IRAug 16, 2017

Fast Matrix Factorization for Online Recommendation with Implicit Feedback

arXiv:1708.05024v11064 citationsHas Code
Originality Incremental advance
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This work addresses critical limitations in recommendation systems for online platforms, offering incremental improvements in handling dynamic data and non-uniform missing feedback.

The paper tackles the inefficiency and unrealistic uniform-weight assumptions in matrix factorization for implicit feedback by proposing a popularity-based weighting for missing data and an efficient learning algorithm, achieving consistent performance improvements over state-of-the-art methods in offline and online experiments.

This paper contributes improvements on both the effectiveness and efficiency of Matrix Factorization (MF) methods for implicit feedback. We highlight two critical issues of existing works. First, due to the large space of unobserved feedback, most existing works resort to assign a uniform weight to the missing data to reduce computational complexity. However, such a uniform assumption is invalid in real-world settings. Second, most methods are also designed in an offline setting and fail to keep up with the dynamic nature of online data. We address the above two issues in learning MF models from implicit feedback. We first propose to weight the missing data based on item popularity, which is more effective and flexible than the uniform-weight assumption. However, such a non-uniform weighting poses efficiency challenge in learning the model. To address this, we specifically design a new learning algorithm based on the element-wise Alternating Least Squares (eALS) technique, for efficiently optimizing a MF model with variably-weighted missing data. We exploit this efficiency to then seamlessly devise an incremental update strategy that instantly refreshes a MF model given new feedback. Through comprehensive experiments on two public datasets in both offline and online protocols, we show that our eALS method consistently outperforms state-of-the-art implicit MF methods. Our implementation is available at https://github.com/hexiangnan/sigir16-eals.

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