We introduce the notion of performative power, which measures the ability of a firm operating an algorithmic system, such as a digital content recommendation platform, to cause change in a population of participants. We relate performative power to the economic study of competition in digital economies. Traditional economic concepts struggle with identifying anti-competitive patterns in digital platforms not least due to the complexity of market definition. In contrast, performative power is a causal notion that is identifiable with minimal knowledge of the market, its internals, participants, products, or prices. Low performative power implies that a firm can do no better than to optimize their objective on current data. In contrast, firms of high performative power stand to benefit from steering the population towards more profitable behavior. We confirm in a simple theoretical model that monopolies maximize performative power. A firm's ability to personalize increases performative power, while competition and outside options decrease performative power. On the empirical side, we propose an observational causal design to identify performative power from discontinuities in how digital platforms display content. This allows to repurpose causal effects from various studies about digital platforms as lower bounds on performative power. Finally, we speculate about the role that performative power might play in competition policy and antitrust enforcement in digital marketplaces.
翻译:我们引入了性能力量的概念,它衡量一个经营算法系统(如数字内容建议平台)的公司的能力,从而改变参与者群体。我们把性能力量与数字经济中竞争的经济研究联系起来。传统经济概念与确定数字平台中反竞争模式的斗争,这并非因为市场定义的复杂性。相反,性能力量是一个因果概念,它能以对市场、内部、参与者、产品或价格的微小了解来识别。低性能力量意味着公司在优化其当前数据目标方面不会做得更好。相比之下,高性能力量企业从引导民众走向更有利可图的行为中受益。我们在一个简单的理论模型中确认垄断使性力量最大化。一个公司将增强性能能力的个人化能力,而竞争和外部选择会降低性能力量。在经验方面,我们提出一种观察性因果关系设计,以辨别在数字平台显示内容时的不连贯性能。这样就可以重新定位关于数字平台的各种研究的因果效应,作为反性能动力的较低界限。最后,我们用一个简单的理论模型来判断在执法政策中可能发挥竞争力的作用。