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Information Retrieval and Graph Analysis Approaches for Book Recommendation

机译:书籍推荐信息检索和图形分析方法

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A combination of multiple information retrieval approaches is proposed for the purpose of book recommendation. In this paper, book recommendation is based on complex user's query. We used different theoretical retrieval models: probabilistic as InL2 (Divergence from Randomness model) and language model and tested their interpolated combination. Graph analysis algorithms such as PageRank have been successful in Web environments. We consider the application of this algorithm in a new retrieval approach to related document network comprised of social links. We called Directed Graph of Documents (DGD) a network constructed with documents and social information provided from each one of them. Specifically, this work tackles the problem of book recommendation in the context of INEX (Initiative for the Evaluation of XML retrieval) Social Book Search track. A series of reranking experiments demonstrate that combining retrieval models yields significant improvements in terms of standard ranked retrieval metrics. These results extend the applicability of link analysis algorithms to different environments.
机译:提出了多种信息检索方法的组合,用于书籍推荐。在本文中,书籍推荐基于复杂的用户查询。我们使用了不同的理论检索模型:概率为INL2(来自随机性模型的分歧)和语言模型并测试其内插组合。图形分析算法如PageRank在Web环境中成功。我们考虑该算法在包括社交链路组成的相关文档网络的新检索方法中的应用。我们称文档(DGD)的指示图(DGD)由每个人提供的文件和社交信息构成的网络。具体而言,这项工作在Inex的背景下解决了书籍推荐问题(XML检索评估的倡议)社会博书搜索轨道。一系列Reranking实验表明,组合检索模型在标准排名的检索度量方面产生了显着的改进。这些结果将链路分析算法的适用性扩展到不同环境。

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