扩展一个基于标签的协同推荐系统

Noemi Mauro, L. Ardissono
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引用次数: 2

摘要

协同过滤主要用于个性化商品推荐,但其性能受到评价数据稀疏性的影响。为了解决这个问题,最近开发了一些系统,通过从评分矩阵中提取潜在因素,或利用社交网络中用户之间建立的信任关系来改进推荐。在这项工作中,我们感兴趣的是评估是否可以使用评分和社会关系以外的其他偏好信息来源来提高推荐性能。具体来说,我们旨在测试信息搜索日志中频繁共同出现的兴趣的集成是否可以提高用户对用户协同过滤(U2UCF)中的推荐性能。为此,我们提出了扩展的基于类别的协同过滤(ECCF)推荐,它通过分析人们在搜索会话中经常一起搜索的数据类别,丰富了基于类别的用户概要。我们使用一个大型评级数据集和一个广泛使用的搜索引擎的日志来测试我们的模型,以提取兴趣的共现性。实验表明,ECCF在准确率、MRR、推荐多样性和用户覆盖率等方面都优于U2UCF和基于类别的协同推荐。此外,该方法在推荐列表的准确性和多样性方面都优于SVD++矩阵分解算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extending a Tag-based Collaborative Recommender with Co-occurring Information Interests
Collaborative Filtering is largely applied to personalize item recommendation but its performance is affected by the sparsity of rating data. In order to address this issue, recent systems have been developed to improve recommendation by extracting latent factors from the rating matrices, or by exploiting trust relations established among users in social networks. In this work, we are interested in evaluating whether other sources of preference information than ratings and social ties can be used to improve recommendation performance. Specifically, we aim at testing whether the integration of frequently co-occurring interests in information search logs can improve recommendation performance in User-to-User Collaborative Filtering (U2UCF). For this purpose, we propose the Extended Category-based Collaborative Filtering (ECCF) recommender, which enriches category-based user profiles derived from the analysis of rating behavior with data categories that are frequently searched together by people in search sessions. We test our model using a big rating dataset and a log of a largely used search engine to extract the co-occurrence of interests. The experiments show that ECCF outperforms U2UCF and category-based collaborative recommendation in accuracy, MRR, diversity of recommendations and user coverage. Moreover, it outperforms the SVD++ Matrix Factorization algorithm in accuracy and diversity of recommendation lists.
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