Seeds of Cross-Sector Collaboration: A Multi-Agent Evolutionary Game Theoretical Framework Illustrated by the Breeding of Salt-Tolerant Rice
Abstract
:1. Introduction
2. Materials and Methods
2.1. The Two-Party Evolutionary Game Model of “Enterprise–Scientific Research Institution”
2.1.1. Basic Model Assumptions
2.1.2. Solutions for Evolutionary Stable Strategies
2.2. The Three-Party Evolutionary Game Model of “Enterprise–Scientific Research Institution–Government”
2.2.1. Basic Model Assumptions
2.2.2. Solutions for the Three-Party Evolutionary Stable Strategy
3. Results
3.1. Sensitivity Analysis of Initial Participation Willingness
3.2. Sensitivity Analysis of Benefit Distribution and Cost Sharing
3.3. Sensitivity Analysis of Government Supervision Intensity
3.4. Sensitivity Analysis of Government Subsidy Intensity
4. Conclusions
- Enhancing Initial Participation in Collaborative Innovation for Salt-Tolerant Rice Breeding. The research and application of salt-tolerant rice breeding have substantial social and economic benefits, playing a strategic role in improving the utilization of saline-alkali lands and securing food safety. Therefore, it is crucial to increase the initial motivation for research institutions and enterprises to participate. The government should first create a multi-tiered and open platform for technological exchange and an innovation incubation system, providing researchers with access to a wealth of academic resources and market information, thus lowering the barriers to initiating research and development (R&D). Additionally, initial assessments and risk analysis services provided by professional agencies should offer decision support to potential R&D participants, guiding the scientific allocation of R&D resources. Finally, the government should lead the establishment of a platform for the transformation of salt-tolerant rice breeding outcomes, fostering the commercialization of research findings and encouraging more research institutions and enterprises to engage in the research and development of salt-tolerant rice.
- Improving the Mechanism for Benefit Distribution and Cost Sharing in Salt-Tolerant Rice Breeding Collaborative Innovation. The development of salt-tolerant rice is a long-term, complex, and high-risk scientific endeavor. Fair and reasonable distribution of benefits and cost sharing is key to stimulating innovation and safeguarding the interests of all partners. The mechanism should take into account the unique aspects of salt-tolerant rice variety development, such as the lengthy breeding process and the unpredictability of outcomes; it should also be detailed to specific stages of salt-tolerant rice development, ensuring that the distribution of benefits and sharing of costs reflect the technical contributions and financial investments of all parties. Since enterprises and institutions are more sensitive to the long-term distribution of benefits than to controllable R&D costs, benefit distribution should account for the investments made during the entire R&D cycle; this includes human, material, and intellectual property investments. Cost-sharing mechanisms, on the other hand, should focus on the fair distribution of uncertainties and risks associated with the R&D process. For example, the government could establish a risk fund to provide a safety net for any additional costs, ensuring that any losses due to risks are reasonably compensated.
- Establishing and Strengthening the Regulatory Mechanism and Compliance System for Collaborative Innovation in Salt-Tolerant Rice Breeding. An effective regulatory mechanism is essential for the healthy development of salt-tolerant rice breeding R&D. Comprehensive regulatory rules and compliance guidelines should be formulated, specifically targeting the R&D characteristics of the salt-tolerant rice breeding field. The regulatory and compliance system should encompass the entire process, including R&D, review, approval, supervision, incentives, and penalties. A scientific monitoring and evaluation system should be established to quantify the costs of noncompliance, with appropriate levels and frequencies of oversight set to reduce regulatory costs and enhance efficiency. Furthermore, strict regulations should be imposed on the ownership and transfer of intellectual property rights. Regulatory bodies must possess professional judgment and execution abilities to promptly identify and address violations, such as the misuse of intellectual property or plagiarism. Penalties for noncompliance must be sufficiently severe to deter potential misconduct effectively.
- Constructing a Theoretical Framework and Practical Pathway for Incentive Mechanisms in Salt-Tolerant Rice Breeding Innovation. In the field of salt-tolerant rice breeding, the government should formulate a systematic set of financial subsidy policies and tax reduction strategies. Special funds should focus on the specific R&D stages and pain points of these crops, considering their uniqueness and long-term contribution to ecological improvement. Specifically, specialized funding should support critical technical stages in the collaborative innovation process, such as the collection, screening, and functional analysis of salt-tolerant rice germplasm. Tax incentives should include corporate income tax deductions for businesses engaged in salt-tolerant rice R&D activities, additional deductions for R&D expenses, and value-added tax benefits for key biotechnological materials and equipment. Incentive mechanisms should be specific to each stage of the development of salt-tolerant rice varieties to reduce the R&D costs of collaborative innovation and thereby attract and encourage more enterprises and research institutions to participate in this research and development field.
