Chinese Family Farm Business Risk Assessment Using a Hierarchical Hesitant Fuzzy Linguistic Model
Abstract
:1. Introduction
2. Family Farm Business Risk Indicator System
3. Family Farm Business Risk Assessment Model
3.1. Indicator Weight Calculation Model—HFLTS
3.2. Risk Assessment Model—HFWA
- (1)
- Statistical hesitant fuzzy evaluation sets
- (2)
- Calculating each indicator score
- (3)
- Calculating the final evaluation score
4. Case Study
4.1. Calculate the Indicator Weight Based on HFLTS
- (1)
- Constructing the hesitant fuzzy linguistic judgment matrix
- (2)
- Converting to HFLTS envelope
- (3)
- Integrating the preference between pessimism and optimism
- (4)
- Calculating the weight of indicators
4.2. Calculate the Risk Score Based on HFWA
- (1)
- Statistical hesitant fuzzy evaluation sets
- (2)
- Calculating each indicator score
- (3)
- Calculating the final evaluation score
5. Conclusions
- (1)
- A family farm business risk indicator system was built and the key factors were identified based on factor analysis.
- (2)
- The HFLTS and HFWA model were constructed for family farm business risk assessment, and a solution was provided for when experts hesitate between several linguistic expressions in family farm business risk assessment.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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No. | Risk Factor |
---|---|
1 | Incidence of natural disaster |
2 | Incidence of diseases from pests |
3 | Technical adaptation degree |
4 | Technical staff satisfaction degree |
5 | Farm-scale |
6 | Potential market capacity |
7 | Product matching degree |
8 | Price fluctuations degree |
9 | Product quality |
10 | Policy support degree |
11 | Policy fluctuations degree |
12 | Product diversity |
13 | Social service system degree |
14 | Means of production value fluctuations degree |
15 | Frequency of land disputes |
16 | Contract performance degree |
17 | Risk cognition ability |
18 | Management decision-making ability |
19 | Organizational coordination ability |
20 | Financial management ability |
21 | Innovation ability |
No. | Component | |||||
---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 6 | |
6 | 0.817 | |||||
4 | 0.753 | |||||
3 | 0.702 | |||||
9 | 0.682 | |||||
5 | ||||||
16 | 0.584 | |||||
11 | 0.560 | |||||
21 | 0.501 | |||||
7 | ||||||
12 | ||||||
13 | 0.786 | |||||
18 | 0.632 | |||||
15 | ||||||
1 | 0.769 | |||||
2 | 0.651 | |||||
17 | ||||||
10 | 0.575 | |||||
14 | 0.528 | |||||
8 | 0.663 | |||||
1 | 0.524 | |||||
21 |
No. | First Layer Indicators | No. | Second Layer Indicators |
---|---|---|---|
A1 | Natural risk | A11 | Incidence of natural disaster |
A12 | Incidence of diseases from pests | ||
A2 | Technical risk | A21 | Technical adaptation degree |
A22 | Technical staff satisfaction degree | ||
