Restaurant Recommendations Based on Multi-Criteria Recommendation Algorithm

Qusai Y. Shambour, Mosleh M. Abualhaj, Ahmad Adel Abu Shareha
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Abstract

Recent years have witnessed a rapid explosion of online information sources about restaurants, and the selection of an appropriate restaurant has become a tedious and time-consuming task. A number of online platforms allow users to share their experiences by rating restaurants based on more than one criterion, such as food, service, and value. For online users who do not have enough information about suitable restaurants, ratings can be decisive factors when choosing a restaurant. Thus, personalized systems such as recommender systems are needed to infer the preferences of each user and then satisfy those preferences. Specifically, multi-criteria recommender systems can utilize the multi-criteria ratings of users to learn their preferences and suggest the most suitable restaurants for them to explore. Accordingly, this paper proposes an effective multi-criteria recommender algorithm for personalized restaurant recommendations. The proposed Hybrid User-Item based Multi-Criteria Collaborative Filtering algorithm exploits users’ and items’ implicit similarities to eliminate the sparseness of rating information. The experimental results based on three real-word datasets demonstrated the validity of the proposed algorithm concerning prediction accuracy, ranking performance, and prediction coverage, specifically, when dealing with extremely sparse datasets, in relation to other baseline CF-based recommendation algorithms. 
基于多标准推荐算法的餐厅推荐
近年来,网上关于餐馆的信息来源迅速激增,选择一家合适的餐馆已经成为一项繁琐而耗时的任务。许多在线平台允许用户根据多种标准(如食物、服务和价值)对餐厅进行评级,从而分享他们的体验。对于没有足够信息了解合适餐厅的在线用户来说,评分可能是选择餐厅的决定性因素。因此,需要像推荐系统这样的个性化系统来推断每个用户的偏好,然后满足这些偏好。具体来说,多标准推荐系统可以利用用户的多标准评分来了解他们的偏好,并建议最适合他们探索的餐厅。据此,本文提出了一种有效的多准则推荐算法,用于个性化餐厅推荐。提出了一种基于用户-物品的混合多准则协同过滤算法,利用用户和物品的隐式相似性来消除评价信息的稀疏性。基于三个真实世界数据集的实验结果表明,与其他基于基线cf的推荐算法相比,该算法在预测精度、排名性能和预测覆盖率方面是有效的,特别是在处理极其稀疏的数据集时。
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