Nudges, Subsidies or Regulation? Estimating Effects of Policy Choices and Mixes on Digitalization: Evidence from China’s Aquaculture Industry
Abstract
1. Introduction
2. Study Area, Theoretical Framework and Methods
2.1. Study Area and Materials
2.2. Theoretical Framework and Research Hypotheses
2.3. Methods
2.3.1. An OLS-Based Analysis of the Direct and Interaction Effects of Policy Instruments on Digitalization
2.3.2. A Propensity Score Matching (PSM)-Based Estimation of the Causal Effects of Policy Instruments on the Adoption of Specific Digital Technologies
2.3.3. A Gradient Boosting Machine (GBM)-Based Analysis of Robust Effects
3. Result Analysis
3.1. OLS-Based Results: Direct and Interaction Effects of Policy Instruments on Digitalization
3.2. PSM-Based Results: Causal Effects of Social Nudging on the Adoption of Specific Digital Technologies
3.3. GBT-Based Results: Nonlinear and Robust Effects of Social Nudging on Digital Technology Adoption
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Questionnaire Information
| Questionnaire Items | Description | Measurement |
|---|---|---|
| Q1. Digital Tech Emp Share | Share of employees with a background in digital technology | 1 = None; 2 ≥ 0–7%; 3 ≥ 7–13%; 4 ≥ 13% |
| Q2. Aqua Tech Emp Share | Share of employees with a background in aquaculture-related technology | 1 = None; 2 ≥ 0–8%; 3 ≥ 8–25%; 4 ≥ 25% |
| Q3. New Tech Invest Share | Proportion of total investment in the past five years allocated to new technology and seed/breeding technology | 1 = None; 2 ≥ 0–2%; 3 ≥ 2–5%; 4 ≥ 5% |
| Q4. Digital Tech Invest Share | Proportion of total investment in the past five years allocated to digital technology | 1 = 0%; 2 ≥ 0–3%; 3 ≥ 3–5%; 4 ≥ 5% |
| Questionnaire Items | Description | Measurement |
|---|---|---|
| Q5. Smart Water Quality App | Extent of application of intelligent water quality monitoring systems in your organization | 1 = Not applied at all; 2 = Applied to a small extent; 3 = Moderately applied; 4 = Applied to a large extent; 5 = Extensively applied |
| Q6. Smart Feeding App | Extent of application of intelligent feeding systems in your organization | 1 = Not applied at all; 2 = Applied to a small extent; 3 = Moderately applied; 4 = Applied to a large extent; 5 = Extensively applied |
| Q7. Smart Oxygen Control App | Extent of application of intelligent oxygen regulation systems in your organization | 1 = Not applied at all; 2 = Applied to a small extent; 3 = Moderately applied; 4 = Applied to a large extent; 5 = Extensively applied |
| Q8. Smart Disease Warning App | Extent of application of intelligent fish disease early-warning systems in your organization | 1 = Not applied at all; 2 = Applied to a small extent; 3 = Moderately applied; 4 = Applied to a large extent; 5 = Extensively applied |
| Q9. Remote Monitoring App | Extent of application of remote monitoring systems in your organization | 1 = Not applied at all; 2 = Applied to a small extent; 3 = Moderately applied; 4 = Applied to a large extent; 5 = Extensively applied |
| Q10. Smart Market Analysis App | Extent of application of intelligent market analysis technologies in your organization | 1 = Not applied at all; 2 = Applied to a small extent; 3 = Moderately applied; 4 = Applied to a large extent; 5 = Extensively applied |