A3 | Market risk | A31 | Potential market capacity |
A32 | Product matching degree | ||
A33 | Price fluctuations degree | ||
A4 | Policy risk | A41 | Policy support degree |
A42 | Policy fluctuations degree | ||
A5 | Social risk | A51 | The social service system degree |
A52 | Means of production value fluctuations degree | ||
A53 | Contract performance degree | ||
A6 | Management risk | A61 | Management decision-making ability |
A62 | Organizational coordination ability | ||
A63 | Financial management ability |
Level | Value |
---|---|
No importance (N) | 0 |
Very low importance (VL) | 1 |
Low importance (L) | 2 |
Medium importance (M) | 3 |
High importance (H) | 4 |
Very high importance (VH) | 5 |
Absolute importance (A) | 6 |
Level | Very Low Risk | Low Risk | Medium Risk | High Risk | Very High Risk |
---|---|---|---|---|---|
Range | [0, 0.2) | [0.2, 0.4) | [0.4, 0.6) | [0.6, 0.8) | [0.8, 1] |
Indicators | A1 | A2 | A3 | A4 | A5 | A6 |
---|---|---|---|---|---|---|
A1 | - | at least H | M | M | M and H between | between M and VH |
A2 | less than M | - | at most L | at most L | M | more than M |
A3 | M | at least M | - | M and H between | more than M | between M and VH |
A4 | between L and M | more than H | between L and M | - | at least H | between H and VH |
A5 | at most M | M | less than M | between L and M | - | between VH and A |
A6 | between VL and M | at most L | between VL and M | less than L | at most L | - |
A1 | - | between H and VH | between M and H | at most M | M | VH |
A2 | between VL and L | - | L | at most L | between M and H | more than M |
A3 | at most M | at least M | - | between M and H | more than M | between M and H |
A4 | L | at least M | between L and M | - | H | between H and VH |
A5 | M | between H and VH | less than M | at most M | - | between H and VH |
A6 | less than M | less than M | between VL and L | between L and M | at most M | - |
A1 | - | M | H | M | between M and H | between VH and A |
A2 | M | - | M | at most L | between M and H | less than M |
A3 | between M and H | M | - | between M and H | more than M | between M and H |
A4 | M | at least M | M | - | at least M | M |
A5 | between L and M | between H and VH | less than M | at most M | - | at most M |
A6 | less than M | more than M | between VL and L | M | more than M | - |
A1 | - | M | between VL and L | M | M | L |
A2 | M | - | H | M | between M and H | between M and H |
A3 | at least M | at most M | - | at most H | between M and H | between M and H |
A4 | between L and M | M | M | - | between L and M | M |
A5 | M | between H and VH | between L and M | between M and H | - | M |
A6 | more than M | between L and M | between VL and L | M | M | - |
Indicators | A1 | A2 | A3 | A4 | A5 | A6 |
---|---|---|---|---|---|---|
A1 | - | [H, A] | [M, M] | [M, M] | [M, H] | [M, VH] |
