一种用于协同过滤的双聚类算法的性能评价——比较分析

P. Castro, F. O. França, Hamilton M. Ferreira, F. V. Zuben
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引用次数: 33

摘要

协同过滤(CF)是一种基于具有相似兴趣的其他用户的意见为用户执行自动建议的方法。大多数CF算法没有考虑到用户与物品之间存在的对偶性,只考虑用户之间的相似度或只考虑物品之间的相似度。作者在之前的工作中提出了一种生物启发的CF方法,即BIC-aiNet,能够同时对数据矩阵的行和列进行聚类。文献报道了该方法的有用性和性能。现在,作者与BIC-aiNet和文献中发现的其他技术进行了更严格的对比实验,并评估了算法在不同规模的几个数据集上的可扩展性。结果表明,我们的建议能够为用户提供有用的建议,优于其他CF方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the Performance of a Biclustering Algorithm Applied to Collaborative Filtering - A Comparative Analysis
Collaborative filtering (CF) is a method to perform automated suggestions for a user based on the opinion of other users with similar interest. Most of the CF algorithms do not take into account the existent duality between users and items, considering only the similarities between users or only the similarities between items. The authors have proposed in a previous work a bio-inspired methodology for CF, namely BIC-aiNet, capable of clustering rows and columns of a data matrix simultaneously. The usefulness and performance of the methodology are reported in the literature. Now, the authors carry out more rigorous comparative experiments with BIC-aiNet and other techniques found in the literature, as well as evaluate the scalability of the algorithm in several datasets of different sizes. The results indicate that our proposal is able to provide useful recommendations for the users, outperforming other methodologies for CF.
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