YouTube Transcript Summarizer Analysis using Machine Learning Techniques

Abstract

Nowadays, on YouTube, there are lots of videos uploaded every single day over the world which is very long, mostly educational, entertainment, documentaries, news clips, and more. If you want an important source from the videos, it is impossible. And to get a particular content from a video, a whole video has to be watched which is a complete waste of time and the source is also not a piece of relevant information out of it and also effort for watching multiple videos to extract the useful information. To solve that problem, summarizing transcripts are useful and are one way go. It uses the ‘Natural Language Processing’ technique to summarize the abstractive text.

Country : India

1 Ankitha Sowmya2 Yashaswini G3 Prof. Chandrani Chakravorty

  1. Department of Master of Computer Applications, RV College of Engineering® Bengaluru -560059, Karnataka, India
  2. Department of Master of Computer Applications, RV College of Engineering® Bengaluru -560059, Karnataka, India
  3. Assistant Professor, Department of Master of Computer Application, RV College of Engineering® Bengaluru -560059, Karnataka, India

IRJIET, Volume 6, Issue 2, February 2022 pp. 62-66

doi.org/10.47001/IRJIET/2022.602011

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