计算机科学
个性化
推论
内生性
因果推理
利用
聚类分析
非参数统计
不完美的
计量经济学
经济
机器学习
人工智能
计算机安全
万维网
哲学
语言学
作者
Yang Wang,Xueming Luo,Zhijie Lin
摘要
Customers of two‐sided platforms may succumb to choice overload due to the frequently overwhelming assortment in such markets. We investigate the effect of assortment size on consumers' purchase probability using a unique click‐stream dataset from a large peer‐to‐peer meal delivery platform. To resolve the key endogeneity challenge that assortment size may be larger in areas where consumers experience greater utility from purchase, we introduce a novel causal inference strategy that exploits a common but imperfect geographic targeting tool employed by the platform: limiting kitchens to a set of fixed delivery radii. We argue and show through simulation exercises that true assortment size effects on purchase probability can be estimated when we employ clustering algorithms to recover and account for neighborhoods that may be targeted by suppliers. Applying our causal inference strategy to the home‐cooked delivery setting, we find that purchase rate effects of assortment size are rapidly diminishing. In fact, our findings suggest that up to 18% of active users experience choice overload. These effects persist despite accounting for potential pricing, assortment variety, and personalization confounds and are robust to nonparametric specifications and accounting for unobserved heterogeneity in assortment effects. We further document the novel moderating role of new‐to‐user and off‐platform options on assortment size effects.
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