Decisions of Knowledge Payment Product Supply Chain Considering Government Subsidies and Anti-Piracy Efforts: Based on China’s Knowledge Payment Market
Abstract
:1. Introduction
1.1. Research Background
1.2. Research Questions and Content
1.3. Research Methods
1.4. Contributions and Paper Organization
2. Literature Review
2.1. The Piracy of Information Products
2.2. The Effect of Government Subsidies in the Supply Chain
3. The Model
3.1. Model Description and Assumption
3.2. Demand Functions
3.2.1. The Demand Functions under No Anti-Piracy Efforts
3.2.2. The Demand Functions under Anti-Piracy Efforts
4. Model Construction and Solution
4.1. No Government Subsidies No Anti-Piracy Efforts (NN Mode)
4.2. There Are Only Anti-Piracy Efforts (NA Mode)
4.3. There Are Both Government Subsidies and Anti-Piracy Efforts (SA Mode)
5. Analysis and Comparison
5.1. The Impact of Anti-Piracy Efforts on Supply Chain without Government Subsidies
5.2. The Impact of Anti-Piracy Efforts on Supply Chain with Government Subsidies
6. Numerical Analysis
7. Conclusions, Managerial Implications and Limitations
7.1. Main Conclusions
- (1)
- Compared with no anti-piracy efforts, the anti-piracy effort behavior can always improve the quality level and unit quality signing bonus of a knowledge payment product. When government subsidies are not considered, the retail price of the knowledge product increases with the platform’s anti-piracy efforts but decreases when the government subsidies are higher than a certain threshold. In the practice of knowledge payments, price is often an important factor affecting consumers’ purchase decisions. The price of an authorized knowledge product is generally high, which makes many consumers search for pirated products. This phenomenon will lead to difficulties in selling authorized products. However, a reasonable government subsidy strategy can reduce prices and expand the size of the authorized product market. Government subsidies can become an application strategy for the future knowledge payment industry.
- (2)
- In terms of the impact of anti-piracy efforts on profits, for the knowledge payment platform, both the increases and decreases of its profit and the anti-piracy effort level are restricted by the anti-piracy effort cost. Furthermore, the platform’s profit increases first and then decreases with the level of anti-piracy efforts, that is, there is an optimal anti-piracy effort level to maximize its profit. However, the knowledge provider’s profit always increases with the anti-piracy effort level, and it will become the largest beneficiary of the platform’s anti-piracy effort behavior through the “free-riding” effect. In the knowledge payment market, the existence of the “free-riding” effect is beneficial for the knowledge provider, but the platform may lose its anti-piracy enthusiasm due to the pressure of the cost of anti-piracy efforts. Therefore, the knowledge provider can appropriately bear part of the cost and establish a good cooperative relationship with the platform.
- (3)
- Compared with the case of no government subsidies and no anti-piracy efforts, government subsidy behaviors can significantly increase the profit of the knowledge provider, but may not necessarily increase the profit of the platform. In fact, the platform’s profit only increases when government subsidies are higher than a certain threshold. This also shows that the platform is the direct object of government subsidies, and its profit will be more sensitive to the amount of subsidies. Therefore, the government should fully consider the situation of the knowledge payment platform itself when formulating the subsidy strategy, thereby optimizing the matching degree between the subsidy strategy and the platform. Moreover, there exists a certain threshold, and when government subsidies are lower than this threshold, the knowledge provider will obtain more profits. In contrast, if subsidies are higher than this threshold, the profit of the platform is higher than that of the knowledge provider. Interestingly, when the government provides high subsidies and the platform makes low anti-piracy efforts, it not only helps to improve the anti-piracy enthusiasm and profit of the platform, but also enables the knowledge provider to obtain additional economic and reputation benefits.
