Evolutionary Game Analysis of Data Resale Governance in Data Trading

Yong Sun, Yafeng Zhang, Jinxiao Li, Sihui Zhang
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引用次数: 1

Abstract

Data trading is important for optimizing the allocation of data elements. However, data can be easily copied, disseminated, or resold, leading to disorderly development in the data trading market, and raising the issue of data governance. Data trading involves various participants, while existing research lacks an understanding of participant interactions and strategy adoption, as well as determination of optimal strategies for the participants. To address these gaps and provide insights for the governance of data trading platforms, this paper proposes an evolutionary game model for the governance of data trading involving three parties: data suppliers, demanders, and trading platforms. Our findings reveal that data trading platforms choosing to govern, data suppliers choosing to innovate positively, and data demanders choosing not to resell can be achieved under certain conditions. We also find that an increase in the price of data trading or the number of transactions can weaken the effectiveness of platform governance and make data trading more difficult to govern. Additionally, the incentives for data innovation provided by the trading platform can significantly promote data suppliers to innovate data positively. However, when these incentives are too high, the platform may weaken its level of governance or even move towards non-governance. Increasing penalties for data resale weakens data demanders’ motivation to resell data, and a higher probability of data resale being reported lowers their motivation to do so. By examining the role of different participants in data trading, the model proposes ways to improve the efficiency and robustness of the data market while better protecting the interests of data traders.
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数据交易中数据转售治理的演化博弈分析
数据交易对于优化数据元素的配置具有重要意义。然而,数据容易被复制、传播或转售,导致数据交易市场无序发展,引发数据治理问题。数据交易涉及到不同的参与者,而现有的研究缺乏对参与者互动和策略采用的理解,以及对参与者最优策略的确定。为了解决这些差距,并为数据交易平台的治理提供见解,本文提出了一个涉及三方的数据交易治理演化博弈模型:数据供应方、需求方和交易平台。研究发现,在一定条件下,数据交易平台选择治理、数据供应商选择积极创新、数据需求方选择不倒卖是可以实现的。我们还发现,数据交易价格或交易数量的增加会削弱平台治理的有效性,使数据交易更难治理。此外,交易平台提供的数据创新激励可以显著促进数据提供者积极创新数据。然而,当这些激励过高时,平台可能会削弱其治理水平,甚至走向非治理。加大对数据转售的处罚力度削弱了数据需求者转售数据的动机,而数据转售被报道的可能性越高,他们这样做的动机就越低。该模型通过分析不同参与者在数据交易中的作用,提出了提高数据市场效率和鲁棒性的方法,同时更好地保护数据交易者的利益。
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