| Q11. AI Assisted Farming Intention | Willingness to adopt generative artificial intelligence–assisted aquaculture | 1 = Not applied at all; 2 = Applied to a small extent; 3 = Moderately applied; 4 = Applied to a large extent; 5 = Extensively applied |
| Q12. Digital Traceability App | Extent of application of digital traceability technologies for aquatic products (e.g., blockchain, QR code) | 1 = Not applied at all; 2 = Applied to a small extent; 3 = Moderately applied; 4 = Applied to a large extent; 5 = Extensively applied |
| Questionnaire Items | Description | Measurement |
|---|---|---|
| Q13. Social Local Support | Support, encouragement, or guidance from family members, friends, or village cadres/local officials during your organization’s digital technology adoption process | 1 = None; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Q14. Peer Support | Support, encouragement, or guidance from peers in the same industry during the digital technology adoption process | 1 = None; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Q15. Research Institute Support | Support, encouragement, or guidance from research institutions during the digital technology adoption process | 1 = None; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Q16. Ecommerce Platform Support | Support, encouragement, or guidance from e-commerce platforms during the digital technology adoption process | 1 = None; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Q17. Processing Enterprise Support | Support, encouragement, or guidance from processing enterprises during the digital technology adoption process | 1 = None; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Q18. Industry Association Support | Support, encouragement, or guidance from industry associations during the digital technology adoption process | 1 = None; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Questionnaire Items | Description | Measurement |
|---|---|---|
| Q19. Water Quality Requirement | Whether cooperative enterprises, government agencies, purchasers, or suppliers impose requirements on the water quality of aquaculture | 1 = Yes; 0 = No |
| Q20. Drug Use Requirement | Whether cooperative enterprises, government agencies, purchasers, or suppliers impose requirements on the use of fish drugs such as interferons and antibiotics | 1 = Yes; 0 = No |
| Q21. Waste water Treatment Requirement | Whether cooperative enterprises, government agencies, purchasers, or suppliers impose requirements on the treatment and discharge of aquaculture tailwater | 1 = Yes; 0 = No |
| Q22. Digital Incentive | Whether your organization has received any rewards or subsidies from cooperative enterprises, government agencies, purchasers, or suppliers for adopting digital technologies | 1 = Yes; 0 = No |
| Questionnaire Items | Description | Measurement |
|---|---|---|
| Q23. Tailwater Treatment Useful | Perceived usefulness of tailwater treatment technology | 1 = Not useful at all; 2 = Slightly useful; 3 = Moderately useful; 4 = Useful; 5 = Very useful |
| Q24. Water Quality Monitoring Useful | Perceived usefulness of water quality monitoring technology | 1 = Not useful at all; 2 = Slightly useful; 3 = Moderately useful; 4 = Useful; 5 = Very useful |
| Q25. Smart Feeding Useful | Perceived usefulness of intelligent feeding technology | 1 = Not useful at all; 2 = Slightly useful; 3 = Moderately useful; 4 = Useful; 5 = Very useful |
