Distributional Semantic Concept Models for Entity Relation Discovery

VS@HLT-NAACL Pub Date : 2015-06-01 DOI:10.3115/v1/W15-1507
J. Urbain, Glenn Bushee, George Kowalski
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Abstract

We present an ad hoc concept modeling approach using distributional semantic models to identify fine-grained entities and their relations in an online search setting. Concepts are generated from user-defined seed terms, distributional evidence, and a relational model over concept distributions. A dimensional indexing model is used for efficient aggregation of distributional, syntactic, and relational evidence. The proposed semi-supervised model allows concepts to be defined and related at varying levels of granularity and scope. Qualitative evaluations on medical records, intelligence documents, and open domain web data demonstrate the efficacy of our approach.
面向实体关系发现的分布式语义概念模型
我们提出了一种特别的概念建模方法,使用分布式语义模型来识别在线搜索设置中的细粒度实体及其关系。概念由用户定义的种子项、分布证据和概念分布上的关系模型生成。维度索引模型用于有效地聚合分布、句法和关系证据。提出的半监督模型允许在不同的粒度和范围级别上定义和关联概念。对医疗记录、情报文件和开放域网络数据的定性评估证明了我们方法的有效性。
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