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Combining Information Extraction, Deductive Reasoning and Machine Learning for Relation Prediction

机译:结合信息提取,演绎推理和机器学习进行关系预测

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摘要

Three common approaches for deriving or predicting instantiated relations are information extraction, deductive reasoning and machine learning. Information extraction uses subsymbolic unstructured sensory information, e.g. in form of texts or images, and extracts statements using various methods ranging from simple classifiers to the most sophisticated NLP approaches. Deductive reasoning is based on a symbolic representation and derives new statements from logical axioms. Finally, machine learning can both support information extraction by deriving symbolic representations from sensory data, e.g., via classification, and can support deductive reasoning by exploiting regularities in structured data. In this paper we combine all three methods to exploit the available information in a modular way, by which we mean that each approach, i.e., information extraction, deductive reasoning, machine learning, can be optimized independently to be combined in an overall system. We validate our model using data from the YAGO2 ontology, and from Linked Life Data and Bio2RDF, all of which are part of the Linked Open Data (LOD) cloud.
机译:推导或预测实例化关系的三种常见方法是信息提取,演绎推理和机器学习。信息提取使用亚符号的非结构化感官信息,例如以文本或图像形式,并使用各种方法提取语句,从简单的分类器到最复杂的NLP方法。演绎推理基于符号表示,并从逻辑公理中得出新的陈述。最后,机器学习既可以通过例如通过分类从感觉数据中导出符号表示来支持信息提取,也可以通过利用结构化数据中的规律性来支持演绎推理。在本文中,我们将所有三种方法组合在一起以模块化方式利用可用信息,这意味着每种方法(即信息提取,演绎推理,机器学习)都可以独立优化,以组合到整个系统中。我们使用来自YAGO2本体以及链接生命数据和Bio2RDF的数据验证模型,所有这些都是链接开放数据(LOD)云的一部分。

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