SEMCON

Zenun Kastrati, Ali Shariq Imran, Sule Yildirim-Yayilgan
2016 International Journal on Semantic Web and Information Systems (IJSWIS)  
This paper presents a novel concept enrichment objective metric combining contextual and semantic information of terms extracted from the domain documents. The proposed metric is called SEMCON which stands for semantic and contextual objective metric. It employs a hybrid learning approach utilizing functionalities from statistical and linguistic ontology learning techniques. The metric also introduced for the first time two statistical features that have shown to improve the overall score
more » ... g of highly relevant terms for concept enrichment. Subjective and objective experiments are conducted in various domains. Experimental results (F1) from computer domain show that SEMCON achieved better performance in contrast to tf*idf, χ 2 and LSA methods, with 12.2%, 21.8%, and 24.5% improvement over them respectively. Additionally, an investigation into how much each of contextual and semantic components contributes to the overall task of concept enrichment is conducted and the obtained results suggest that a balanced weight gives the best performance.
doi:10.4018/ijswis.2016040101 fatcat:kl5fkxgy2rajtnlj6lt3paebcy