CETN: Contrast-enhanced Through Network for CTR Prediction

15 Dec 2023  ·  Honghao Li, Lei Sang, Yi Zhang, Xuyun Zhang, Yiwen Zhang ·

Click-through rate (CTR) Prediction is a crucial task in personalized information retrievals, such as industrial recommender systems, online advertising, and web search. Most existing CTR Prediction models utilize explicit feature interactions to overcome the performance bottleneck of implicit feature interactions. Hence, deep CTR models based on parallel structures (e.g., DCN, FinalMLP, xDeepFM) have been proposed to obtain joint information from different semantic spaces. However, these parallel subcomponents lack effective supervisory signals, making it challenging to efficiently capture valuable multi-views feature interaction information in different semantic spaces. To address this issue, we propose a simple yet effective novel CTR model: Contrast-enhanced Through Network for CTR (CETN), so as to ensure the diversity and homogeneity of feature interaction information. Specifically, CETN employs product-based feature interactions and the augmentation (perturbation) concept from contrastive learning to segment different semantic spaces, each with distinct activation functions. This improves diversity in the feature interaction information captured by the model. Additionally, we introduce self-supervised signals and through connection within each semantic space to ensure the homogeneity of the captured feature interaction information. The experiments and research conducted on four real datasets demonstrate that our model consistently outperforms twenty baseline models in terms of AUC and Logloss.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Click-Through Rate Prediction Avazu CETN AUC 0.7962 # 4
Click-Through Rate Prediction Criteo CETN AUC 0.8148 # 5
Log Loss 0.4373 # 2

Methods