- Promoting the Construction of Information Sharing and Technology Exchange Platforms for Collaborative Innovation in Salt-Tolerant Rice Breeding. Information asymmetry is a significant factor affecting collaborative innovation, and interdisciplinary information sharing is crucial for innovation in salt-tolerant rice breeding. A dedicated information sharing platform should be built to cater to the specific information needs of salt-tolerant rice breeding, integrating data storage, processing, analysis, and communication. The platform should focus on the cutting-edge research and industry dynamics of salt-tolerant rice breeding, providing comprehensive information services that include genomic data, breeding techniques, cultivation management, and market demands. Efficient information management and intelligent analysis tools should offer scientific decision support for researchers, cultivators, and policymakers, promoting the deep integration of production, education, research, and application, and accelerating the transformation and industrial development of salt-tolerant rice research findings.
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
List of Abbreviations
E | Enterprises |
S | Research Institutions |
G | Government |
X | Willingness of Enterprises to Participate |
Y | Willingness of Research Institutions to Participate |
Z | Willingness of Government to Participate in Regulation |
R | Overall Benefits of Collaborative Innovation |
a | Coefficient of Benefit Distribution |
R1 | The Benefits Accrued to Enterprises from Negative Treatments |
R2 | The Benefits Accrued to Research Institutions from Negative Treatments |
R3 | Benefits Obtained from Government Participation |
C | Overall Costs of Collaborative Innovation |
t | Coefficient of Cost Sharing |
C3 | Costs of Government Supervision |
M | Government Support for Collaborative Innovation |
S1 | Gains from Corporate Betrayal |
S2 | Gains from Research Institutions’ Speculative Betrayal |
K1 | Government Penalties for Corporate Betrayal |
K2 | Government Penalties for Research Institutions’ Betrayal |
λ1 | The First Eigenvalue |
λ2 | The Second Eigenvalue |
λ3 | The Third Eigenvalue |
P1 | Ratio of Penalty Intensity to Speculative Benefits for the Salt-Tolerant Rice Breeding Enterprise (E) |
P2 | Ratio of Penalty Intensity to Speculative Benefits for the Scientific Research Institution (S) |
SCR | Subsidy–Cost Ratio (M/C), which measures the proportion of government subsidies in the total cost of collaborative innovation. An increase in SCR is indicative of more substantial financial support from the government, mitigating the cost burden for enterprises and institutions engaged in collaborative innovation. |
CBR | Cost–Benefit Ratio (C-M)/R, reflecting the ratio of the actual cost borne by enterprises and institutions after accounting for government subsidies to the total benefits derived from collaborative innovation. A lower CBR denotes a greater economic allure of collaborative innovation subsequent to subsidies. |
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Variables | Meaning of the Variables | Notes |
---|---|---|
X | Willingness of Enterprises to Participate | 0 ≤ X ≤ 1 |
Y | Willingness of Research Institutions to Participate | 0 ≤ Y ≤ 1 |
R | Overall Benefits of Collaborative Innovation | —— |
a | Coefficient of Benefit Distribution | 0 ≤ a ≤ 1 |
R1 | The Benefits of a Company’s Negative Treatment | —— |
R2 | Negative Treatment Benefits for Research Institutions | —— |
C | Overall Costs of Collaborative Innovation | C > 0 |
t | Coefficient of Cost Sharing | 0 ≤ t ≤ 1 |
S1 | Gains from Corporate Betrayal | —— |
S2 | Gains from Corporate Betrayal | —— |
Research Institutions | |||
---|---|---|---|
Participation | Betrayal | ||
Enterprises | Participation | R1 + aR − tC | R1 − tC |
R2 + (1 − a)R − (1 − t)C | R2 − S2 | ||
Betrayal | R1 + S1 | R1 | |