| Q26. Smart Disease Warning Useful | Perceived usefulness of intelligent fish disease early-warning technology | 1 = Not useful at all; 2 = Slightly useful; 3 = Moderately useful; 4 = Useful; 5 = Very useful |
| Q27. Smart Oxygen Regulation Useful | Perceived usefulness of intelligent water oxygen regulation technology | 1 = Not useful at all; 2 = Slightly useful; 3 = Moderately useful; 4 = Useful; 5 = Very useful |
| Q28. Remote Monitoring Useful | Perceived usefulness of remote monitoring technology | 1 = Not useful at all; 2 = Slightly useful; 3 = Moderately useful; 4 = Useful; 5 = Very useful |
| Q29. Market Analysis Useful | Perceived usefulness of intelligent market analysis technology | 1 = Not useful at all; 2 = Slightly useful; 3 = Moderately useful; 4 = Useful; 5 = Very useful |
| Q30. Aqua AI Generative Model Useful | Perceived usefulness of large aquaculture technology models (generative artificial intelligence) | 1 = Not useful at all; 2 = Slightly useful; 3 = Moderately useful; 4 = Useful; 5 = Very useful |
| Questionnaire Items | Description | Measurement |
|---|---|---|
| Q31. Gender | Respondent’s gender | 1 = Male; 0 = Female |
| Q32. Age Group | Respondent’s age group | 1 = 28–35 years; 2 = 36–45 years; 3 = 46–55 years; 4 = 56–65 years; 5 = 66 years and above |
| Q33. Education Level | Respondent’s highest level of education | 1 = Primary school or below; 2 = Junior high school; 3 = Senior high school; 4 = College or university (including undergraduate); 5 = Postgraduate or above |
| Q34. Training Participation | Whether the respondent has participated in relevant training programs | 1 = Yes; 0 = No |
| Q35. Farming Experience | Number of years the respondent has been engaged in the aquaculture industry | 1 = 8 years or less; 2 = 9–14 years; 3 = 15–20 years; 4 = 21 years or more |
| Q36. Province | Province where the respondent or their organization is located | 1 = Zhejiang; 2 = Shanghai; 3 = Anhui; 4 = Jiangsu |
| Q37. Ecommerce Participation | Whether your organization has joined or accessed any e-commerce platforms | 1 = Yes; 0 = No |
| Q38. Large Scale Farm | Whether the aquaculture area exceeds 60 mu (≈4 hectares) | 1 = Yes; 0 = No |
| Questionnaire Items | Description | Measurement |
|---|---|---|
| Q39. Eco Regulation Pressure | Degree of ecological and environmental policy pressure faced by you or your organization | 1 = Very low; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Q40. Fish Disease Pressure | Degree of fish disease pressure faced by you or your organization | 1 = Very low; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Q41. Financial Pressure | Degree of financial shortage pressure faced by you or your organization | 1 = Very low; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Q42. Pond Access Pressure | Degree of difficulty in obtaining access to pond or water surface areas faced by you or your organization | 1 = Very low; 2 = Low; 3 = Moderate; 4 = High; 5 = Very high |
| Questionnaire Items | Description | Measurement |
|---|---|---|
| Q43. Digital Equipment Cost Adequacy | Whether the cost for purchasing digital equipment is sufficient | 1 = Yes; 0 = No |
| Q44. Digital Maintenance Cost Adequacy | Whether the cost for maintaining digital equipment is sufficient | 1 = Yes; 0 = No |
| Q45. Facility Space Adequacy | Whether the existing facility space for upgrading digital equipment is sufficient | 1 = Yes; 0 = No |
