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Learning New Relations from Concept Ontologies Derived from Definitions

机译:从定义中学习来自概念本体的新关系

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Systems that build general knowledge bases from concept definitions mostly focus on knowledge extraction techniques on a per-definition basis. But, definitions rely on subtext and other definitions to concisely encode a concept's meaning. We present a probabilistic inference process where we systematically augment knowledge extracted from several WordNet glosses with subtext and then infer likely states of the world. From those states we learn new semantic relations among properties, states, and events. We show that our system learns more relations than one without subtext and verify this knowledge using human evaluators.
机译:从概念定义构建一般知识库的系统主要关注每个定义的知识提取技术。但是,定义依赖于子文本和其他定义,简明地编码概念的含义。我们提出了一个概率的推理过程,我们系统地增强了从多个Wordnet界面提取的知识,然后将其推断出世界的可能状态。来自那些国家,我们学习物业,国家和活动之间的新语义关系。我们展示我们的系统在没有文件文本的情况下学习比其中更多的关系,并使用人类评估员验证这些知识。

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