个性化系统中用户学习的因果估计

Evan Munro, David Jones, Jennifer Brennan, Roland Nelet, V. Mirrokni, Jean Pouget-Abadie
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引用次数: 1

摘要

在在线平台上,治疗对观察结果的影响可能会随着时间的推移而变化,因为1)用户了解干预措施,2)系统个性化,如个性化推荐,会随着时间的推移而变化。我们在个性化系统中引入了用户行为的非参数因果模型。我们发现,为测量用户学习效果而设计的Cookie-Cookie-Day (CCD)实验在存在个性化时存在偏差。我们推出了新的实验设计,干预个性化系统,以产生必要的变化,分别识别通过用户学习和个性化介导的因果效应。做出参数假设可以在中期实验的基础上估计长期因果关系。在模拟中,我们证明了我们的新设计成功地恢复了兴趣的动态因果效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal Estimation of User Learning in Personalized Systems
In online platforms, the impact of a treatment on an observed outcome may change over time as 1) users learn about the intervention, and 2) the system personalization, such as individualized recommendations, change over time. We introduce a non-parametric causal model of user actions in a personalized system. We show that the Cookie-Cookie-Day (CCD) experiment, designed for the measurement of the user learning effect, is biased when there is personalization. We derive new experimental designs that intervene in the personalization system to generate the variation necessary to separately identify the causal effect mediated through user learning and personalization. Making parametric assumptions allows for the estimation of long-term causal effects based on medium-term experiments. In simulations, we show that our new designs successfully recover the dynamic causal effects of interest.
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