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Towards Automated Neural Interaction Discovery for Click-Through Rate Prediction

Qingquan Song, Dehua Cheng, Hanning Zhou, Jiyan Yang, Yuandong Tian, Xia Hu

202063 citationsDOIOpen Access PDF

Abstract

Click-Through Rate (CTR) prediction is one of the most important machine learning tasks in recommender systems, driving personalized experience for billions of consumers. Neural architecture search (NAS), as an emerging field, has demonstrated its capabilities in discovering powerful neural network architectures, which motivates us to explore its potential for CTR predictions. Due to 1) diverse unstructured feature interactions, 2) heterogeneous feature space, and 3) high data volume and intrinsic data randomness, it is challenging to construct, search, and compare different architectures effectively for recommendation models. To address these challenges, we propose an automated interaction architecture discovering framework for CTR prediction named AutoCTR. Via modularizing simple yet representative interactions as virtual building blocks and wiring them into a space of direct acyclic graphs, AutoCTR performs evolutionary architecture exploration with learning-to-rank guidance at the architecture level and achieves acceleration using low-fidelity model. Empirical analysis demonstrates the effectiveness of AutoCTR on different datasets comparing to human-crafted architectures. The discovered architecture also enjoys generalizability and transferability among different datasets.

Topics & Concepts

Computer scienceArchitectureGeneralizability theoryArtificial intelligenceMachine learningFeature (linguistics)Artificial neural networkTransferabilityData miningRecommender systemDeep neural networksVolume (thermodynamics)Domain (mathematical analysis)ExploitSimple (philosophy)Feature vectorKey (lock)Deep learningNetwork architectureSystems architecturePersonalizationBig dataFeature extractionVisualizationCollaborative filteringInterpretabilityRecommender Systems and TechniquesVisual Attention and Saliency DetectionImage and Video Quality Assessment