2022
DOI: 10.48550/arxiv.2201.10980
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Alleviating Cold-start Problem in CTR Prediction with A Variational Embedding Learning Framework

Abstract: We propose a general Variational Embedding Learning Framework (VELF) for alleviating the severe cold-start problem in CTR prediction. VELF addresses the cold start problem via alleviating over-fits caused by data-sparsity in two ways: learning probabilistic embedding, and incorporating trainable and regularized priors which utilize the rich side information of cold start users and advertisements (Ads). The two techniques are naturally integrated into a variational inference framework, forming an end-to-end tra… Show more

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