餐厅推荐系统中过滤技术的比较

Nanthaphat Koetphrom, Panachai Charusangvittaya, D. Sutivong
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引用次数: 7

摘要

本文研究了餐厅推荐系统的关键分析,即基于顾客和餐厅特征预测餐厅满意度。随着食品工业的发展,提供了更多种类的餐馆,顾客通常很难找到一家适合或满足他们的餐馆。本文旨在基于三种方法预测餐厅满意度评级:基于内容的过滤,协同过滤和混合过滤。对于基于内容的过滤,本文提出使用回归方法根据顾客和餐厅特征创建预测模型。对于协同过滤,我们提出的模型采用聚类分析、相似检验和加权和相结合的方法来分析影响满意度评级的因素。聚类分析有助于减少协同过滤中稀疏性的影响。随后,提出了混合滤波,将上述两种技术的结果结合起来产生最终评级。我们的研究结果表明,混合过滤优于使用回归模型的基于内容的过滤和使用基于聚类的技术的协同过滤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Filtering Techniques in Restaurant Recommendation System
This paper studies the key analytics of the restaurant recommendation system, namely predicting restaurant satisfaction rating based on customer and restaurant characteristics. As food industry grows and offers more variety of restaurants, customers generally have difficulty discovering a restaurant that suits or satisfies them. This paper aims to predict restaurant satisfaction rating based on three methodologies: content-based filtering, collaborative filtering, and hybrid filtering. For content-based filtering, this paper proposes using regression to create a prediction model from customer and restaurant characteristics. For collaborative filtering, our proposed model employs a combination of cluster analysis, similarity test, and weighted sum in order to analyze factors that influence the satisfaction rating. Cluster analysis helps to reduce the impact of sparsity in collaborative filtering. Subsequently, hybrid filtering is proposed to combine the results from the two techniques above to generate the final rating. Our results have shown that hybrid filtering outperforms content-based filtering using regression model and collaborative filtering using cluster-based technique.
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