| Q46. Technical Reserve Adequacy | Whether the existing technical reserves for upgrading digital equipment are sufficient | 1 = Yes; 0 = No |
Appendix B. PCA Information
| Variable | Kaiser–Meyer–Olkin Measure of Sampling Adequacy (Overall) | Bartlett’s Test of Sphericity | First Principal Component Eigenvalue (PC1 Eigenvalue) | PC1 Variance Explained | ||
|---|---|---|---|---|---|---|
| χ2 | df | p | ||||
| Digitalization | 0.636 | 210.567 | 6 | 0.000 | 2.135 | 0.534 |
| Nudge | 0.797 | 469.636 | 15 | 0.000 | 3.026 | 0.504 |
| Constraints | 0.639 | 171.876 | 3 | 0.000 | 1.939 | 0.647 |
| Perceived Usefulness | 0.933 | 1652.380 | 28 | 0.000 | 5.733 | 0.717 |
| External Pressures | 0.734 | 215.077 | 6 | 0.000 | 2.245 | 0.561 |
| Transition Capacity | 0.700 | 644.429 | 6 | 0.000 | 2.822 | 0.706 |
Appendix C. PSM Information
| Variable | Matched | Treated | Control | %Bias | |Bias| | t | p > |t| | V(C) |
|---|---|---|---|---|---|---|---|---|
| R | U | 0.449 | 0.614 | −33.469 | 33.469 | −2.667 | 0.008 | 1.044 |
| M | 0.522 | 0.552 | −5.945 | 5.945 | −0.344 | 0.731 | 1.009 | |
| S | U | 0.504 | 0.724 | −46.316 | 46.316 | −3.691 | 0.000 | 1.252 |
| M | 0.552 | 0.582 | −5.982 | 5.982 | −0.346 | 0.730 | 1.016 | |
| c1 | U | 0.858 | 0.850 | 2.223 | 2.223 | 0.177 | 0.860 | 0.956 |
| M | 0.836 | 0.821 | 3.929 | 3.929 | 0.227 | 0.820 | 0.933 | |
| c2 | U | 2.724 | 2.929 | −21.536 | 21.536 | −1.716 | 0.087 | 1.182 |
| M | 2.970 | 2.896 | 8.565 | 8.565 | 0.496 | 0.621 | 0.781 | |
| c3 | U | 3.346 | 2.772 | 67.062 | 67.062 | 5.344 | 0.000 | 1.362 |
| M | 2.896 | 2.985 | −11.015 | 11.015 | −0.638 | 0.525 | 1.030 | |
| c4 | U | 0.929 | 0.835 | 29.479 | 29.479 | 2.349 | 0.020 | 0.477 |
| M | 0.896 | 0.896 | 0.000 | 0.000 | 0.000 | 1.000 | 1.000 | |
| c5 | U | 2.110 | 1.882 | 21.010 | 21.010 | 1.674 | 0.095 | 1.078 |
| M | 2.104 | 2.015 | 8.102 | 8.102 | 0.469 | 0.640 | 0.991 | |
| c6 | U | 2.197 | 2.811 | −50.177 | 50.177 | −3.998 | 0.000 | 1.036 |
| M | 2.328 | 2.418 | −7.367 | 7.367 | −0.426 | 0.671 | 1.026 |
| Variable | Matched | Treated | Control | %Bias | |Bias| | t | p > |t| | V(C) |
|---|---|---|---|---|---|---|---|---|
| N | U | 0.410 | 0.643 | −47.705 | 47.705 | −3.711 | 0.000 | 1.050 |
| M | 0.561 | 0.561 | 0.000 | 0.000 | 0.000 | 1.000 | 1.000 | |
| R | U | 0.647 | 0.347 | 62.751 | 62.751 | 4.869 | 0.000 | 1.004 |
| M | 0.485 | 0.500 | −3.008 | 3.008 | −0.173 | 0.863 | 0.999 | |
| c1 | U | 0.878 | 0.816 | 17.191 | 17.191 | 1.309 | 0.192 | 0.711 |
| M | 0.924 | 0.879 | 15.183 | 15.183 | 0.872 | 0.385 | 0.657 | |
| c2 | U | 2.872 | 2.755 | 12.229 | 12.229 | 0.949 | 0.344 | 1.004 |
| M | 2.879 | 2.773 | 12.055 | 12.055 | 0.693 | 0.490 | 1.029 | |
| c3 | U | 3.000 | 3.153 | −16.786 | 16.786 | −1.288 | 0.199 | 0.818 |
| M | 3.121 | 3.136 | −1.656 | 1.656 | −0.095 | 0.924 | 0.951 | |
| c4 | U | 0.840 | 0.949 | −35.979 | 35.979 | −2.954 | 0.003 | 2.769 |
| M | 0.985 | 0.939 | 23.798 | 23.798 | 1.367 | 0.175 | 0.262 | |
| c5 | U | 2.006 | 1.980 | 2.478 | 2.478 | 0.194 | 0.846 | 1.186 |
| M | 2.121 | 2.045 | 6.874 | 6.874 | 0.395 | 0.694 | 1.054 | |
| c6 | U | 2.513 | 2.490 | 1.807 | 1.807 | 0.139 | 0.890 | 0.848 |
| M | 2.333 | 2.348 | −1.229 | 1.229 | −0.071 | 0.944 | 0.919 |
| Variable | Matched | Treated | Control | %bias | |Bias| | t | p > |t| | V(C) |
|---|---|---|---|---|---|---|---|---|
