Collaborative Recurrent Autoencoder: Recommend while Learning to Fill in the Blanks
–Neural Information Processing Systems
Hybrid methods that utilize both content and rating information are commonly used in many recommender systems. However, most of them use either handcrafted features or the bag-of-words representation as a surrogate for the content information but they are neither effective nor natural enough. To address this problem, we develop a collaborative recurrent autoencoder (CRAE) which is a denoising recurrent autoencoder (DRAE) that models the generation of content sequences in the collaborative filtering (CF) setting.
Neural Information Processing Systems
Mar-17-2026, 06:33:17 GMT
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