New User Event Prediction Through the Lens of Causal Inference

Published: 22 Jan 2025, Last Modified: 11 Mar 2025AISTATS 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
TL;DR: We proposed a novel discrete event prediction framework utilizing causal inference for new users without needing to know their categories based on behavior.
Abstract: Modeling and analysis for event series generated by users of heterogeneous behavioral patterns are closely involved in our daily lives, including credit card fraud detection, online platform user recommendation, and social network analysis. The most commonly adopted approach to this task is to assign users to behavior-based categories and analyze each of them separately. However, this requires extensive data to fully understand the user behavior, presenting challenges in modeling newcomers without significant historical knowledge. In this work, we propose a novel discrete event prediction framework for new users with limited history, without needing to know the user's category. We treat the user event history as the "treatment" for future events and the user category as the key confounder. Thus, the prediction problem can be framed as counterfactual outcome estimation, where each event is re-weighted by its inverse propensity score. We demonstrate the improved performance of the proposed framework with a numerical simulation study and two real-world applications, including Netflix rating prediction and seller contact prediction for customer support at Amazon.
Submission Number: 1025
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