| N | U | 0.422 | 0.588 | −33.538 | 33.538 | −2.668 | 0.008 | 1.006 |
| M | 0.595 | 0.568 | 5.443 | 5.443 | 0.331 | 0.741 | 0.982 | |
| S | U | 0.748 | 0.462 | 60.933 | 60.933 | 4.825 | 0.000 | 0.757 |
| M | 0.622 | 0.649 | −5.578 | 5.578 | −0.339 | 0.735 | 1.032 | |
| c1 | U | 0.896 | 0.807 | 25.290 | 25.290 | 1.995 | 0.047 | 0.596 |
| M | 0.865 | 0.811 | 14.605 | 14.605 | 0.888 | 0.376 | 0.762 | |
| c2 | U | 2.822 | 2.832 | −1.016 | 1.016 | −0.081 | 0.936 | 1.022 |
| M | 2.797 | 2.676 | 13.083 | 13.083 | 0.796 | 0.427 | 1.028 | |
| c3 | U | 3.022 | 3.101 | −8.727 | 8.727 | −0.696 | 0.487 | 1.207 |
| M | 3.135 | 3.122 | 1.567 | 1.567 | 0.095 | 0.924 | 1.014 | |
| c4 | U | 0.852 | 0.916 | −20.037 | 20.037 | −1.606 | 0.110 | 1.638 |
| M | 0.905 | 0.878 | 8.653 | 8.653 | 0.526 | 0.599 | 0.802 | |
| c5 | U | 1.993 | 2.000 | −0.677 | 0.677 | −0.054 | 0.957 | 0.935 |
| M | 2.054 | 2.014 | 3.705 | 3.705 | 0.225 | 0.822 | 1.056 | |
| c6 | U | 2.452 | 2.563 | −8.794 | 8.794 | −0.698 | 0.486 | 0.855 |
| M | 2.270 | 2.419 | −11.777 | 11.777 | −0.716 | 0.475 | 1.040 |
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| Variables | Null Model Digitalization (1) | Fixed Effects Digitalization (2) | Fixed Effects Digitalization (3) | With Regulation Digitalization (4) | With Subsidy Digitalization (5) |
|---|---|---|---|---|---|
| N | 1.644 *** (10.804) | 1.634 *** (10.352) | 1.465 *** (8.942) | 1.408 *** (8.477) | 1.307 *** (7.974) |
| R | −0.238 * (−1.781) | −0.138 (−0.865) | |||
| S | −0.620 *** (−3.828) | ||||
| 1.307 * (7.974) | |||||
| Control Variables | NO | NO | YES | YES | YES |
| Constant | −0.822 *** (−7.640) | −0.805 *** (−4.831) | −2.258 *** (−4.421) | −2.065 *** (−3.970) | −1.685 *** (−3.267) |
| Observations | 254 | 254 | 254 | 254 | 254 |
| R-squared | 0.317 | 0.318 | 0.360 | 0.368 | 0.404 |
| Area Fixed | NO | YES | YES | YES | YES |
| Variables | With S and R Digitalization (5) | Mediation Effect PU (6) | ADD N × R Digitalization (7) | ADD N × S Digitalization (8) | Full Model Digitalization (9) |
|---|---|---|---|---|---|
| N | 1.307 *** (7.974) | 1.279 *** (4.177) | 1.356 *** (5.948) | 1.865 *** (7.456) | 1.807 *** (6.657) |
| R | −0.138 (−0.865) | −0.708 ** (−2.265) | −0.088 (0.388) | −0.190 (−1.203) | −0.283 (−1.222) |
| S | −0.620 * (−3.828) | −1.007 *** (−3.327) | −0.623 *** (−3.832) | −0.108 (−0.454) | −0.073 (−0.294) |
| N × R | −0.094 *** (−3.000) | 0.170 (0.551) | |||
| N × S | −0.906 *** (−2.923) | −0.957 *** (−2.953) | |||
| Control Variables | YES | YES | YES | YES | YES |
| Constant | −1.685 *** (−3.267) | −0.450 (−0.467) | −1.732 *** (−3.216) | −2.051 *** (−3.921) | −1.985 *** (−3.696) |
| Observations | 254 | 254 | 254 | 254 | 254 |
| R-squared | 0.404 | 0.225 | 0.404 | 0.424 | 0.425 |
| Area Fixed | YES | YES | YES | YES | YES |
| Variables | Full Model Digitalization (9) | 1% Winsorized Digitalization (10) | 5% Winsorized Digitalization (11) | Without Shanghai Digitalization (12) | Exclude Outliers Digitalization (13) |
|---|---|---|---|---|---|
| N | 1.807 *** (6.657) | 1.807 *** (6.657) | 1.700 *** (6.525) | 1.720 *** (5.846) | 1.827 *** (6.679) |
| R | −0.283 (−1.222) | −0.283 (−1.222) | −0.285 (−1.279) | −0.343 (−1.3356) | −0.300 (−1.290) |
| S | −0.073 (−0.2937) | −0.073 (−0.309) | −0.073 (−0.309) | 0.098 (0.372) | −0.094 (−0.382) |
| N × R | 0.170 (0.551) | 0.166 (0.562) | 0.166 (0.562) | 0.223 (0.656) | 0.137 (0.440) |
