Investigating the Role of Logistics Delivery Services in Shaping Customer Satisfaction: LLM-Aspect-Based Sentiment Analysis of Perceived Quality in Indonesian E-Commerce
Abstract
1. Introduction
- Which aspects of perceived quality are frequently mentioned in online reviews of smartphone purchases?
- How does perceived quality affect satisfaction in online smartphone purchases?
- How does logistics delivery service moderate the perceived quality relationship with customer satisfaction?
2. Materials and Methods
2.1. Review of the Scientific Literature
- A.
- Perceived Product Quality:
- Functionality: The core performance and features of the product.
- Originality: The authenticity and brand assurance are critical in markets with counterfeit concerns.
- Price: The perceived value and fairness of the cost.
- B.
- Perceived Service Quality:
- Logistics Delivery Service: The fulfillment process, including speed, reliability, and condition upon arrival.
- Packaging: The protective and experiential element of product receipt.
- Responsiveness: The seller’s communication and customer service pre- and post-purchase.
- Warranty: The post-purchase security and guarantee.
- Promotion: The incentives and deals offered at the point of sale.
2.2. Research Methodology
2.2.1. Online Reviews Data Sources
- Brand: To ensure proportional representation from each of the five selected brands.
- Star Rating: To include a balanced mix of positive (4–5 stars), neutral (3 stars), and negative (1–2 stars) reviews, as an overabundance of positive reviews is common on e-commerce platforms.
2.2.2. LLM-ABSA: Text Classification Model for Perceived Quality Aspects
- Data-Driven Salience: Our data consists of concise reviews, with an average length of 11 words. In such short texts, customers typically focus on one or two primary concerns. Our rule prioritizes these salient aspects, which are the most likely drivers of their satisfaction.
- Reduction of Noise: It minimizes the inclusion of minor, tangential, or weakly implied mentions that could add noise to the statistical model, a critical consideration with short-text data.
- Cognitive Plausibility: It aligns with the finding that consumers, especially in quick online reviews, focus on a limited number of key factors when evaluating a product experience.
| Algorithm 1: Pseudocode for Aspect-Based Sentiment Analysis on Consumer Review | ||||
![]() | ||||
2.2.3. Logistic Regression: Customer Satisfaction Model
3. Results
3.1. LLM-ABSA Classification Model for Perceived Quality
3.2. Customer Satisfaction Model
4. Discussion
4.1. Discussion on Perceived Quality Aspects
4.2. Discussion on Customer Satisfaction Model
5. Conclusions
5.1. Theoretical and Practical Implications
5.2. Limitations and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
| ABSA | Aspect-based Sentiment Analysis |
| AI | Artificial Intelligence |
| AIC | Akaike Information Criterion |
| BIC | Bayesian Information Criterion |
| DEL | Delivery |
| ECT | Expectancy-Confirmation Theory |
| FUN | Functionality |
| GDP | Gross Domestic Product |
| LLM | Large Language Model |
| ORI | Originality |
| PAC | Packaging |
| PRI | Price |
| PRO | Promotion |
| RES | Responsiveness |
| SAT | Satisfaction |
| USD | United States Dollar |
| WAR | Warranty |
Appendix A
- An arbitrary text sample. The sample is delimited with triple backticks.
- List of categories the text sample can be assigned to. The list is delimited with square brackets. The categories in the list are enclosed in the single quotes and comma separated. The text sample belongs to at least one category but cannot exceed {max_cats}.
- Range value of sentiment score is in decimal, below 0.00 to −1.00 for negative sentiment, above 0.00 to 1.00 for positive sentiment, and 0.00 for neutral sentiment.
- Identify to which categories the provided text belongs to with the highest probability.
- Assign the text sample to at least 1 but up to {max_cats} categories based on the probabilities.
- Provide your response in a JSON format containing a single key ‘label’ with the array of three value namely predicted category with key ‘category’, probability value with key ‘probability’, and sentiment score with key ‘sentiment_score’. Do not provide any additional information except the JSON.
