April 29, 2024
Zahra Yousefi

Zahra Yousefi

Academic Rank: Assistant professor
Address:
Degree: Ph.D in Knowledge and Information Sciences--Information Retrieval
Phone: 07731222106
Faculty: Faculty of Humanities

Research

Title Investigating text power in predicting semantic similarity
Type Article
Keywords
distributional semantics; semantic similarity; textual similarity; effectiveness; information retrieval; MeSH
Journal International Journal of Information Science and Management
DOI
Researchers Zahra Yousefi (First researcher) , Hajar Sotudeh (Second researcher) , Mahdieh Mirzabeigi (Third researcher) , Seyed Mostafa Fakhrahmad (Fourth researcher) , Alireza Nikseresht (Fifth researcher) , Mehdi Mohammadi (Not in first six researchers)

Abstract

This article presents an empirical evaluation to investigate the distributional semantic power of abstract, body and full-text, as different text levels, in predicting the semantic similarity using a collection of open access articles from PubMed. The semantic similarity is measured based on two criteria namely, linear MeSH terms intersection and hierarchical MeSH terms distance. As such, a random sample of 200 queries and 20000 documents are selected from a test collection built on CITREC open source code. Sim Pack Java Library is used to calculate the textual and semantic similarities. The nDCG value corresponding to two of the semantic similarity criteria is calculated at three precision points. Finally, the nDCG values are compared by using the Friedman test to determine the power of each text level in predicting the semantic similarity. The results showed the effectiveness of the text in representing the semantic similarity in such a way that texts with maximum textual similarity are also shown to be 77% and 67% semantically similar in terms of linear and hierarchical criteria, respectively. Furthermore, the text length is found to be more effective in representing the hierarchical semantic compared to the linear one. Based on the findings, it is concluded that when the subjects are homogenous in the tree of knowledge, abstracts provide effective semantic capabilities, while in heterogeneous milieus, full-texts processing or knowledge bases is needed to acquire IR effectiveness.