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arxiv:2602.01865

GRAB: An LLM-Inspired Sequence-First Click-Through Rate Prediction Modeling Paradigm

Published on Feb 3
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Abstract

Generative Ranking for Ads at Baidu (GRAB) enhances click-through rate prediction by integrating a causal action-aware multi-channel attention mechanism into a large language model-inspired framework, achieving superior performance and scalable expressive power.

AI-generated summary

Traditional Deep Learning Recommendation Models (DLRMs) face increasing bottlenecks in performance and efficiency, often struggling with generalization and long-sequence modeling. Inspired by the scaling success of Large Language Models (LLMs), we propose Generative Ranking for Ads at Baidu (GRAB), an end-to-end generative framework for Click-Through Rate (CTR) prediction. GRAB integrates a novel Causal Action-aware Multi-channel Attention (CamA) mechanism to effectively capture temporal dynamics and specific action signals within user behavior sequences. Full-scale online deployment demonstrates that GRAB significantly outperforms established DLRMs, delivering a 3.05% increase in revenue and a 3.49% rise in CTR. Furthermore, the model demonstrates desirable scaling behavior: its expressive power shows a monotonic and approximately linear improvement as longer interaction sequences are utilized.

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