In order to evaluate semantic relatedness of natural language concepts automatically, we propose Representative Features Analysis (RFA), a novel approach that represents the meaning of concepts in a high-dimensional space of representative features as a semantic-surrounding concept vector. The vector elements are weighted by the combination of TF-IDF scheme and the link status of Concept Interpreting Network in which nodes represent the concepts and edges represent the interpreting relation between concepts. Assessing the relatedness amounts to comparing the corresponding vectors using conventional metrics. Compared with the previous state of the art, using RFA results in substantial improvements in correlation of...
Mohamed Ali Hadj TaiebMohamed Ben AouichaAbdelmajid Ben Hamadou
Shahida JabeenXiaoying GaoPeter Andreae
Pu LiBao XiaoWenjun MaYuncheng JiangZhifeng Zhang
Liliana A. S. MedinaAna FredRui RodriguesJoaquim Filipe