流中实体中心文档的弱监督检测

L. Bonnefoy, Vincent Bouvier, P. Bellot
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引用次数: 27

摘要

过滤与实体高度相关的按时间排序的语料库是近年来越来越受到关注的一项任务。一个应用程序是减少从第一次观察到实体信息到更新知识库中的实体条目之间的延迟。目前最先进的方法受到高度监督,需要为每一个被监测的实体提供训练实例。我们提出了一种在处理新实体时不需要新的训练数据的方法。为了捕获高度相关文档的内在特征,我们的方法依赖于三种类型的特征:以文档为中心的特征、实体概要相关的特征和时间特征。在TREC 2012的“知识库加速”轨道框架内进行评估,它优于当前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A weakly-supervised detection of entity central documents in a stream
Filtering a time-ordered corpus for documents that are highly relevant to an entity is a task receiving more and more attention over the years. One application is to reduce the delay between the moment an information about an entity is being first observed and the moment the entity entry in a knowledge base is being updated. Current state-of-the-art approaches are highly supervised and require training examples for each entity monitored. We propose an approach which does not require new training data when processing a new entity. To capture intrinsic characteristics of highly relevant documents our approach relies on three types of features: document centric features, entity profile related features and time features. Evaluated within the framework of the "Knowledge Base Acceleration" track at TREC 2012, it outperforms current state-of-the-art approaches.
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