Points-of-Interest Recommendation Algorithms for a COVID-19 Restrictions Scenario in the Catering Industry

Gleb Glukhov, Ivan Derevitskii
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引用次数: 1

Abstract

The COVID-19 pandemic has affected many areas of day-to-day life, including tourism and restaurants. Many countries imposed restrictions on restaurants during the COVID19 period. Many restaurants closed, and others switched to delivery and take-out services. These restrictions affect both the catering system as a whole and smart catering systems, such as recommender systems and user experience aggregators. The main purpose of the article is to assess the impact of COVID-19 on these digital components in different countries, depending on the COVID-19 strategy. In particular, the author’s contribution is as follows: (1) assessing the stability of recommendation algorithms depending on the country’s COVID-19 elimination strategy, (2) identifying factors associated with changes in user behavior during the COVID-19 pandemic, (3) using these factors to improve the recommendation system, (4) answering the counter-question of whether the actual quarantine compliance can be determined using these data. As a result of the experiments, we have identified a change in the accuracy of recommendation algorithms both during and after the lockdown. We also obtained factors for changing user behavior and made assumptions about quarantine compliance in various countries using user experience data. The proposed contextual method has shown increased efficiency during the COVID-19 period.
餐饮业COVID-19限制场景的兴趣点推荐算法
COVID-19大流行影响了日常生活的许多领域,包括旅游和餐馆。在新冠疫情期间,许多国家对餐馆实施了限制。许多餐馆关门了,其他的则转向了外卖服务。这些限制既影响整个餐饮系统,也影响智能餐饮系统,如推荐系统和用户体验聚合器。本文的主要目的是根据COVID-19战略评估COVID-19对不同国家这些数字组件的影响。特别是,作者的贡献如下:(1)根据国家的COVID-19消除策略评估推荐算法的稳定性;(2)确定与COVID-19大流行期间用户行为变化相关的因素;(3)使用这些因素来改进推荐系统;(4)回答是否可以使用这些数据确定实际的检疫合规性的反问题。作为实验的结果,我们已经确定了在封锁期间和之后推荐算法的准确性的变化。我们还获得了改变用户行为的因素,并使用用户体验数据对各国的检疫合规性做出了假设。在COVID-19期间,拟议的上下文方法显示出更高的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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