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A Novel Entity Type Filtering Model for Related Entity Finding

机译:一种用于相关实体查找的新型实体类型过滤模型

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Entity is an important information carrier in Web pages. Searchers often want a ranked list of relevant entities directly rather a list of documents. So the research of related entity finding (REF) is a meaningful work. In this paper we investigate the most important task of REF: Entity Ranking. To address the issue of wrong entity type in entity ranking: some retrieved entities don't belong to the target entity type. We propose a novel entity type filtering model in which the target types are composed of the originally assigned type and the new type which is automatically acquired from the topic's narrative to filter wrong-type entities. For the query, we propose a method to process the original narrative to acquire a new query which is composed of noun and verb phrases. The results of experiments show our novel type filtering model gets a better result than the traditional filtering model at whatever precision and recall. Also the experiment shows the method that we acquire a new query is feasible.
机译:实体是网页中的重要信息载体。搜索者经常直接需要相关实体的排名列表,而不是文档列表。因此,相关实体发现(REF)的研究是一项有意义的工作。在本文中,我们研究了REF的最重要任务:实体排名。为了解决实体排名中实体类型错误的问题:一些检索到的实体不属于目标实体类型。我们提出了一种新颖的实体类型过滤模型,其中目标类型由最初分配的类型和新类型组成,新类型从主题的叙述中自动获取以过滤错误类型的实体。对于查询,我们提出了一种处理原始叙述的方法,以获取由名词和动词短语组成的新查询。实验结果表明,无论精度和召回率如何,我们的新型类型过滤模型均比传统过滤模型获得更好的结果。实验还表明,我们获得新查询的方法是可行的。

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