This research paper addresses the challenge of manually grading subjective papers.
It examines existing methods and suggests a new approach using computers and advanced tools
to enhance the speed and accuracy of grading. Through experimentation, the study assesses the
performance of this novel method. The results contribute to automated grading systems for
subjective papers. Additionally, this paper proposes a novel approach utilizing natural language
processing (NLP) techniques, including WordNet, cosine similarity, and TF-IDF, to
automatically assess descriptive answers.