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Open-Set Living Need Prediction with Large Language Models

Main:2 Pages
9 Figures
5 Tables
Appendix:17 Pages
Abstract

Living needs are the needs people generate in their daily lives for survival and well-being. On life service platforms like Meituan, user purchases are driven by living needs, making accurate living need predictions crucial for personalized service recommendations. Traditional approaches treat this prediction as a closed-set classification problem, severely limiting their ability to capture the diversity and complexity of living needs. In this work, we redefine living need prediction as an open-set classification problem and propose PIGEON, a novel system leveraging large language models (LLMs) for unrestricted need prediction. PIGEON first employs a behavior-aware record retriever to help LLMs understand user preferences, then incorporates Maslow's hierarchy of needs to align predictions with human living needs. For evaluation and application, we design a recall module based on a fine-tuned text embedding model that links flexible need descriptions to appropriate life services. Extensive experiments on real-world datasets demonstrate that PIGEON significantly outperforms closed-set approaches on need-based life service recall by an average of 19.37%. Human evaluation validates the reasonableness and specificity of our predictions. Additionally, we employ instruction tuning to enable smaller LLMs to achieve competitive performance, supporting practical deployment.

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@article{lan2025_2506.02713,
  title={ Open-Set Living Need Prediction with Large Language Models },
  author={ Xiaochong Lan and Jie Feng and Yizhou Sun and Chen Gao and Jiahuan Lei and Xinlei Shi and Hengliang Luo and Yong Li },
  journal={arXiv preprint arXiv:2506.02713},
  year={ 2025 }
}
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