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Book Recommendation Based on Joint Multi-relational Model

机译:基于联合多关系模型的书推荐

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摘要

Recommender system, which is powerful to deal with the issue of information overload, has been widely investigated by many researchers recently. However, one of the biggest challenges needs to face is the cold start problem. To address this problem, the data source from social network is incorporated into our recommender system in this paper. In a social network, users who tightly connected imply some group-specific interests. Consequently, we may exploit social network information to resolve the cold start problem and improve prediction performance. The main motivation of this paper is to exploit social relationships and other extra data sources to adjust the latent factors learning over the target matrix, namely book rating matrix and a group of auxiliary matrices, typically, the social relationship matrix. Our recommender system is based on coupled matrix factorization in major, and utilizes the random walk and genetic algorithm to learn some special parameters. The data for experiments is crawled from one of the Chinese biggest reading-sharing website, Douban. Finally, the results have proved that our book recommender system incorporating auxiliary data sources has much better performance than traditional methods.
机译:许多研究人员最近被许多研究人员广泛调查了强大的要处理信息过载问题的推荐系统。然而,最大的挑战之一需要面临寒冷的开始问题。要解决此问题,来自社交网络的数据源纳入了本文的推荐系统。在一个社交网络中,密切联系的用户意味着一些特定的群体兴趣。因此,我们可以利用社交网络信息来解决冷启动问题并提高预测性能。本文的主要动机是利用社会关系和其他额外数据来源来调整目标矩阵上的潜在因子,即书籍评级矩阵和一组辅助矩阵,通常是社会关系矩阵。我们的推荐系统基于主要的耦合矩阵分解,并利用随机步行和遗传算法来学习一些特殊参数。实验数据逐渐蔓延,其中一个最大的阅读分享网站Douban。最后,结果证明,我们的书籍推荐制度包含辅助数据源的性能比传统方法更好。

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