R2 − (1 − t)C | R2 |
Variables | Meaning of the Variables | Notes |
---|---|---|
X | Willingness of Enterprises to Participate | 0 ≤ X ≤ 1 |
Y | Willingness of Research Institutions to Participate | 0 ≤ Y≤ 1 |
Z | Willingness of Government to Participate in Regulation | 0 ≤ Z ≤ 1 |
R | Overall Benefits of Collaborative Innovation | —— |
a | Coefficient of Benefit Distribution | 0 ≤ a ≤ 1 |
R1 | The Benefits of a Company’s Negative Treatment | —— |
R2 | Negative Treatment Benefits for Research Institutions | —— |
R3 | Benefits Obtained from Government Participation | —— |
C | Overall Costs of Collaborative Innovation | C > 0 |
t | Coefficient of Cost Sharing | 0 ≤ t ≤ 1 |
C3 | Government Supervision Costs | C3 > 0 |
M | Government Support for Collaborative Innovation | M > 0 |
S1 | Gains from Corporate Betrayal | —— |
S2 | Gains from Research Institutions’ Speculative Betrayal | —— |
K1 | Government Penalties for Corporate Betrayal | K1 > 0 |
K2 | Government Penalties for Research Institutions’ Betrayal | K2 > 0 |
Research Institutions | |||
---|---|---|---|
Participation | Betrayal | ||
Government Regulation | Enterprises Participation | R1 + aR − t(C − M) R2 + (1 − a)R − (1 − t)(C − M) R3 − C3 | R1 − t(C − M) R2 + S2 − K2 R3 − C3 + K2 |
Enterprises Betrayal | R1 + S1 − K1 | R1 − K1 | |
R2 − (1 − t)(C − M) | R2 − K2 | ||
R3 − C3 + K1 | R3 − C3 + K1 + K2 | ||
Government Deregulation | Enterprises Participation | R1 + aR − tC | R1 − tC |
R2 + (1 − a)R − (1 − t)C | R2 + S2 | ||
0 | 0 | ||
Enterprises Betrayal | R1 + S1 | R1 | |
R2 − (1 − t)C | R2 | ||
0 | 0 |
Equilibrium Point | λ1 | λ2 | λ3 |
---|---|---|---|
E1(0,0,0) | −tC | (t − 1)C | K1 + K2 + R3 − C3 |
E2(1,0,0) | tC | (1 − a)R − (1 − t)C − S2 | K2 + R 3− C3 |
E3(0,1,0) | aR − S1 − tC | (1 − t)C | K1 + R3 − C3 |
E4(0,0,1) | K1 − t(C − M) | K2 − (1 − t)(C − M) | C3 − K1 − K2 − R3 |
E5(1,1,0) | S1 + tC − aR | (1 − t)C + S2 − (1 − a)R | R3 − C3 |
E6(1,0,1) | t(C − M) − K1 | (1 − a)R + K2 − S2 − (1 − t)(C − M) | C3 − K2 − R3 |
E7(0,1,1) | K1 + t(M − C) + aR − S1 | (1 − t)(C − M) − K2 | C3 − K1 − R3 |
E8(1,1,1) | t(C − M) + S1 – aR − K1 | S2 + (1 − t)(C − M) − (1 − a)R − K2 | C3 − R3 |
Equilibrium Point | Scenario1 | Scenario2 | ||||||
---|---|---|---|---|---|---|---|---|
λ1 | λ2 | λ3 | Stability | λ1 | λ2 | λ3 | Stability | |
E1(0,0,0) | − | − | + | NESS | − | − | + | NESS |
E2(1,0,0) | + | +,− | + | NESS | + | +,− | + | NESS |
E3(0,1,0) | +,− | + | − | NESS | +,− | + | − | NESS |
E4(0,0,1) | − | − | − | ESS | + | + | − | NESS |
E5(1,1,0) | +,− | +,− | + | NESS | +,− | +,− | + | NESS |
E6(1,0,1) | + | + | − | NESS | − | + | − | NESS |
E7(0,1,1) | + | + | − | NESS | + | − | − | NESS |
E8(1,1,1) | − | − | − | ESS | − | − | − | ESS |
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Chen, Y.; Sun, Z.; Wang, Y.; Ma, Y.; Yang, W. Seeds of Cross-Sector Collaboration: A Multi-Agent Evolutionary Game Theoretical Framework Illustrated by the Breeding of Salt-Tolerant Rice. Agriculture 2024, 14, 300. https://doi.org/10.3390/agriculture14020300
Chen Y, Sun Z, Wang Y, Ma Y, Yang W. Seeds of Cross-Sector Collaboration: A Multi-Agent Evolutionary Game Theoretical Framework Illustrated by the Breeding of Salt-Tolerant Rice. Agriculture. 2024; 14(2):300. https://doi.org/10.3390/agriculture14020300
Chicago/Turabian StyleChen, Yusheng, Zhaofa Sun, Yanmei Wang, Ye Ma, and Weili Yang. 2024. "Seeds of Cross-Sector Collaboration: A Multi-Agent Evolutionary Game Theoretical Framework Illustrated by the Breeding of Salt-Tolerant Rice" Agriculture 14, no. 2: 300. https://doi.org/10.3390/agriculture14020300
APA StyleChen, Y., Sun, Z., Wang, Y., Ma, Y., & Yang, W. (2024). Seeds of Cross-Sector Collaboration: A Multi-Agent Evolutionary Game Theoretical Framework Illustrated by the Breeding of Salt-Tolerant Rice. Agriculture, 14(2), 300. https://doi.org/10.3390/agriculture14020300