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| Aspects/Variable | Abbreviation | Logistic Regression Category |
|---|---|---|
| Logistics Delivery | DEL | 1: mentioned as a good quality aspect, 0: not mentioned as good quality aspects |
| Functionality | FUN | |
| Originality | ORI | |
| Packaging | PAC | |
| Price | PRI | |
| Promotion | PRO | |
| Responsiveness | RES | |
| Warranty | WAR | |
| Customer satisfaction | SAT | 1: satisfied, 0: dissatisfied |
| Matrices | Value |
|---|---|
| Accuracy | 0.8760 |
| Precision | 0.8885 |
| Recall | 0.8760 |
| F1-score | 0.8725 |
| Factors | Identified as | |
|---|---|---|
| First Aspect (%) | Second Aspect (%) | |
| DEL | 34.18 | 6.22 |
| FUN | 28.32 | 10.44 |
| ORI | 17.32 | 6.40 |
| RES | 7.48 | 5.24 |
| PAC | 7.10 | 8.32 |
| PRI | 2.40 | 0.88 |
| PRO | 0.88 | 0 |
| WAR | 0.84 | 1.26 |
| Other factors | 1.48 | - |
| Not Identified | - | 61.24 |
| Total | 100.00 | 100.00 |
| Factors | Min. | Max. | Mean | St Dev. |
|---|---|---|---|---|
| DEL | −0.60 | 1.00 | 0.70 | 0.23 |
| FUN | −0.60 | 0.90 | 0.68 | 0.30 |
| ORI | −0.60 | 1.00 | 0.73 | 0.27 |
| PAC | −0.60 | 0.90 | 0.71 | 0.25 |
| PRI | −0.50 | 0.90 | 0.63 | 0.22 |
| PRO | 0.20 | 0.90 | 0.66 | 0.21 |
| RES | −0.60 | 1.00 | 0.70 | 0.29 |
| WAR | 0.40 | 0.90 | 0.72 | 0.17 |
| Factors | N | Min. | Max. | Mean | St Dev. |
|---|---|---|---|---|---|
| DEL | 4926 | 0 | 1 | 0.270 | 0.444 |
| FUN | 4926 | 0 | 1 | 0.340 | 0.474 |
| ORI | 4926 | 0 | 1 | 0.200 | 0.400 |
| PAC | 4926 | 0 | 1 | 0.130 | 0.334 |
| PRI | 4926 | 0 | 1 | 0.020 | 0.154 |
| PRO | 4926 | 0 | 1 | 0.010 | 0.111 |
| RES | 4926 | 0 | 1 | 0.070 | 0.259 |
| WAR | 4926 | 0 | 1 | 0.020 | 0.139 |
| Factors | Model 1 | Model 2 | Model 3 | Model 4 | Model 5 | Model 6 | Model 7 |
|---|---|---|---|---|---|---|---|
| Intercept | 1.436 *** (54.973) | 0.894 *** (3.988) | 1.300 *** (27.2439) | 1.143 *** (6.800) | 1.427 *** (52.719) | 1.414 *** (50.165) | 0.629 *** (56.727) |
| DEL | 5.418 *** (279.729) | 5.192 *** (251.521) | |||||
| RES | 3.648 *** (55.747) | 4.720 *** (75.540) | |||||
| PAC | 9.695 *** (142.455) | 9.174 *** (130.987) | |||||
| PRO | 1.563 (1.769) | 2.087 ** (4.408) | |||||
| WAR | 4.594 *** (12.552) | 6.561 *** (18.443) | |||||
| FUN | 5.123 *** (268.853) | 6.326 *** (325.196) | 5.360 *** (281.346) | 5.967 *** (314.528) | 5.153 *** (270.287) | 5.135 *** (269.215) | 7.440 *** (370.286) |
| ORI | 5.340 *** (146.727) | 7.741 *** (212.073) | 5.811 *** (160.911) | 5.632 *** (153.284) | 5.339 *** (146.641) | 5.328 *** (146.123) | 8.711 *** (229.720) |
| PRI | 3.348 *** (12.601) | 4.254 *** (17.632) | 3.618 *** (14.212) | 4.020 *** (16.552) | 3.298 *** (12.276) | 3.297 *** (12.249) | 5.201 *** (22.420) |
| Chi-sqrt | 665.769 *** | 1015.267 *** | 737.679 *** | 916.510 *** | 667.666 *** | 684.518 *** | 1344.502 *** |
| Deviance | 823.891 | 474.392 | 751.980 | 573.149 | 821.993 | 805.142 | 145.158 |
| AIC | 970.018 | 622.519 | 900.107 | 721.277 | 970.121 | 953.269 | 301.285 |
| BIC | 1002.530 | 661.533 | 939.121 | 760.290 | 1009.134 | 992.283 | 366.308 |
| Factors | Model 1 | Model 2 | Model 3 | Model 4 | Model 5 | Model 6 | Model 7 | Model 8 |
|---|---|---|---|---|---|---|---|---|
| Intercept | 0.780 *** (18.241) | 0.736 *** (27.119) | 0.889 ** (4.396) | 0.867 *** (6.329) | 0.878 *** (5.290) | 0.887 *** (4.486) | 0.895 ** (3.930) | 0.589 *** (70.595) |
| DEL | 6.197 *** (296.373) | 5.397 *** (248.276) | 5.433 *** (276.831) | 5.685 *** (290.303) | 5.946 *** (275.160) | 5.628 *** (283.823) | 5.394 *** (277.743) | 7.602 *** (256.668) |