A2 | [N, L] | - | [N, L] | [N, L] | [M, M] | [H, A] |
A3 | [M, M] | [M, A] | - | [M, H] | [H, A] | [M, VH] |
A4 | [L, M] | [VH, A] | [L, M] | - | [H, A] | [H, VH] |
A5 | [N, M] | [M, M] | [N, L] | [L, M] | - | [VH, A] |
A6 | [VL, M] | [N, L] | [VL, M] | [N, VL] | [N, L] | - |
A1 | - | [H, VH] | [M, H] | [N, M] | [M, M] | [VH, VH] |
A2 | [VL, L] | - | [L, L] | [N, L] | [M, H] | [H, A] |
A3 | [N, M] | [M, A] | - | [M, H] | [H, A] | [M, VH] |
A4 | [L, L] | [M, A] | [L, M] | - | [H, H] | [H, VH] |
A5 | [M, M] | [H, VH] | [N, L] | [N, M] | - | [H, VH] |
A6 | [N, L] | [N, L] | [VL, L] | [L, M] | [N, M] | - |
A1 | - | [M, M] | [H, H] | [M, M] | [M, H] | [VH, A] |
A2 | [M, M] | - | [M, M] | [N, L] | [M, H] | [N, L] |
A3 | [M, H] | [M, M] | - | [M, H] | [H, A] | [M, VH] |
A4 | [M, M] | [M, A] | [M, M] | - | [M, A] | [M, M] |
A5 | [L, M] | [H, VH] | [N, L] | [N, M] | - | [N, M] |
A6 | [N, L] | [H, A] | [VL, L] | [M, M] | [H, A] | - |
A1 | - | [M, M] | [VL, L] | [M, M] | [M, M] | [L, L] |
A2 | [M, M] | - | [H, H] | [M, M] | [M, H] | [M, H] |
A3 | [M, A] | [N, M] | - | [N, H] | [M, H] | [M, VH] |
A4 | [L, M] | [M, M] | [M, M] | - | [L, M] | [M, M] |
A5 | [M, M] | [H, VH] | [L, M] | [M, H] | - | [M, M] |
A6 | [H, A] | [L, M] | [VL, L] | [M, M] | [M, M] | - |
Indicators | A1 | A2 | A3 | A4 | A5 | A6 |
---|---|---|---|---|---|---|
A1 | - | [H, −0.5] | [M, −0.25] | [M, +0.25] | [M, 0] | [H, −0.25] |
A2 | [L, −0.25] | - | [L, +0.25] | [VL, −0.25] | [M, 0] | [M, −0.25] |
A3 | [L, +0.25] | [L, +0.25] | - | [L, +0.25] | [H, −0.25] | [M, 0] |
A4 | [L, +0.25] | [L, +0.25] | [L, +0.25] | - | [H, −0.25] | [H, −0.5] |
A5 | [L, 0] | [H, −0.5] | [VL, −0.5] | [VL, +0.25] | - | [M, 0] |
A6 | [VL, +0.25] | [H, −0.25] | [VL, 0] | [L, 0] | [L, −0.25] | - |
Indicators | A1 | A2 | A3 | A4 | A5 | A6 |
---|---|---|---|---|---|---|
A1 | - | [H, +0.25] | [L, +0.25] | [M, 0] | [H, −0.5] | [H, 0] |
A2 | [L, +0.5] | - | [M, −0.25] | [L, +0.25] | [H, −0.25] | [H, +0.5] |
A3 | [H, 0] | [H, +0.5] | - | [H, 0] | [VH, +0.5] | [VH, 0] |
A4 | [M, −0.25] | [VH, +0.25] | [M, 0] | - | [H, −0.25] | [H, 0] |
A5 | [M, 0] | [H, +0.5] | [L, +0.25] | [M, +0.25] | - | [H, +0.25] |
A6 | [M, +0.25] | [M, +0.25] | [L, +0.25] | [L, +0.25] | [M, +0.5] | - |
Indicators | Linguistic Intervals | Numerical Interval | Mean Value | Weight |
---|---|---|---|---|
A1 | [(M, −0.46);(M, −0.17)] | [2.54, 2.83] | 2.69 | 0.18 |
A2 | [(L, −0.25);(M, −0.37)] | [1.75, 2.63] | 2.19 | 0.15 |
A3 | [(L, +0.25);(H, −0.37)] | [2.25, 3.83] | 3.04 | 0.20 |
A4 | [(L, +0.46);(H, +0.13)] | [2.46, 3.13] | 2.79 | 0.19 |
A5 | [(L, −0.25);(M, −0.12)] | [1.75, 2.88] | 2.31 | 0.16 |
A6 | [(VL, +0.25);(M, +0.46)] | [1.25, 2.46] | 1.85 | 0.12 |
Indicators | Weight | Experts Evaluation Score | |||
---|---|---|---|---|---|
1 | 2 | 3 | 4 | ||
A11 | 0.079 | 0.5 | 0.6 | (0.4, 0.5) | (0.5, 0.6) |
