Subjective question generation and answer evaluation using NLP
Abstract
Natural Language Processing (NLP) is one of the most revolutionary technologies
today. It uses artificial intelligence to understand human text and spoken words. It
is used for text summarization, grammar checking, sentiment analysis, and advanced
chatbots and has many more potential use cases. Furthermore, it has also made its
mark on the education sector. Much research and advancements have already been
conducted on objective question generation; however, automated subjective question
generation and answer evaluation are still in progress. An automated system to
generate subjective questions and evaluate the answers can help teachers in assessing
student work and enhance the learning experience of the students by allowing them
to self-assess their understanding after reading an article or a chapter of a book. This
research aims to improve current NLP models or make a novel one for automated
subjective question generation and answer evaluation from text input.