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Hierarchical Target Type Identification for Entity-oriented Queries

机译:面向实体的查询的分层目标类型识别

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A significant portion of information needs in web search target entities. These may come in different forms or flavours, ranging from short keyword queries to more verbose requests, expressed in natural language. We address the task of automatically annotating queries with target types from an ontology. The identified types can subsequently be used, e.g., for creating semantically more informed query and retrieval models, filtering results, or directing the requests to specific verticals. Our study makes the following contributions. First, we formalise the task of hierarchical target type identification, argue that it is best viewed as a ranking problem, and propose multiple evaluation metrics. Second, we develop a purpose-built test collection by hand-annotating over 300 queries, from various recent entity search benchmarking campaigns, with target types from the DBpedia ontology. Finally, we introduce and examine two baseline models, inspired by federated search techniques. We show that these methods perform surprisingly well when target types are limited to a flat list of top level categories; finding the right level of granularity in the hierarchy, however, is particularly challenging and requires further investigation.
机译:网络搜索目标实体中很大一部分的信息需求。这些可能以不同的形式或形式出现,从简短的关键字查询到更冗长的请求(以自然语言表示)。我们解决了使用本体中的目标类型自动注释查询的任务。所标识的类型随后可以用于例如创建语义上更明智的查询和检索模型,过滤结果或将请求定向到特定行业。我们的研究做出了以下贡献。首先,我们将层次化目标类型识别的任务形式化,认为最好将其视为排名问题,并提出多个评估指标。其次,我们通过针对来自各种最近的实体搜索基准测试活动的300多个查询以及来自DBpedia本体的目标类型进行手动注释,来开发专用测试集。最后,我们引入并研究了两个受联合搜索技术启发的基线模型。我们证明,当目标类型限制在顶层类别的平面列表中时,这些方法的效果会出乎意料的好。然而,在层次结构中找到合适的粒度级别特别具有挑战性,需要进一步研究。

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