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Finding Similar Artists from the Web of Data: A PageRank Based Semantic Similarity Metric

机译:从数据网络中寻找相似的艺术家:基于PageRank的语义相似性度量

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Since its commencement, the Linked Open Data cloud has been quickly become popular and offers rich data sources for quite a number of applications. The potential for application development using Linked Data is immense and needs intensive research efforts. Until now, the issue of how to efficiently exploit the data provided by the new platform remains an open research question. In this paper we present our investigation of utilizing a well-known encyclopedic dataset, DBpedia for finding similar musical artists. Our approach exploits a PageRank based semantic similarity metric for computing similarity in RDF graph. Prom the data provided by DBpedia, the similarity results help find out similar artists for a given artist. By doing this, we are also be able to examine the suitability of DBpedia for this type of recommendation tasks. Experimental results show that the outcomes are encouraging.
机译:自成立以来,链接开放数据云迅速流行,并为许多应用程序提供了丰富的数据源。使用链接数据进行应用程序开发的潜力是巨大的,需要大量的研究工作。到目前为止,如何有效利用新平台提供的数据仍然是一个悬而未决的研究问题。在本文中,我们介绍了利用著名的百科全书数据库DBpedia寻找相似的音乐艺术家的调查。我们的方法利用基于PageRank的语义相似度度量来计算RDF图中的相似度。验证DBpedia提供的数据,相似性结果可帮助查找给定艺术家的相似艺术家。通过这样做,我们还可以检查DBpedia对于此类推荐任务的适用性。实验结果表明结果令人鼓舞。

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