协同推荐系统参数的影响:公共集基数和相似度度量

Mohammad Yahya H. Al-Shamri
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引用次数: 8

摘要

推荐系统之所以被广泛使用,是因为它们能够帮助网络用户以个性化的方式上网。例如,协作推荐系统是一个强大的Web个性化工具,可以根据从邻居那里收集的意见向给定用户推荐许多有用的项目。其中,相似度度量是影响协同推荐系统性能的重要因素。然而,相似性度量本身在很大程度上取决于用户配置文件之间的重叠。以前的大多数系统都是在预定义数量的公共项目和邻居上进行测试的。但是,如果我们改变这些参数,系统性能可能会发生变化。本文的主要目的是研究协同推荐系统在许多相似度量、公共集基数、评级均值组和邻域集大小下的性能。为此,我们提出了一个改进版本的平均差权相似度量和一个新的评价度量,称为用户覆盖率,以衡量推荐系统帮助用户的能力。实验结果表明,改进的平均差权相似度量优于其他相似度量,并且协同推荐系统的性能随其参数的变化而变化;因此,必须事先确定系统参数。
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Effect of Collaborative Recommender System Parameters: Common Set Cardinality and the Similarity Measure
Recommender systems are widespread due to their ability to help Web users surf the Internet in a personalized way. For example, collaborative recommender system is a powerful Web personalization tool for suggesting many useful items to a given user based on opinions collected from his neighbors. Among many, similarity measure is an important factor affecting the performance of the collaborative recommender system. However, the similarity measure itself largely depends on the overlapping between the user profiles. Most of the previous systems are tested on a predefined number of common items and neighbors. However, the system performance may vary if we changed these parameters. The main aim of this paper is to examine the performance of the collaborative recommender system under many similarity measures, common set cardinalities, rating mean groups, and neighborhood set sizes. For this purpose, we propose a modified version for the mean difference weight similarity measure and a new evaluation metric called users’ coverage for measuring the recommender system ability for helping users. The experimental results show that the modified mean difference weight similarity measure outperforms other similarity measures and the collaborative recommender system performance varies by varying its parameters; hence we must specify the system parameters in advance.
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