Towards Amortized Ranking-Critical Training for Collaborative Filtering

June 10, 2019 ยท Entered Twilight ยท ๐Ÿ› arXiv.org

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Authors Sam Lobel, Chunyuan Li, Jianfeng Gao, Lawrence Carin arXiv ID 1906.04281 Category cs.LG: Machine Learning Cross-listed cs.IR, stat.ML Citations 18 Venue arXiv.org Repository https://github.com/samlobel/RaCT_CF โญ 36 Last Checked 2 months ago
Abstract
Collaborative filtering is widely used in modern recommender systems. Recent research shows that variational autoencoders (VAEs) yield state-of-the-art performance by integrating flexible representations from deep neural networks into latent variable models, mitigating limitations of traditional linear factor models. VAEs are typically trained by maximizing the likelihood (MLE) of users interacting with ground-truth items. While simple and often effective, MLE-based training does not directly maximize the recommendation-quality metrics one typically cares about, such as top-N ranking. In this paper we investigate new methods for training collaborative filtering models based on actor-critic reinforcement learning, to directly optimize the non-differentiable quality metrics of interest. Specifically, we train a critic network to approximate ranking-based metrics, and then update the actor network (represented here by a VAE) to directly optimize against the learned metrics. In contrast to traditional learning-to-rank methods that require to re-run the optimization procedure for new lists, our critic-based method amortizes the scoring process with a neural network, and can directly provide the (approximate) ranking scores for new lists. Empirically, we show that the proposed methods outperform several state-of-the-art baselines, including recently-proposed deep learning approaches, on three large-scale real-world datasets. The code to reproduce the experimental results and figure plots is on Github: https://github.com/samlobel/RaCT_CF
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