Probing Digital Footprints and Reaching for Inherent Preferences: A Cause-Disentanglement Approach to Personalized Recommendations
计算机科学
数据科学
互联网隐私
作者
Cong Wang,Yansong Shi,Xunhua Guo,Guoqing Chen
出处
期刊:Information Systems Research [Institute for Operations Research and the Management Sciences] 日期:2024-09-16被引量:1
标识
DOI:10.1287/isre.2023.0181
摘要
This study introduces DISC (Disentangling consumers’ Inherent preferences, item Salience effect, and Conformity effect), a novel personalized recommendation approach that leverages disentangled representation learning and causal graph modeling to provide interpretable and effective recommendations. By analyzing consumer behavior across various shopping stages, DISC identifies and differentiates the inherent factors that influence purchasing decisions. DISC cuts through biases to pinpoint consumers’ inherent preferences driving purchases, empowering platforms with the ability to deliver tailored recommendations that resonate deeply with users. Through extensive experiments on real-world data sets, DISC significantly outperforms existing methods, demonstrating its superiority in both in-sample prediction and generating recommendations that align with consumers’ true interests. With its robust performance and theoretical underpinnings, DISC holds promising implications for e-commerce platforms seeking to enhance recommendation accuracy, interpretability, and user engagement.