NEON: Living Needs Prediction System in Meituan
Xiaochong Lan, Chen Gao, Shiqi Wen, Xiuqi Chen, Yingge Che, Han Zhang,, Huazhou Wei, Hengliang Luo, Yong Li

TL;DR
The paper introduces NEON, a system for predicting users' living needs on service platforms by modeling spatiotemporal factors and behavioral data, improving personalized recommendations.
Contribution
NEON is a novel multi-phase system that combines feature mining, fusion, and multi-task prediction to accurately forecast living needs in complex spatiotemporal contexts.
Findings
Effective prediction of living needs demonstrated in offline evaluations.
Deployment of NEON improves downstream application performance.
Large-scale online A/B testing confirms system effectiveness.
Abstract
Living needs refer to the various needs in human's daily lives for survival and well-being, including food, housing, entertainment, etc. On life service platforms that connect users to service providers, such as Meituan, the problem of living needs prediction is fundamental as it helps understand users and boost various downstream applications such as personalized recommendation. However, the problem has not been well explored and is faced with two critical challenges. First, the needs are naturally connected to specific locations and times, suffering from complex impacts from the spatiotemporal context. Second, there is a significant gap between users' actual living needs and their historical records on the platform. To address these two challenges, we design a system of living NEeds predictiON named NEON, consisting of three phases: feature mining, feature fusion, and multi-task…
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Taxonomy
Methodstravel james