| N × S | −0.957 *** (−2.953) | −0.846 *** (−2.722) | −0.846 *** (−2.949) | −1.041 *** (−2.949) | −0.960 *** (−2.934) |
| Control Variables | YES | YES | YES | YES | YES |
| Constant | −1.985 *** (−3.696) | −1.985 *** (−3.800) | −1.985 *** (−3.800) | −2.043 *** (−3.560) | −1.947 *** (−3.585) |
| Observations | 254 | 254 | 254 | 220 | 245 |
| R-squared | 0.425 | 0.4225 | 0.422 | 0.412 | 0.425 |
| Area Fixed | YES | YES | YES | YES | YES |
| Variables | Full Model Digitalization (9) | Continuous Digitalization (14) | 2-Quantile Digitalization (15) | 3-Quantilei Digitalization (16) | 4-Quantile Digitalization (17) |
|---|---|---|---|---|---|
| N | 1.807 *** (6.657) | 4.021 *** (7.325) | 1.815 *** (6.766) | 1.205 *** (4.882) | 0.777 *** (4.680) |
| R | −0.283 (−1.222) | −0.670 (−1.572) | −0.252 (−1.101) | −0.082 (−0.314) | −0.184 (−1.034) |
| S | −0.073 (−0.2937) | 0.108 (0.293) | −0.091 (−0.373) | 0.451 (0.987) | 0.524 (1.232) |
| N × R | 0.170 (0.551) | 1.747 (1.513) | 0.126 (0.408) | 0.013 (0.110) | 0.051 (0.791) |
| N × S | −0.957 *** (−2.953) | −1.115 (−1.227) | −0.932 *** (−2.879) | −0.419 ** (−2.089) | −0.348 ** (−2.348) |
| Control Variables | YES | YES | YES | YES | YES |
| Constant | −1.985 *** (−3.696) | −2.213 *** (−3.972) | −2.001 *** (−3.723) | −3.265 *** (−4.096) | −2.888 *** (−3.941) |
| Observations | 254 | 254 | 254 | 254 | 245 |
| R-squared | 0.425 | 0.481 | 0.425 | 0.412 | 0.425 |
| Area Fixed | YES | YES | YES | YES | YES |
| Variables | Full Model Digitalization (9) | Channel = Low Digitalization (18) | Channel = High Digitalization (19) | Pressure = Low Digitalization (20) | Pressure = High Digitalization (21) |
|---|---|---|---|---|---|
| N | 1.807 *** (6.657) | 1.799 *** (4.835) | 2.018 *** (4.188) | 1.593 *** (4.074) | 1.721 *** (4.406) |
| R | −0.283 (−1.222) | −0.311 (−1.283) | 0.194 (0.220) | −0.548 (−1.489) | −0.304 (−1.037) |
| S | −0.073 (−0.2937) | −0.294 (−1.096) | 0.584 (0.875) | −0.235 (−0.631) | −0.184 (−0.550) |
| N × R | 0.170 (0.551) | −0.853 ** (−2.183) | −0.308 (−0.328) | 0.581 (1.171) | −0.184 (−0.550) |
| N × S | −0.957 *** (−2.953) | −2.071 (−3.427) | −1.786 ** (−2.362) | −0.452 (−0.884) | −1.084 ** (−2.548) |
| Control Variables | YES | YES | YES | YES | YES |
| Constant | −1.985 *** (−3.696) | −2.071 *** (−3.427) | −1.932 (−1.614) | −2.123 (−2.535) | −1.460 ** (−2.068) |
| Observations | 254 | 179 | 75 | 102 | 152 |
| R-squared | 0.425 | 0.410 | 0.459 | 0.525 | 0.440 |
| Area Fixed | YES | YES | YES | YES | YES |
| Variables | Full Model Digitalization (9) | Capacity = Low Digitalization (22) | Capacity = High Digitalization (23) | Size = Low Digitalization (24) | Size = High Digitalization (25) |
|---|---|---|---|---|---|
| N | 1.807 *** (6.657) | 1.757 *** (4.094) | 1.895 *** (5.065) | 2.038 *** (5.007) | 1.317 *** (3.583) |
| R | −0.283 (−1.222) | −0.028 (−0.107) | −0.740 * (−1.681) | −0.396 (−1.168) | 0.027 (0.082) |
| S | −0.073 (−0.2937) | −0.705 ** (−2.166) | 0.981 ** (2.431) | 0.354 (1.024) | −0.751 ** (−2.121) |
| N × R | 0.170 (0.551) | −0.274 (−0.741) | 0.507 (0.982) | −0.131 (−0.255) | 0.031 (0.077) |
| N × S | −0.957 *** (−2.953) | −0.598 (−1.304) | −1.335 ** (−2.448) | −1.093 ** (−2.033) | −0.293 (−0.671) |
| Control Variables | YES | YES | YES | YES | YES |
| Constant | −1.985 *** (−3.696) | −2.275 *** (−2.833) | 2.289 *** (3.963) | −2.275 *** (−2.833) | −1.183 (−1.598) |
