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Alleviating the data sparsity problem of recommender systems by clustering nodes in bipartite networks

机译:通过二分网络中的聚类节点来减轻推荐系统的数据稀疏问题

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摘要

Recommender systems help users to find information that fits their preferences in an overloaded search space. Collaborative filtering systems suffer from increasingly severe data sparsity problem because more and more products are sold in commercial websites, which largely constrains the performance of recommendation algorithms. User clustering has already been applied to recommendation on sparse data in the literature, but in a completely different way. In most existing works, user clustering is directly used to identify the similar users of the target user to whom we want to make recommendation. More specifically, the users who are clustered in the same group of the target user are considered as similar users. However, in this paper we use user clustering to reconstruct the user-item bipartite network such that the network density is significantly improved. The recommendation made on this dense network thus can achieve much higher accuracy than on the original sparse network. The experimental results on three benchmark data sets demonstrate that, when facing the problem of data sparsity, our proposed recommendation algorithm based on node clustering achieves a significant improvement in accuracy and coverage of recommendation. (C) 2020 Elsevier Ltd. All rights reserved.
机译:推荐器系统帮助用户查找适合其在超载搜索空间中首选项的信息。协作过滤系统遭受越来越严重的数据稀疏问题,因为越来越多的产品在商业网站上销售,这在很大程度上限制了推荐算法的性能。用户群集已经应用于文献中的稀疏数据的推荐,但以完全不同的方式。在大多数现有的工作中,用户群集直接用于标识我们想要提出建议的目标用户的类似用户。更具体地,在同一组目标用户中聚集的用户被视为类似用户。然而,在本文中,我们使用用户聚类来重建用户项二分网络,使得网络密度显着提高。因此,在这种密集的网络上提出的建议可以达到比原始稀疏网络更高的准确性。在三个基准数据集上的实验结果表明,在面对数据稀疏问题时,我们基于节点聚类的提议推荐算法实现了建议的准确性和覆盖率的显着提高。 (c)2020 elestvier有限公司保留所有权利。

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