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Feature-Based Relation Classification Using Quantified Relatedness Information

机译:基于量化关联信息的基于特征的关系分类

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摘要

Feature selection is very important for feature-based relation classification tasks. While most of the existing works on feature selection rely on linguistic information acquired using parsers, this letter proposes new features, including probabilistic and semantic relatedness features, to manifest the relatedness between patterns and certain relation types in an explicit way. The impact of each feature set is evaluated using both a chi-square estimator and a performance evaluation. The experiments show that the impact of relatedness features is superior to existing well-known linguistic features, and the contribution of relatedness features cannot be substituted using other normally used linguistic feature sets.
机译:特征选择对于基于特征的关系分类任务非常重要。尽管大多数现有的有关特征选择的工作都依赖于使用解析器获取的语言信息,但这封信提出了新的特征,包括概率和语义相关性特征,以显式方式显示模式与某些关系类型之间的相关性。使用卡方估算器和性能评估来评估每个功能集的影响。实验表明,相关性特征的影响要优于现有的众所周知的语言特征,并且相关性特征的贡献无法使用其他常用的语言特征集来代替。

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