Research on Price Discrimination Behavior Governance of E-Commerce Platforms—A Bayesian Game Model Based on the Right to Data Portability
Abstract
:1. Introduction
- (1)
- What is the payoff matrix in the game model after introducing the right to data portability?
- (2)
- What Bayesian Nash equilibrium can be formed by RC and E-CP, and what are the conditions for the formation?
- (3)
- How do the right to data portability, the type of customer and the parameters in the model affect the strategy of E-CP?
2. Literature Review
- (1)
- Most studies consider the government to be the dominant player in regulating e-commerce platforms, but they neglect the fact that, relying only on the government, the effectiveness of regulation is limited. In order to make RC become the leader to restrain the price discrimination behavior of E-CP, this paper introduces the right to data portability, and analyzes the role of the right to data portability. It also provides some new ideas for analyzing the price discrimination behavior of E-CP.
- (2)
- This paper considers the type of RC and analyzes how the type of RC affects the strategy of E-CP through a Bayesian game model.
3. A General Game Model of Price Discrimination with the Introduction of a Right to Data Portability
3.1. Strategy Description
3.2. Definition of the Parameters
3.3. Constructing the Payoff Function Matrix
3.4. Solving the Nash Equilibrium of the General Game Model
3.4.1. Solving the Pure-Strategy Nash Equilibrium
3.4.2. Solving the Mix-Strategy Nash Equilibrium
4. The Price Discrimination Bayesian Game Model with the Introduction of Right to Data Portability
4.1. Constructing the Bayesian Game Model
4.2. Solving the Bayesian Nash Equilibrium of the Model
5. Simulation
5.1. Simulation of the General Game Model
5.2. Simulation of the Bayesian Game Model
5.2.1. Simulation of the Bayesian Game Model When RC Choose the First Strategy
5.2.2. Simulation of Bayesian Game Model When RC Choose the Second Strategy
6. Discussion
6.1. The Results of Model Analysis
- (1)
- For RC, they will choose not to exercise the right to data portability when the reuse value coefficient of personal data is too low. The payoff will also be higher if the detection rate increases. The reason for this is that when the detection rate is higher, E-CP will shift from a price discrimination strategy to a uniform pricing strategy. When the reuse value coefficient of personal data is low and the detection rate is low, RC will randomly choose a strategy. At this point the payoff of RC increases with increase in the reuse value coefficient of personal data and decreases with increase in the detection rate. When the reuse value factor of personal data is low and the detection rate is high, RC will choose not to exercise their right to data portability. The explanation is that E-CP will select uniform pricing at this point. When the reuse value coefficient of personal data is high, RC will choose to exercise the right to data portability. At this point the regular consumer’s payoff will increase as the reuse value coefficient of personal data increases.
- (2)
- For E-CP, when the reuse value coefficient of personal data is too low, E-CP will choose a price discrimination strategy if the detection rate is too low, or uniform pricing if the detection rate is high. When the reuse value coefficient of personal data is low and the detection rate is low, E-CP will randomly choose a strategy. When the reuse value coefficient of personal data is low and the detection rate is high, E-CP will choose a uniform pricing strategy. When the reuse value coefficient of personal data is high, the payoff of E-CP is constant. The reason is that, at this point, E-CP will select a uniform pricing strategy and RC will choose to exercise the right to data portability.
- (1)
- For RC, when they choose the first strategy, the expected payoff of RC will increase as the proportion of high price-sensitive RC among all RC increases. In addition, if the regular consumer’s detection rate is higher, the regular consumer’s expected payoff will be higher. The reason is that E-CP will select a uniform pricing strategy when the detection rate is higher. If RC choose the second strategy, the expected payoff will be higher if the detection rate is higher.
- (2)
- For E-CP, when RC select the first strategy, if the proportion of high price-sensitive RC among all RC increases, E-CP will select uniform pricing. When RC choose the second strategy, if the regular consumer’s detection rate is higher, the E-CP will select uniform pricing.
6.2. Practical Implications
- (1)
- If the reuse value coefficient of personal data is high, then it is possible for regular customers to be well-served on a new platform as well. Therefore, e-commerce platforms may lose regular customers if they choose the price discrimination strategy. In order to retain regular customers, e-commerce platforms will choose a uniform pricing strategy, which indicates that the right to data portability is effective in curbing the price discrimination of e-commerce platforms.
- (2)
- If the reuse value coefficient of personal data is low and the detection rate of regular consumers is high, then e-commerce platforms will choose a uniform pricing strategy, which indicates that the detection rate of regular customers is also a key factor in curbing the price discrimination behaviour of e-commerce platforms.
- (3)
- If the proportion of high-sensitivity consumers among regular customers is high, then e-commerce platforms will be prompted to choose a uniform pricing strategy, which indicates that consumers can curb e-commerce platforms’ differential pricing behaviours by increasing their sensitivity to price change.
6.3. Limitations and Future Research
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Regular Customer | |||
---|---|---|---|
E-commerce platform | |||
Conditions | Pure-Strategy Nash Equilibrium |
---|---|
(price discrimination, Non-exercise of data portability rights) | |
(uniform pricing, Non-exercise of data portability rights) | |
(uniform pricing, Exercise of data portability rights) |
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Yu, J.; Jia, W. Research on Price Discrimination Behavior Governance of E-Commerce Platforms—A Bayesian Game Model Based on the Right to Data Portability. Axioms 2023, 12, 919. https://doi.org/10.3390/axioms12100919
Yu J, Jia W. Research on Price Discrimination Behavior Governance of E-Commerce Platforms—A Bayesian Game Model Based on the Right to Data Portability. Axioms. 2023; 12(10):919. https://doi.org/10.3390/axioms12100919
Chicago/Turabian StyleYu, Jing, and Wensheng Jia. 2023. "Research on Price Discrimination Behavior Governance of E-Commerce Platforms—A Bayesian Game Model Based on the Right to Data Portability" Axioms 12, no. 10: 919. https://doi.org/10.3390/axioms12100919
APA StyleYu, J., & Jia, W. (2023). Research on Price Discrimination Behavior Governance of E-Commerce Platforms—A Bayesian Game Model Based on the Right to Data Portability. Axioms, 12(10), 919. https://doi.org/10.3390/axioms12100919