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Enhancing recommender systems by incorporating social information

机译:通过整合社交信息来增强推荐系统

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Although recommendation techniques have achieved distinct developments over the decades, the data sparseness problem of the involved user-item matrix still seriously influences the recommendation quality. Most of the existing techniques for recommender systems cannot easily deal with users who have very few ratings. How to combine the increasing amount of different types of social information such as user generated content and social relationships to enhance the prediction precision of the recommender systems remains a huge challenge. In this paper, based on a factor graph model, we formalize the problem in a semi-supervised probabilistic model, which can incorporate different user information, user relationships, and user-item ratings for learning to predict the unknown ratings. We evaluate the method in two different genres of datasets, Douban and Last.fm. Experiments indicate that our method outperforms several state-of-the-art recommendation algorithms. Furthermore, a distributed learning algorithm is developed to scale up the approach to real large datasets.
机译:尽管推荐技术在过去的几十年中取得了明显的发展,但是所涉及的用户项目矩阵的数据稀疏性问题仍然严重影响推荐质量。推荐系统的大多数现有技术都无法轻松应对评级很少的用户。如何结合越来越多的不同类型的社会信息(例如用户生成的内容和社会关系)以提高推荐系统的预测精度仍然是一个巨大的挑战。在本文中,基于因子图模型,我们将问题形式化为半监督概率模型,该模型可以合并不同的用户信息,用户关系和用户项目等级,以学习预测未知等级。我们以两种不同类型的数据集Doudou和Last.fm评估该方法。实验表明,我们的方法优于几种最新的推荐算法。此外,开发了分布式学习算法以将方法扩展到实际的大型数据集。

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