Litcius/Paper detail

Semantic Analysis Techniques using Twitter Datasets on Big Data: Comparative Analysis Study

Belal Abdullah Hezam Murshed, Hasib Daowd Esmail Al-ariki, M. Suresha

2020Computer Systems Science and Engineering27 citationsDOIOpen Access PDF

Abstract

This paper conducts a comprehensive review of various word and sentence semantic similarity techniques proposed in the literature. Corpus-based, Knowledge-based, and Feature-based are categorized under word semantic similarity techniques. String and set-based, Word Order-based Similarity, POSbased, Syntactic dependency-based are categorized as sentence semantic similarity techniques. Using these techniques, we propose a model for computing the overall accuracy of the twitter dataset. The proposed model has been tested on the following four measures: Atish’s measure, Li’s measure, Mihalcea’s measure with path similarity, and Mihalcea’s measure with Wu and Palmer’s (WuP) similarity. Finally, we evaluate the proposed method on three real-world twitter datasets. The proposed model based on Atish’s measure seems to offer good results in all datasets when compared with the proposed model based on other sentence similarity measures.

Topics & Concepts

Computer scienceSemantic similaritySentenceSimilarity (geometry)Measure (data warehouse)Word (group theory)Natural language processingArtificial intelligenceSimilarity measureSet (abstract data type)Feature (linguistics)Dependency (UML)Data setData miningMathematicsImage (mathematics)PhilosophyLinguisticsProgramming languageGeometryTopic ModelingText and Document Classification TechnologiesSentiment Analysis and Opinion Mining