Learning Disentangled Representations for Recommendation
Ma, Jianxin, Zhou, Chang, Cui, Peng, Yang, Hongxia, Zhu, Wenwu
–Neural Information Processing Systems
User behavior data in recommender systems are driven by the complex interactions of many latent factors behind the users' decision making processes. The factors are highly entangled, and may range from high-level ones that govern user intentions, to low-level ones that characterize a user's preference when executing an intention. Learning representations that uncover and disentangle these latent factors can bring enhanced robustness, interpretability, and controllability. However, learning such disentangled representations from user behavior is challenging, and remains largely neglected by the existing literature. In this paper, we present the MACRo-mIcro Disentangled Variational Auto-Encoder (MacridVAE) for learning disentangled representations from user behavior.
Neural Information Processing Systems
Mar-18-2020, 22:48:02 GMT
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