Publication: MNet-Sim: A Multi-layered Semantic Similarity Network to Evaluate Sentence Similarity
Type:
Article
Date
2021-11
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Similarity is a comparative - subjective
measure that varies with the domain within which it is
considered. In several NLP applications such as document
classification, pattern recognition, chatbot questionanswering, sentiment analysis, etc., identifying an accurate
similarity score for sentence pairs has become a crucial
area of research. In the existing models that assess
similarity, the limitation of effectively computing this
similarity based on contextual comparisons, the
localization due to the centering theory, and the lack of
non-semantic textual comparisons have proven to be
drawbacks. Hence, this paper presents a multi-layered
semantic similarity network model built upon multiple
similarity measures that render an overall sentence
similarity score based on the principles of Network
Science, neighboring weighted relational edges, and a
proposed extended node similarity computation formula.
The proposed multi-layered network model was evaluated
and tested against established state-of-the-art models and
is shown to have demonstrated better performance scores
in assessing sentence similarity
Description
Keywords
multi-layer network, network science, semantic similarity
Citation
Jeyaraj, Manuela & Kasthurirathna, Dharshana. (2021). MNet-Sim: A Multi-layered Semantic Similarity Network to Evaluate Sentence Similarity.
