2021
DOI: 10.48550/arxiv.2105.12937
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Towards a Better Understanding of Linear Models for Recommendation

Ruoming Jin,
Dong Li,
Jing Gao
et al.

Abstract: Recently, linear regression models, such as EASE and SLIM, have shown to often produce rather competitive results against more sophisticated deep learning models. On the other side, the (weighted) matrix factorization approaches have been popular choices for recommendation in the past and widely adopted in the industry. In this work, we aim to theoretically understand the relationship between these two approaches, which are the cornerstones of modelbased recommendations. Through the derivation and analysis of … Show more

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