A12 | 0.070 | (0.5, 0.7) | 0.7 | 0.6 | 0.5 |
A21 | 0.059 | 0.5 | (0.4, 0.5) | 0.3 | (0.4, 0.6) |
A22 | 0.064 | (0.4, 0.5, 0.6) | 0.5 | (0.5, 0.6) | 0.6 |
A31 | 0.068 | 0.3 | 0.5 | 0.4 | 0.5 |
A32 | 0.072 | 0.5 | (0.5, 0.6) | (0.4, 0.6) | (0.5, 0.6) |
A33 | 0.071 | 0.3 | (0.2, 0.3, 0.4) | (0.3, 0.4) | 0.4 |
A41 | 0.073 | 0.6 | 0.5 | 0.5 | (0.4, 0.5, 0.6) |
A42 | 0.071 | (0.4, 0.5) | 0.4 | (0.5, 0.6) | 0.5 |
A51 | 0.065 | 0.4 | 0.6 | 0.4 | (0.5, 0.6) |
A52 | 0.066 | 0.3 | (0.1, 0.3) | 0.3 | (0.2, 0.3) |
A53 | 0.067 | 0.2 | (0.3, 0.4) | 0.4 | 0.3 |
A61 | 0.056 | (0.5, 0.7) | (0.5, 0.7) | (0.4, 0.5) | 0.6 |
A62 | 0.057 | (0.3, 0.4) | 0.3 | 0.3 | (0.4, 0.5) |
A63 | 0.062 | (0.5, 0.6) | 0.5 | (0.5, 0.6) | 0.5 |
Indicators | Score Integration | Score |
---|---|---|
A11 | {0.505, 0.527, 0.532, 0.553} | 0.529 |
A12 | {0.584, 0.634} | 0.609 |
A21 | {0.404, 0.431, 0.462, 0.486} | 0.446 |
A22 | {0.505, 0.532, 0.527, 0.553, 0.553, 0.557} | 0.541 |
A31 | {0.431} | 0.431 |
A32 | {0.477, 0.577, 0.477, 0.577, 0.477, 0.577, 0.477, 0.577} | 0.527 |
A33 | {0.304, 0.352, 0.352, 0.330, 0.326, 0.376} | 0.340 |
A41 | {0.505, 0.527, 0.553} | 0.528 |
A42 | {0.452, 0.505, 0.452, 0.505} | 0.479 |
A51 | {0.482, 0.510} | 0.496 |
A52 | {0.229, 0.300, 0.229, 0.300} | 0.265 |
A53 | {0.304, 0.330} | 0.317 |
A61 | {0.505, 0.634, 0.505, 0.634, 0.505, 0.634, 0.505, 0.634} | 0.569 |
A62 | {0.326, 0.381, 0.326, 0.381} | 0.354 |
A63 | {0.500, 0.553, 0.500, 0.553} | 0.526 |
Indicators | First Layer Indicators’ Score | First Layer Indicators’ Weight | Target Layer Score |
---|---|---|---|
A1 | 0.567 | 0.181 | 0.474 |
A2 | 0.495 | 0.147 | |
A3 | 0.433 | 0.204 | |
A4 | 0.504 | 0.188 | |
A5 | 0.358 | 0.155 | |
A6 | 0.484 | 0.125 |
Method | First Layer Indicators’ Weight | Target Layer Score | |||||
---|---|---|---|---|---|---|---|
A1 | A2 | A3 | A4 | A5 | A6 | ||
Buckley’s AHP | 0.180 | 0.148 | 0.201 | 0.185 | 0.152 | 0.133 | 0.475 |
HFLTS | 0.181 | 0.147 | 0.204 | 0.188 | 0.155 | 0.125 | 0.474 |
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Mou, Y.; Li, X. Chinese Family Farm Business Risk Assessment Using a Hierarchical Hesitant Fuzzy Linguistic Model. Mathematics 2024, 12, 2216. https://doi.org/10.3390/math12142216
Mou Y, Li X. Chinese Family Farm Business Risk Assessment Using a Hierarchical Hesitant Fuzzy Linguistic Model. Mathematics. 2024; 12(14):2216. https://doi.org/10.3390/math12142216
Chicago/Turabian StyleMou, Yu, and Xiaofeng Li. 2024. "Chinese Family Farm Business Risk Assessment Using a Hierarchical Hesitant Fuzzy Linguistic Model" Mathematics 12, no. 14: 2216. https://doi.org/10.3390/math12142216
APA StyleMou, Y., & Li, X. (2024). Chinese Family Farm Business Risk Assessment Using a Hierarchical Hesitant Fuzzy Linguistic Model. Mathematics, 12(14), 2216. https://doi.org/10.3390/math12142216