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Wiser: A semantic approach for expert finding in academia based on entity linking

机译:Wiser:一种基于实体链接的学术界专家发现的语义方法

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We present WISER, a new semantic search engine for expert finding in academia. Our system is unsupervised and it jointly combines classical language modeling techniques, based on text evidences, with the Wikipedia Knowledge Graph, via entity linking.WISER indexes each academic author through a novel profiling technique which models her expertise with a small, labeled and weighted graph drawn from Wikipedia. Nodes in this graph are the Wikipedia entities mentioned in the author's publications, whereas the weighted edges express the semantic relatedness among these entities computed via textual and graph-based relatedness functions. Every node is also labeled with a relevance score which models the pertinence of the corresponding entity to author's expertise, and is computed by means of a proper random-walk calculation over that graph; and with a latent vector representation which is learned via entity and other kinds of structural embeddings derived from Wikipedia.At query time, experts are retrieved by combining classic document-centric approaches, which exploit the occurrences of query terms in the author's documents, with a novel set of profile-centric scoring strategies, which compute the semantic relatedness between the author's expertise and the query topic via the above graph-based profiles.The effectiveness of our system is established over a large-scale experimental test on a standard dataset for this task. We show that WISER achieves better performance than all the other competitors, thus proving the effectiveness of modeling author's profile via our "semantic" graph of entities. Finally, we comment on the use of WISER for indexing and profiling the whole research community within the University of Pisa, and its application to technology transfer in our University. (C) 2019 Elsevier Ltd. All rights reserved.
机译:我们介绍WISER,这是一种用于学术界专家查找的新语义搜索引擎。我们的系统不受监督,它通过实体链接将基于文本证据的经典语言建模技术与Wikipedia知识图谱结合在一起。WISER通过新颖的剖析技术对每位学术作者进行索引,该技术利用一个小的,带标签的加权图对她的专业知识进行建模摘自维基百科。该图中的节点是作者出版物中提到的Wikipedia实体,而加权边表示通过文本和基于图的相关性函数计算的这些实体之间的语义相关性。每个节点还标有相关性得分,该得分对相应实体与作者专业知识的相关性进行建模,并通过对该图进行适当的随机游动计算来计算;在查询时,专家通过结合经典的以文档为中心的方法来检索专家,这些方法利用了作者文档中查询词的出现,并通过一个潜在的矢量表示来学习。一套新颖的以档案为中心的评分策略,可通过上述基于图的档案来计算作者专长和查询主题之间的语义相关性。我们的系统的有效性是通过在标准数据集上进行的大规模实验测试建立的任务。我们证明WISER的性能优于所有其他竞争者,从而通过我们的实体“语义”图证明了对作者个人资料进行建模的有效性。最后,我们评论了WISER在比萨大学内部对整个研究社区的索引编制和概况介绍,以及在大学中技术转让中的应用。 (C)2019 Elsevier Ltd.保留所有权利。

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