多聚类在协同推荐系统中的应用

U. Kuzelewska, Arkadiusz Kurylowicz
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引用次数: 3

摘要

本文讨论了聚类加速推荐系统的方法,并介绍了多聚类算法在基于协同过滤的推荐系统中的应用。通过与聚类技术的比较,解释了使用多聚类的动机,并给出了实验结果。多聚类在文献中有不同的定义,但常见的问题是它对一个数据集有多个视图。不同的视图可能代表同一数据的不同方面,使最合适的视图适应当前的问题。在推荐系统领域,它可以作为一种精确建模被推荐对象邻域的工具。本文给出了实验结果,证明了多聚类在邻域确定方面优于传统聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Clustering Applied to Collaborative Recommender Systems
This article discusses clustering approach to recommender systems acceleration and presents application of multi-clustering algorithms in the recommender systems based on collaborative filtering. It is explained the motivation for multi-clustering usage in comparison to clustering techniques, as well as results of experiments. Multi-clustering is variously defined in literature, however the common issue is its multiple views of one dataset. Different views may represent distinct aspects of the same data, adapting the most appropriate one to the current problem. In recommender systems domain it can be applied as a tool for precise modelling neighbourhood of object the recommendations are generated to. This article presents results of experiments demonstrating multi-clustering advantage over traditional clustering in neighbourhood determination.
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