基于多标准项的协同过滤框架

Alper Bilge, C. Kaleli
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引用次数: 34

摘要

利用协同过滤方法为用户提供个性化推荐,以缓解不同领域的信息过载问题。传统的协同过滤方法在用户-物品矩阵上操作,其中每个用户根据单一标准显示她对物品的欣赏程度。然而,最近的研究表明,基于多标准的推荐系统可以提高推荐的准确性。由于基于多标准评级的协同过滤系统考虑用户在多个方面的项目,他们更成功地形成基于相关性的用户社区。虽然所提出的基于多准则用户的协同过滤算法的准确率结果非常有希望,但它们存在在线可扩展性问题。本文提出了一种基于项目的多准则协同过滤框架。为了确定合适的邻居选择方法,我们将传统的相关方法与多维距离度量进行了比较。此外,我们还研究了基于统计回归的预测的准确性。根据实际的数据实验,采用基于多准则项的协同过滤算法可以代替基于单准则评级的算法产生更准确的推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-criteria item-based collaborative filtering framework
Collaborative filtering methods are utilized to provide personalized recommendations for users in order to alleviate information overload problem in different domains. Traditional collaborative filtering methods operate on a user-item matrix in which each user reveal her admiration about an item based on a single criterion. However, recent studies indicate that recommender systems depending on multi-criteria can improve accuracy level of referrals. Since multi-criteria rating-based collaborative filtering systems consider users in multi-aspects of items, they are more successful at forming correlation-based user neighborhoods. Although, proposed multi-criteria user-based collaborative filtering algorithms' accuracy results are very promising, they have online scalability issues. In this paper, we propose an item-based multi-criteria collaborative filtering framework. In order to determine appropriate neighbor selection method, we compare traditional correlation approaches with multi-dimensional distance metrics. Also, we investigate accuracy performance of statistical regression-based predictions. According to real data-based experiments, it is possible to produce more accurate recommendations by utilizing multi-criteria item-based collaborative filtering algorithm instead of a single criterion rating-based algorithm.
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