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A CTR prediction model based on session interest.

Qianqian Wang1, Fang'ai Liu2, Xiaohui Zhao2

  • 1Shandong Women's University, Jinan, China.

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Summary
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This study introduces a hierarchical model for click-through rate (CTR) prediction, focusing on user session interests. The proposed Session Interest Hierarchical Model (SIHM) improves CTR prediction accuracy by analyzing sequential user behaviors within and across sessions.

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Area of Science:

  • Computer Science
  • Artificial Intelligence
  • Machine Learning

Background:

  • Click-through rate (CTR) prediction is crucial for online advertising effectiveness.
  • Existing CTR models often overlook the session-based structure of user behavior, where intra-session actions are correlated but inter-session relevance is limited.

Purpose of the Study:

  • To propose a novel hierarchical model, the Session Interest Hierarchical Model (SIHM), for CTR prediction.
  • To effectively model user multiple session interests by considering both intra-session and inter-session dynamics.

Main Methods:

  • User sequential behavior is segmented into a session layer.
  • A self-attention network is utilized to derive session interest representations.
  • Bidirectional Long Short-Term Memory (BLSTM) network captures interactions between different session interests.
  • An attention-based LSTM (A-LSTM) aggregates session interests to predict target ad influence.

Main Results:

  • The proposed SIHM model demonstrates superior performance compared to existing CTR prediction models.
  • The hierarchical approach effectively captures complex user behavior patterns across multiple sessions.

Conclusions:

  • The SIHM model offers a significant advancement in CTR prediction by incorporating session-aware user interest modeling.
  • This approach enhances the accuracy and relevance of advertising targeting.