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The Impact of Linked Documents and Graph Analysis on Information Retrieval Methods for Book Recommendation

机译:链接文档和图形分析对图书推荐信息检索方法的影响

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A new combination of multiple Information Retrieval approaches are proposed for book recommendation based on complex users' queries. We used different theoretical retrieval models: probabilistic as InL2 (Divergence From Randomness model) and language models and tested their interpolated combination. We considered the application of a graph based 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 CLEF Labs precisely Social Book Search track. We established a specific strategy for queries searching after separating query set into two genres Analogue and Non-Analogue after analyzing users' needs. Series of reranking experiments demonstrate that combining retrieval models and exploiting linked documents for retrieving yield significant improvements in terms of standard ranked retrieval metrics. These results extend the applicability of link analysis algorithms to different environments.
机译:根据复杂的用户查询,提出了多个信息检索方法的新组合。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,并测试了它们的内插组合。我们认为基于曲线图的算法在新的检索方法中的应用与社交链路组成的相关文档网络。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。具体来说,这项工作在统计界面的背景下解决了书籍推荐的问题,精确的社交博书搜索轨道。在分析用户需求之后,我们建立了一个特定的查询搜索查询探索,并在分析用户需求后。 Reranking实验系列表明,结合检索模型和利用链接的文档来检索标准排名检索度量的显着改进。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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