BASM: A Bottom-up Adaptive Spatiotemporal Model for Online Food Ordering Service
Boya Du, Shaochuan Lin, Jiong Gao, Xiyu Ji, Mengya Wang, Taotao Zhou,, Hengxu He, Jia Jia, Ning Hu

TL;DR
BASM is a novel adaptive spatiotemporal model designed for online food ordering services, improving recommendation accuracy by dynamically capturing diverse spatiotemporal user preferences through specialized embedding, transformation, and bias layers.
Contribution
The paper introduces a bottom-up adaptive spatiotemporal model with new layers and metrics, enhancing the modeling of diverse spatiotemporal data in online food ordering systems.
Findings
Improved fitting capability over traditional models.
Effective in capturing diverse spatiotemporal preferences.
Validated through extensive offline and online experiments.
Abstract
Online Food Ordering Service (OFOS) is a popular location-based service that helps people to order what you want. Compared with traditional e-commerce recommendation systems, users' interests may be diverse under different spatiotemporal contexts, leading to various spatiotemporal data distribution, which limits the fitting capacity of the model. However, numerous current works simply mix all samples to train a set of model parameters, which makes it difficult to capture the diversity in different spatiotemporal contexts. Therefore, we address this challenge by proposing a Bottom-up Adaptive Spatiotemporal Model(BASM) to adaptively fit the spatiotemporal data distribution, which further improve the fitting capability of the model. Specifically, a spatiotemporal-aware embedding layer performs weight adaptation on field granularity in feature embedding, to achieve the purpose of…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Recommender Systems and Techniques
Methodstravel james
