基于语法的关系挖掘的广义框架

Bonaventura Coppola, Alessandro Moschitti, Daniele Pighin
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引用次数: 10

摘要

数据挖掘的监督方法特别吸引人,因为它们允许从数据对象中提取复杂的关系。为了促进其在不同领域的应用,从生物信息学中的蛋白质与蛋白质相互作用到计算语言学研究中的文本挖掘,需要一个模块化和通用的挖掘框架。泛化过程的主要约束是关系数据描述的特征设计。在本文中,我们提出了一个用于自动挖掘关系的机器学习框架,其中目标对象在结构上组织在树中。对象类型通过使用角色进行一般化,而关系属性则通过底层树结构进行描述。后者在学习算法中编码,这要归功于结构化数据的核方法,它根据所有可能的子部分表示结构。这种方法可以应用于任何类型的数据,而不考虑它们的本质。在两个文本挖掘数据集(PropBank和FrameNet语料库)上使用支持向量机进行的关系提取实验表明,我们的方法是通用的,并且达到了最先进的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized Framework for Syntax-Based Relation Mining
Supervised approaches to data mining are particularly appealing as they allow for the extraction of complex relations from data objects. In order to facilitate their application in different areas, ranging from protein to protein interaction in bioinformatics to text mining in computational linguistics research, a modular and general mining framework is needed. The major constraint to the generalization process concerns the feature design for the description of relational data. In this paper, we present a machine learning framework for the automatic mining of relations, where the target objects are structurally organized in a tree. Object types are generalized by means of the use of roles, whereas the relation properties are described by means of the underlying tree structure. The latter is encoded in the learning algorithm thanks to kernel methods for structured data, which represent structures in terms of their all possible subparts. This approach can be applied to any kind of data disregarding their very nature. Experiments with support vector machines on two text mining datasets for relation extraction, i.e. the PropBank and FrameNet corpora, show both that our approach is general, and that it reaches state-of-the-art accuracy.
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