在线美食推荐服务的时空特征探索

Shaochuan Lin, Jiayan Pei, Taotao Zhou, Hengxu He, Jia Jia, Ning Hu
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引用次数: 0

摘要

在线食品推荐服务(OFRS)具有显著的时空特征和能够方便、及时地满足用户需求的优势。对其时空特性的探索已经开始了各种各样的研究,但对OFRS的时空特征还没有进行全面深入的分析。因此,本文基于三个问题对OFRS进行研究:时空特征如何发挥作用;为什么不能用自注意来模拟OFRS的时空序列;以及如何结合时空特征来提高OFRS的效率。首先,通过实验分析,系统提取OFRS的时空特征,识别最有价值的特征,设计有效的组合方法;其次,我们对OFRS的时空序列进行了详细的分析,揭示了OFRS中自注意的不足,提出了一种更优化的时空序列替代自注意的方法。此外,为了进一步提高OFRS的效率和性能,我们还设计了动态上下文适应模型。通过两大数据集的离线实验和一周的在线实验,验证了我们模型的可行性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the Spatiotemporal Features of Online Food Recommendation Service
Online Food Recommendation Service (OFRS) has remarkable spatiotemporal characteristics and the advantage of being able to conveniently satisfy users' needs in a timely manner. There have been a variety of studies that have begun to explore its spatiotemporal properties, but a comprehensive and in-depth analysis of the OFRS spatiotemporal features is yet to be conducted. Therefore, this paper studies the OFRS based on three questions: how spatiotemporal features play a role; why self-attention cannot be used to model the spatiotemporal sequences of OFRS; and how to combine spatiotemporal features to improve the efficiency of OFRS. Firstly, through experimental analysis, we systemically extracted the spatiotemporal features of OFRS, identified the most valuable features and designed an effective combination method. Secondly, we conducted a detailed analysis of the spatiotemporal sequences, which revealed the shortcomings of self-attention in OFRS, and proposed a more optimized spatiotemporal sequence method for replacing self-attention. In addition, we also designed a Dynamic Context Adaptation Model to further improve the efficiency and performance of OFRS. Through the offline experiments on two large datasets and online experiments for a week, the feasibility and superiority of our model were proven.
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