A NEW FRAMEWORK FOR ONLINE DESCRIPTIVE EXAMINATION SYSTEM USING NLP

Authors

  • VYSHNAVI VELUGU Author
  • Mr. GOPI GANDIKOTA Author
  • KAFIRINNIS HA SHAIK Author
  • ANITHA PATNAM Author
  • HIMABINDU DASARI Author

Keywords:

examination portals, servers, online examination, olympiads, FRAMEWORK FOR ONLINE

Abstract

This world has seen a lot many examination portals that are deployed over several servers which
are used to conduct online examination for various purposes among which some may include
conducting a test for entrance examinations, or olympiads at national and international level and
while some portals are designed to conduct a test for placement purposes. But what we have seen
is that mostly all the portals are designed to conduct tests that contain multiple choice questions.
Here our aim is not to work on the technology that is already existing, rather some technology
that is very rare. Here we talk of the descriptive online examination system. Multiple choice
questions are easy to deal as they have a question, a few options and a field in the same question
that stores the correct option in the database. While in the case of descriptive questions it is not
so. It brings in or uses the concepts of Natural Language Processing or NLP to assign marks to
answers. Answers are nothing but strings and the job of the model is to do some operations on
the answer string such that it can assign the correct marks to answers written by the examinee.
The data is basically collected from a descriptive online examination system. Further, it is
analyzed and the designed model assigns accurate marks to the answers for the question. The
back-end is written in Python where the web framework used is Django, the library used for
Natural Language Processing includes NLTK and for database purpose, SQLite version 3 is
used, while for the front-end HTML version-5, CSS version-3, Bootstrap and Javascript is used.

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Published

01-03-2024

How to Cite

A NEW FRAMEWORK FOR ONLINE DESCRIPTIVE EXAMINATION SYSTEM USING NLP. (2024). International Journal of Mechanical Engineering Research and Technology , 16(1), 113-124. https://ijmert.com/index.php/ijmert/article/view/206