| Observations | 254 | 153 | 101 | 106 | 148 |
| R-squared | 0.425 | 0.406 | 0.488 | 0.376 | 0.437 |
| Area Fixed | YES | YES | YES | YES | YES |
| Variables | Digitalization (26) | D1 (27) | D2 (28) | D3 (29) | D4 (30) | D5 (31) | D6 (32) | D7 (33) | D8 (34) |
|---|---|---|---|---|---|---|---|---|---|
| N | 2.260 *** (6.45) | 0.831 *** (2.61) | 0.770 ** (2.38) | 0.449 (1.40) | 0.698 *** (2.25) | 0.667 * (1.93) | 0.870 *** (2.77) | 0.649 * (1.93) | 0.790 ** (2.19) |
| R | −0.061 (−0.19) | −0.256 (−0.77) | 0.027 (0.07) | −0.221 (−0.61) | −0.438 (−1.37) | −0.646 ** (−1.98) | −0.223 (−0.69) | −0.324 (−1.04) | −0.220 (−0.68) |
| S | −0.439 (6.45) | −0.120 (−0.35) | −0.812 *** (−2.07) | −0.758 *** (−2.01) | −0.598 * (−1.72) | −0.420 (−1.19) | −0.482 (−1.44) | −0.263 (−0.85) | −0.424 (−1.20) |
| N × R | −1.031 ** (−2.45) | −0.602 (−1.40) | −0.206 (−0.42) | 0.024 (0.05) | −0.269 (−0.62) | −0.510 (−1.13) | −0.397 (−0.90) | −0.335 (−0.80) | −0.328 (−0.70) |
| N × S | −0.582 (−1.31) | −0.047 (−0.11) | −0.319 (−0.66) | −0.398 (−0.89) | −0.182 (−0.45) | 0.336 (0.80) | −0.440 (−1.06) | −0.267 (−0.66) | −0.288 (−0.72) |
| Control Variables | YES | YES | YES | YES | YES | YES | YES | YES | YES |
| Constant | −2.300 * (−1.72) | 2.086 ** (2.03) | 1.601 (1.64) | 1.326 (1.29) | 1.698 (1.34) | 2.564 * (1.68) | 1.519 (1.46) | 1.739 (1.40) | 2.661 * (1.81) |
| Observations | 134 | 134 | 134 | 134 | 134 | 134 | 134 | 134 | 134 |
| R-squared | 0.467 | 0.262 | 0.348 | 0.376 | 0.446 | 0.366 | 0.424 | 0.380 | 0.320 |
| Variables | Digitalization (35) | D1 (36) | D2 (37) | D3 (38) | D4 (39) | D5 (40) | D6 (41) | D7 (43) | D8 (44) |
|---|---|---|---|---|---|---|---|---|---|
| S | 0.010 (0.03) | −0.166 (−0.45) | −0.734 * (−1.95) | −0.810 ** (−2.18) | −0.862 *** (−2.69) | −0.711 ** (−2.25) | −0.931 *** (−3.04) | −0.667 ** (−2.17) | −0.770 ** (−2.12) |
| N | 1.991 *** (6.09) | 1.022 *** (3.31) | 0.732 ** (1.98) | 0.547 (1.62) | 0.782 ** (2.51) | 0.803 *** (2.92) | 0.854 *** (2.92) | 0.454 (1.48) | 0.257 (0.72) |
| R | −0.381 (−1.07) | −0.738 ** (−2.30) | −0.487 (−1.40) | −0.809 ** (−2.52) | −0.812 *** (−2.69) | −0.748 *** (−2.79) | −0.965 *** (−3.32) | −0.790 ** (−2.57) | −0.596 * (−1.67) |
| N × S | −1.032 ** (−2.36) | −0.537 (−1.38) | −0.093 (−0.22) | 0.082 (0.19) | −0.193 (−0.50) | −0.085 (−0.22) | −0.343 (−0.93) | −0.402 (−0.98) | 0.357 (0.77) |
| R × S | −0.020 (−0.05) | 0.280 (0.71) | 0.115 (0.27) | 0.272 (0.66) | 0.499 (1.35) | 0.365 (0.95) | 0.481 (1.34) | 0.696 * (1.80) | 0.155 (0.34) |
| Control Variables | YES | YES | YES | YES | YES | YES | YES | YES | YES |
| Constant | −2.300 * (−1.72) | 2.086 ** (2.03) | 1.601 (1.64) | 1.326 (1.29) | 1.698 (1.34) | 2.564 * (1.68) | 1.519 (1.46) | 1.739 (1.40) | 2.661 * (1.81) |
| Observations | 132 | 132 | 132 | 132 | 132 | 132 | 132 | 132 | 132 |
| R-squared | 0.464 | 0.25 | 0.291 | 0.292 | 0.43 | 0.346 | 0.436 | 0.363 | 0.245 |
| Variables | Digitalization (45) | D1 (46) | D2 (47) | D3 (48) | D4 (49) | D5 (50) | D6 (51) | D7 (52) | D8 (53) |
|---|---|---|---|---|---|---|---|---|---|
| R | −0.388 (−0.92) | −0.433 (−1.04) | −0.029 (−0.06) | −0.275 (−0.65) | −0.404 (−1.03) | −0.519 (−1.27) | −0.286 (−0.77) | −0.518 (−1.32) | −0.434 (−1.10) |
| N | 1.160 *** (3.91) | 0.547 ** (1.97) | 0.718 ** (2.52) | 0.669 ** (2.19) | 0.595 ** (2.14) | 0.505 * (1.78) | 0.613 ** (2.30) | 0.625 *** (2.63) | 0.959 *** (3.33) |
