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Towards Understanding the Overfitting Phenomenon of Deep Click-Through Rate Models

Zhaoyu Zhang, Xiang-Rong Sheng, Yujing Zhang, Biye Jiang, Shuguang Han, Hongbo Deng, Bo Zheng

2022Proceedings of the 31st ACM International Conference on Information & Knowledge Management35 citationsDOI

Abstract

Deep learning techniques have been applied widely in industrial recommendation systems. However, far less attention has been paid on the overfitting problem of models in recommendation systems, which, on the contrary, is recognized as a critical issue for deep neural networks. In the context of Click-Through Rate (CTR) prediction, we observe an interesting one-epoch overfitting problem: the model performance exhibits a dramatic degradation at the beginning of the second epoch. Such a phenomenon has been witnessed widely in real-world applications of CTR models. Thereby, the best performance is usually achieved by training with only one epoch. To understand the underlying factors behind the one-epoch phenomenon, we conduct extensive experiments on the production data set collected from the display advertising system of Alibaba. The results show that the model structure, the optimization algorithm with a fast convergence rate, and the feature sparsity are closely related to the one-epoch phenomenon. We also provide a likely hypothesis for explaining such a phenomenon and conduct a set of proof-of-concept experiments. We hope this work can shed light on the future research on training more epochs for better performance.

Topics & Concepts

OverfittingComputer sciencePhenomenonEpoch (astronomy)Artificial intelligenceSet (abstract data type)Context (archaeology)Deep learningMachine learningConvergence (economics)Artificial neural networkEconomic growthPhysicsComputer visionBiologyEconomicsProgramming languagePaleontologyQuantum mechanicsStarsRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchMachine Learning and Data Classification