有害信号:机器学习时代的卡特尔禁令与寡头垄断理论

IF 1.3 4区 社会学 Q3 ECONOMICS Journal of Competition Law & Economics Pub Date : 2019-10-28 DOI:10.1093/joclec/nhz011
Stefan Thomas
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引用次数: 4

摘要

区分非法勾结和合法寡头垄断行为的传统法律方法是依据与竞争对手如何互动的手段和形式有关的标准,例如“实际合作”的要素,或依据反竞争意图的认定。这些标准最终涉及自然人的内部领域及其在交际行为中的散发。因此,一些作者得出结论,《欧盟运作条约》第101条或《美国谢尔曼法案》第1条的卡特尔禁令,如果是通过依赖机器学习能力的自主行动计算机实现的,就无法捕捉到共谋。相反,这里建议将共谋定义为平行的信息信号,以实现超竞争平衡,并使用消费者福利标准来区分非法共谋和合法寡头垄断行为。这种做法并不等同于禁止暗中串通的想法。相反,它是为了在现有的寡头垄断环境中检查通信的单一元素,即“信息信号”,以确定其对消费者造成伤害的倾向。这种方法可以帮助弥补目前与算法定价激增相关的潜在监管缺口。
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HARMFUL SIGNALS: CARTEL PROHIBITION AND OLIGOPOLY THEORY IN THE AGE OF MACHINE LEARNING
The traditional legal approach for distinguishing between illicit collusion and legitimate oligopoly conduct is to rely on criteria that relate to the means and form of how rivals interact, such as elements of “practical cooperation”, or on the finding of an anticompetitive intent. These criteria ultimately refer to the inner sphere of natural persons and its emanations in communicative acts. Some authors therefore conclude that the cartel prohibition of Article 101 Treaty on the Functioning of the European Union (TFEU) or Section 1 of the U.S. Sherman Act is unable to capture collusion if it is achieved by autonomously acting computers relying on machine learning capabilities. It is instead suggested here to define collusion as parallel informational signals, which achieve a supracompetitive equilibrium, and to use the consumer welfare standard as a proxy for distinguishing between illicit collusion and legitimate oligopoly conduct. This approach is not tantamount to the idea of prohibiting tacit collusion as such. Rather, it is to check singular elements of communication, that is, “informational signals”, within an existing oligopolistic setting for their propensity to create consumer harm. This approach can help to close potential regulatory gaps currently associated with the surge of algorithmic pricing.
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来源期刊
CiteScore
2.20
自引率
26.70%
发文量
16
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