2023
DOI: 10.32604/csse.2023.030385
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Graph Ranked Clustering Based Biomedical Text Summarization Using Top k Similarity

Abstract: Text Summarization models facilitate biomedical clinicians and researchers in acquiring informative data from enormous domain-specific literature within less time and effort. Evaluating and selecting the most informative sentences from biomedical articles is always challenging. This study aims to develop a dual-mode biomedical text summarization model to achieve enhanced coverage and information. The research also includes checking the fitment of appropriate graph ranking techniques for improved performance of… Show more

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