An evolutionary approach for learning the weight of relations in linked data

J. Vidal, M. Lama, Estefanía Otero-García, Alberto Bugarín-Diz
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引用次数: 3

Abstract

In this paper we present an approach for improving a specific class of semantic annotation, that relates a term of the document with a (sub)tree of the ontology, instead of linking a term with a single concept of the ontology. An important part of this class of annotation is filtering the relevant (sub)nodes and relations, because the returned graph should only contain relevant information, that is, nodes that are truly related with the topics of the document. In addition, we consider that the relevance of nodes vary depending on if the node is a branch or a leaf, that is, if the node has links to other nodes or it is a text-based description. This paper focuses on the relevance of branch nodes, which is calculated from the relevance of its links, since leaf nodes relevance is usually estimated by similarity metrics. Specifically, our approach incises in learning (through a genetic algorithm) and assigning the most appropriate weights to these links in order to reduce the precision/recall curve of the annotation process. The results show that our solution is viable and outperforms the state of the art approaches.
一种学习关联数据中关系权重的进化方法
在本文中,我们提出了一种改进特定语义注释类的方法,该方法将文档的术语与本体的(子)树联系起来,而不是将术语与本体的单个概念联系起来。这类注释的一个重要部分是过滤相关(子)节点和关系,因为返回的图应该只包含相关信息,即与文档主题真正相关的节点。此外,我们认为节点的相关性取决于节点是分支还是叶子,也就是说,如果节点与其他节点有链接,或者它是基于文本的描述。由于叶节点的相关性通常是通过相似性度量来估计的,因此本文主要关注分支节点的相关性,该相关性是通过其链接的相关性来计算的。具体来说,我们的方法是通过学习(通过遗传算法)并为这些链接分配最合适的权重,以降低注释过程的精度/召回曲线。结果表明,我们的解决方案是可行的,并且优于目前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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