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KP-Agent: Keyword Pruning in Sponsored Search Advertising via LLM-Powered Contextual Bandits

International Conference on Information and Knowledge Management (CIKM), 2025
Hou-Wan Long
Yicheng Song
Zidong Wang
Tianshu Sun
Main:4 Pages
4 Figures
Bibliography:1 Pages
1 Tables
Abstract

Sponsored search advertising (SSA) requires advertisers to constantly adjust keyword strategies. While bid adjustment and keyword generation are well-studied, keyword pruning-refining keyword sets to enhance campaign performance-remains under-explored. This paper addresses critical inefficiencies in current practices as evidenced by a dataset containing 0.5 million SSA records from a pharmaceutical advertiser on search engine Meituan, China's largest delivery platform. We propose KP-Agent, an LLM agentic system with domain tool set and a memory module. By modeling keyword pruning within a contextual bandit framework, KP-Agent generates code snippets to refine keyword sets through reinforcement learning. Experiments show KP-Agent improves cumulative profit by up to 49.28% over baselines.

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