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Semantic Pattern Detection in COVID-19 Using Contextual Clustering and Intelligent Topic Modeling
2022
International Journal of E-Health and Medical Communications (IJEHMC)
The Covid-19 pandemic is the deadliest outbreak in our living memory. So, it is need of hour, to prepare the world with strategies to prevent and control the impact of the epidemics. In this paper, a novel semantic pattern detection approach in the Covid-19 literature using contextual clustering and intelligent topic modeling is presented. For contextual clustering, three level weights at term level, document level, and corpus level are used with latent semantic analysis. For intelligent topic
doi:10.4018/ijehmc.20220701.oa7
fatcat:cao3h5jmzvcvdfh63233quzzli