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Alleviating Cold-start Problem in CTR Prediction with A Variational Embedding Learning Framework

Xiaoxiao Xu, Chen Yang, Qian Yu, Z. Fang, Jiaxing Wang, Chaosheng Fan, Yang He, Changping Peng, Zhangang Lin, Jingping Shao

2022Proceedings of the ACM Web Conference 202227 citationsDOI

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 training process. Abundant empirical tests on benchmark datasets well demonstrate the advantages of our proposed VELF. Besides, extended experiments confirmed that our parameterized and regularized priors provide more generalization capability than traditional fixed priors.

Topics & Concepts

EmbeddingParameterized complexityPrior probabilityBenchmark (surveying)InferenceGeneralizationCold start (automotive)Computer scienceArtificial intelligenceProbabilistic logicMachine learningMathematical optimizationAlgorithmMathematicsBayesian probabilityEngineeringGeodesyMathematical analysisAerospace engineeringGeographyRecommender Systems and TechniquesTopic ModelingRadiomics and Machine Learning in Medical Imaging
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