7.2. Managerial Implications
- (1)
- The anti-piracy efforts of a platform not only help improve the quality level of knowledge payment products, but also increase the profits of a knowledge provider and a platform to a certain extent. Therefore, the anti-piracy effort behaviors of a platform should be encouraged to be actively implemented. In addition, since the platform needs to bear the high anti-piracy effort costs when taking some anti-piracy measures, this may reduce its enthusiasm for anti-piracy. Therefore, the knowledge provider should also participate in anti-piracy activities, share the costs of anti-piracy efforts and share the additional benefits brought by anti-piracy efforts.
- (2)
- Government subsidies improve the quality level of a knowledge product and reduce the retail price of a product in a certain subsidy range. This is conducive to guiding different consumers’ purchase decisions on authorized and pirated knowledge products, and improving the profits of supply chain members. Therefore, a government’s subsidy strategy should be implemented in the long term and intensified. Moreover, in the knowledge payment product supply chain, both the knowledge provider and platform will make decisions to maximize their own profit based on the government subsidies, and the party directly subsidized by the government will be more sensitive. Therefore, it is necessary for the government to consider the difference in policy effects when implementing the subsidy strategy.
- (3)
- Government subsidies combined with anti-piracy efforts are conducive to combating piracy and promoting the sales of authorized knowledge products. Therefore, governments should coordinate with knowledge payment platforms to jointly maintain the healthy and orderly development of the knowledge payment industry. In this regard, firstly, the government can select more influential knowledge payment platforms (such as Zhihu Live, Himalaya FM, Dedao, etc.) as objects for subsidies and appeal to the platforms to carry out anti-piracy activities (such as the legal publicity of piracy). Then, the government needs to adjust the subsidy amount according to the sales of the authorized knowledge product in a timely manner, and eventually implement and promote subsidy policies on a large scale for platforms that carry out anti-piracy efforts. In addition, in order to increase consumers’ willingness to pay for authorized knowledge products, the government can provide a certain subsidy to consumers who purchase authorized knowledge products.
7.3. Limitations and Future Research
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
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Research Methods | Detailed Description |
---|---|
Literature analysis method | We collect the related literature on the piracy of information products and the effect of government subsidies in the supply chain and analyze and summarize current research to reflect our work’s innovation. |
Game theory | We construct Stackelberg game models in three modes, i.e., no government subsidies no anti-piracy efforts (NN mode), only anti-piracy efforts (NA mode) and both government subsidies and anti-piracy efforts (SA mode), and solve the optimal decisions and profits of knowledge provider and knowledge payment platform in different models. |
Comparative analysis | We take the NN mode as a benchmark and let the NA mode and SA mode be compared with it, respectively. And we also analyze the impact of government subsidies and anti-piracy efforts on the optimal decisions and profits of supply chain members under different models. |
Numerical simulation method | We assign values to the parameters involved in our work based on the parameter settings of the relevant literature and use Maple 2019 simulation software for numerical analysis to verify the relevant conclusions proposed in this paper. |
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Liu, L.; Luo, C. Decisions of Knowledge Payment Product Supply Chain Considering Government Subsidies and Anti-Piracy Efforts: Based on China’s Knowledge Payment Market. Systems 2023, 11, 440. https://doi.org/10.3390/systems11090440
Liu L, Luo C. Decisions of Knowledge Payment Product Supply Chain Considering Government Subsidies and Anti-Piracy Efforts: Based on China’s Knowledge Payment Market. Systems. 2023; 11(9):440. https://doi.org/10.3390/systems11090440
Chicago/Turabian StyleLiu, Lili, and Changxin Luo. 2023. "Decisions of Knowledge Payment Product Supply Chain Considering Government Subsidies and Anti-Piracy Efforts: Based on China’s Knowledge Payment Market" Systems 11, no. 9: 440. https://doi.org/10.3390/systems11090440
APA StyleLiu, L., & Luo, C. (2023). Decisions of Knowledge Payment Product Supply Chain Considering Government Subsidies and Anti-Piracy Efforts: Based on China’s Knowledge Payment Market. Systems, 11(9), 440. https://doi.org/10.3390/systems11090440