概念术语语义分类的学习

Janardhana Punuru, Jianhua Chen
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引用次数: 6

摘要

概念的提取及其语义类的识别在本体的自动实例化和信息提取系统的构建等应用中非常有用。尽管存在从非结构化文本中提取特定领域概念的各种技术,但很少关注概念的语义类标记。本文提出了语义类标注(SCL)问题,并将其与命名实体分类(NEC)问题进行了区分。我们还提出了SCL的朴素贝叶斯解决方案。实验表明,具有特定特征的朴素贝叶斯学习方法具有较高的分类准确率。本文还对属性的显著性进行了实证和统计评价。
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Learning for Semantic Classification of Conceptual Terms
Extraction of concepts and identification of their semantic classes are useful in applications such as automatic instantiation of ontologies and construction of information extraction systems. Even though various techniques exist for the extraction of domain specific concepts from unstructured texts, very little concentration is in the semantic class labeling for concepts. In this paper we propose the semantic class labeling (SCL) problem and differentiate it from the named entity classification (NEC) problem. We also present a Naive Bayes solution to SCL. Experiments suggest that Naive Bayes learning method with specified features achieves high classification accuracy. Empirical and statistical evaluation on the significance of attributes for SCL is also presented.
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