An Empirical Research on Extracting Relations from Wikipedia Text

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An Empirical Research on Extracting Relations from Wikipedia Text is a 2008 conference paper written in English by Jin-Xia Huang, Pum-Mo Ryu, Key-Sun Choi and published in IDEAL.

[edit] Abstract

A feature based relation classification approach is presented, in which probabilistic and semantic relatedness features between patterns and relation types are employed with other linguistic information. The importance of each feature set is evaluated with Chi-square estimator, and the experiments show that, the relatedness features have big impact on the relation classification performance. A series experiments are also performed to evaluate the different machine learning approaches on relation classification, among which Bayesian outperformed other approaches including Support Vector Machine (SVM).

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