Neural Autoregressive Collaborative Filtering for Implicit Feedback

June 24, 2016 Β· Declared Dead Β· πŸ› DLRS@RecSys

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Authors Yin Zheng, Cailiang Liu, Bangsheng Tang, Hanning Zhou arXiv ID 1606.07674 Category cs.IR: Information Retrieval Citations 64 Venue DLRS@RecSys Last Checked 3 months ago
Abstract
This paper proposes implicit CF-NADE, a neural autoregressive model for collaborative filtering tasks using implicit feedback ( e.g. click, watch, browse behaviors). We first convert a users implicit feedback into a like vector and a confidence vector, and then model the probability of the like vector, weighted by the confidence vector. The training objective of implicit CF-NADE is to maximize a weighted negative log-likelihood. We test the performance of implicit CF-NADE on a dataset collected from a popular digital TV streaming service. More specifically, in the experiments, we describe how to convert watch counts into implicit relative rating, and feed into implicit CF-NADE. Then we compare the performance of implicit CF-NADE model with the popular implicit matrix factorization approach. Experimental results show that implicit CF-NADE significantly outperforms the baseline.
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