Causality-based CTR Prediction using Graph Neural Networks
January 30, 2023 Β· Declared Dead Β· π Information Processing & Management
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Authors
Panyu Zhai, Yanwu Yang, Chunjie Zhang
arXiv ID
2301.12762
Category
cs.IR: Information Retrieval
Cross-listed
cs.AI,
cs.LG
Citations
39
Venue
Information Processing & Management
Last Checked
4 months ago
Abstract
As a prevalent problem in online advertising, CTR prediction has attracted plentiful attention from both academia and industry. Recent studies have been reported to establish CTR prediction models in the graph neural networks (GNNs) framework. However, most of GNNs-based models handle feature interactions in a complete graph, while ignoring causal relationships among features, which results in a huge drop in the performance on out-of-distribution data. This paper is dedicated to developing a causality-based CTR prediction model in the GNNs framework (Causal-GNN) integrating representations of feature graph, user graph and ad graph in the context of online advertising. In our model, a structured representation learning method (GraphFwFM) is designed to capture high-order representations on feature graph based on causal discovery among field features in gated graph neural networks (GGNNs), and GraphSAGE is employed to obtain graph representations of users and ads. Experiments conducted on three public datasets demonstrate the superiority of Causal-GNN in AUC and Logloss and the effectiveness of GraphFwFM in capturing high-order representations on causal feature graph.
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