| S | −0.823 *** (−2.58) | −0.190 (−0.63) | −0.558 * (−1.79) | −0.235 (−0.76) | −0.309 (−1.14) | −0.356 (−1.26) | −0.459 * (−1.74) | −0.741 *** (−3.22) | −0.55 * (−1.92) |
| R × N | 0.406 (0.99) | 0.330 (0.89) | 0.074 (0.18) | 0.118 (0.30) | 0.204 (0.56) | 0.542 (1.40) | 0.112 (0.31) | −0.056 (−0.15) | −0.211 (−0.56) |
| R × S | −0.234 (−0.51) | 0.077 (0.20) | −0.089 (−0.21) | −0.006 (−0.02) | −0.076 (−0.21) | −0.143 (−0.40) | −0.194 (−0.53) | 0.650 * (1.85) | 0.176 (0.47) |
| Control Variables | YES | YES | YES | YES | YES | YES | YES | YES | YES |
| Constant | −2.389 *** (−3.84) | 1.945 * (1.83) | 1.474 ** (2.51) | 0.735 (1.19) | 0.946 (0.86) | 2.351 (1.06) | 1.316 (1.06) | 2.073 (1.41) | 1.788 *** (2.59) |
| Observations | 148 | 148 | 148 | 148 | 148 | 148 | 148 | 148 | 148 |
| R-squared | 0.516 | 0.224 | 0.262 | 0.202 | 0.269 | 0.251 | 0.285 | 0.336 | 0.400 |
| Variables | Digitalization (54) | D1 (55) | D2 (56) | D3 (57) | D4 (58) | D5 (59) | D6 (60) | D7 (61) | D8 (62) |
|---|---|---|---|---|---|---|---|---|---|
| N | 1.660 *** (3.18) | 0.859 * (1.88) | 0.528 (1.06) | 0.713 (1.49) | 0.542 (1.08) | 0.522 (1.56) | 0.424 (1.05) | 0.585 ** (2.02) | 0.205 (0.51) |
| S | −0.562 (−1.35) | −0.031 (−0.08) | −0.869 * (−1.82) | −0.574 (−1.24) | −0.710 (−1.56) | −0.535 (−1.50) | −0.881 ** (−2.23) | −0.624 ** (−2.08) | −0.730 ** (−1.97) |
| R | −0.261 (−0.80) | −0.362 (−1.02) | −0.216 (−0.57) | −0.187 (−0.47) | −0.482 (−1.36) | −0.521 (−1.59) | −0.455 (−1.38) | 0.016 (0.06) | −0.360 (−1.04) |
| N × R | 0.096 (0.24) | 0.220 (0.54) | 0.136 (0.32) | −0.172 (−0.38) | 0.013 (0.03) | 0.522 (1.43) | −0.084 (−0.22) | −0.387 (−1.14) | 0.010 (0.03) |
| N × S | −0.571 (−1.20) | −0.561 (−1.26) | 0.020 (0.04) | 0.060 (0.12) | −0.091 (−0.19) | −0.185 (−0.47) | −0.026 (−0.06) | 0.107 (0.31) | 0.248 (0.60) |
| Control Variables | YES | YES | YES | YES | YES | YES | YES | YES | YES |
| Constant | −1.442 ** (−1.99) | 2.063 *** (3.24) | 2.308 *** (3.30) | 2.048 ** (2.43) | 2.318 *** (2.75) | 2.911 *** (4.25) | 2.966 *** (4.20) | 3.472 *** (4.76) | 3.553 *** (4.11) |
| Observations | 254 | 254 | 254 | 254 | 254 | 254 | 254 | 254 | 254 |
| R-squared | 0.421 | 0.196 | 0.274 | 0.243 | 0.359 | 0.271 | 0.384 | 0.266 | 0.178 |
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Share and Cite
Qian, Y.; Yin, Z.; Zhang, Y.; Zheng, J. Nudges, Subsidies or Regulation? Estimating Effects of Policy Choices and Mixes on Digitalization: Evidence from China’s Aquaculture Industry. Fishes 2026, 11, 38. https://doi.org/10.3390/fishes11010038
Qian Y, Yin Z, Zhang Y, Zheng J. Nudges, Subsidies or Regulation? Estimating Effects of Policy Choices and Mixes on Digitalization: Evidence from China’s Aquaculture Industry. Fishes. 2026; 11(1):38. https://doi.org/10.3390/fishes11010038
Chicago/Turabian StyleQian, Yixin, Zhuoran Yin, Yihao Zhang, and Jianming Zheng. 2026. "Nudges, Subsidies or Regulation? Estimating Effects of Policy Choices and Mixes on Digitalization: Evidence from China’s Aquaculture Industry" Fishes 11, no. 1: 38. https://doi.org/10.3390/fishes11010038
APA StyleQian, Y., Yin, Z., Zhang, Y., & Zheng, J. (2026). Nudges, Subsidies or Regulation? Estimating Effects of Policy Choices and Mixes on Digitalization: Evidence from China’s Aquaculture Industry. Fishes, 11(1), 38. https://doi.org/10.3390/fishes11010038

