different inspection errors.
Table 9. P O 4 ( q u ) and C F B 4 for q u = 5 % and different inspection errors.
Inspector 1Inspector 2Inspector 3
α u j 0.2%0.4%0.6%
β u j 4.0%5.0%23.4%
ρ 20.012.5022.0
q 4 0.04760.07410.0500
q inf 0.04840.07600.0509
P O 4 ( q u ) 74.1%83.8%54.7%
C F B 4 11.09%17.14%5.86%
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Koo, K.-C. A Probabilistic Approach to Overestimation by an Imperfect Inspector Subject to Random Defective Rates. Symmetry 2025, 17, 284. https://doi.org/10.3390/sym17020284

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Koo K-C. A Probabilistic Approach to Overestimation by an Imperfect Inspector Subject to Random Defective Rates. Symmetry. 2025; 17(2):284. https://doi.org/10.3390/sym17020284

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Koo, Kyo-Chan. 2025. "A Probabilistic Approach to Overestimation by an Imperfect Inspector Subject to Random Defective Rates" Symmetry 17, no. 2: 284. https://doi.org/10.3390/sym17020284

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Koo, K.-C. (2025). A Probabilistic Approach to Overestimation by an Imperfect Inspector Subject to Random Defective Rates. Symmetry, 17(2), 284. https://doi.org/10.3390/sym17020284

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