Abstract
Many techniques to utilize side information of users and/or items as inputs to recommenders to improve recommendation, especially on cold-start items/users, have been developed over the years. In this work, we test the approach of utilizing item side information, specifically categorical attributes, in the output of recommendation models either through multi-task learning or hierarchical classification. We first demonstrate the efficacy of these approaches for both matrix factorization and neural networks with a medium-size real-word data set. We then show that they improve a neural-network based production model in an industrial-scale recommender system. We demonstrate the robustness of the hierarchical classification approach by introducing noise in building the hierarchy. Lastly, we investigate the generalizability of hierarchical classification on a simulated dataset by building two user models in which we can fully control the generative process of user-item interactions.
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CITATION STYLE
Zhao, Q., Chen, J., Chen, M., Jain, S., Beutel, A., Belletti, F., & Chi, E. H. (2018). Categorical-attributes-based item classification for recommender systems. In RecSys 2018 - 12th ACM Conference on Recommender Systems (pp. 320–328). Association for Computing Machinery, Inc. https://doi.org/10.1145/3240323.3240367
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