| RES | 5.871 *** (71.214) | 6.776 *** (81.072) | ||||||
| PAC | 12.316 *** (101.206) | 13.606 *** (107.986) | ||||||
| PRO | 1.613 (1.525) | 13.615 *** (18.803) | ||||||
| WAR | 12.271 *** (17.622) | 2.052 ** (4.070) | ||||||
| DEL*RES | 0.181 *** (20.515) | 0.173 *** (20.811) | ||||||
| DEL*PAC | 0.282 *** (10.455) | 0.232 *** (13.529) | ||||||
| DEL*PRO | 0.789 (0.077) | - | ||||||
| DEL*WAR | 0.031 *** (14.332) | 0.033 *** (13.861) | ||||||
| DEL*FUN | 0.417 *** (9.128) | 0.424 *** (8.390) | ||||||
| DEL*ORI | 0.213 *** (9.564) | 0.213 *** (9.409) | ||||||
| DEL*PRI | 88,618.4 (0.002) | - | ||||||
| FUN | 6.645 *** (336.201) | 6.976 *** (352.678) | 6.362 *** (326.564) | 6.358 *** (325.357) | 6.970 *** (315.073) | 6.327 *** (324.336) | 6.329 *** (325.382) | 8.234 *** (349.741) |
| ORI | 8.732 *** (235.082) | 7.781 *** (208.864) | 7.733 *** (211.820) | 7.780 *** (212.400) | 7.778 *** (212.349) | 8.361 *** (211.648) | 7.742 *** (212.129) | 9.666 *** (231.225) |
| PRI | 4.720 *** (20.093) | 4.970 *** (21.443) | 4.164 *** (17.092) | 4.164 *** (17.014) | 4.243 *** (17.488) | 4.247 *** (17.558) | 4.020 *** (16.038) | 5.291 *** (22.402) |
| Chi-sqrt | 1114.623 *** | 1225.077 *** | 1016.985 *** | 1053.428 *** | 1023.141 *** | 1022.130 *** | 1016.235 *** | 1391.310 *** |
| Deviance | 4193.537 | 4083.083 | 4291.176 | 4253.733 | 4285.020 | 4286.030 | 4291.927 | 3916.851 |
| AIC | 4209.537 | 4099.083 | 4307.176 | 4270.733 | 4299.020 | 4300.030 | 4305.927 | 3946.851 |
| BIC | 4261.555 | 4151.101 | 4359.195 | 4322.751 | 4344.536 | 4345.546 | 4351.443 | 4044.385 |
| Hypothesis | Aspect | Direct Effect on Satisfaction | Moderating Role of Logistics Delivery |
|---|---|---|---|
| H1 | FUN | Supported | Supported |
| H2 | ORI | Supported | Supported |
| H3 | PRI | Supported | Rejected |
| H4 | DEL | Supported | - |
| H5 | PAC | Supported | Supported |
| H6 | PRO | Supported | Rejected |
| H7 | RES | Supported | Supported |
| H8 | WAR | Supported | Supported |
| H9 | DEL as Moderator | Supported | Supported |
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Setiyawan, A.; He, Y.; Sastri, R. Investigating the Role of Logistics Delivery Services in Shaping Customer Satisfaction: LLM-Aspect-Based Sentiment Analysis of Perceived Quality in Indonesian E-Commerce. J. Theor. Appl. Electron. Commer. Res. 2025, 20, 345. https://doi.org/10.3390/jtaer20040345
Setiyawan A, He Y, Sastri R. Investigating the Role of Logistics Delivery Services in Shaping Customer Satisfaction: LLM-Aspect-Based Sentiment Analysis of Perceived Quality in Indonesian E-Commerce. Journal of Theoretical and Applied Electronic Commerce Research. 2025; 20(4):345. https://doi.org/10.3390/jtaer20040345
Chicago/Turabian StyleSetiyawan, Arbi, Youshi He, and Ray Sastri. 2025. "Investigating the Role of Logistics Delivery Services in Shaping Customer Satisfaction: LLM-Aspect-Based Sentiment Analysis of Perceived Quality in Indonesian E-Commerce" Journal of Theoretical and Applied Electronic Commerce Research 20, no. 4: 345. https://doi.org/10.3390/jtaer20040345
APA StyleSetiyawan, A., He, Y., & Sastri, R. (2025). Investigating the Role of Logistics Delivery Services in Shaping Customer Satisfaction: LLM-Aspect-Based Sentiment Analysis of Perceived Quality in Indonesian E-Commerce. Journal of Theoretical and Applied Electronic Commerce Research, 20(4), 345. https://doi.org/10.3390/jtaer20040345


