Automated Paper Evaluation System for Subjective Handwritten Answers
2021
In order to automate the task of correcting handwritten subjective answers, we envision a system that reads such answers and grades them. In this project, we have created a mobile application to achieve this task. We have used the RAKE algorithm to extract key-phrases, which are then embedded using Word2vec model and compared using Word Mover's Distance. Our created model achieved almost human like evaluation accuracy. We have also provided accessibility features to the users with the aim of making this application a one-stop solution to automatic evaluation of handwritten subjective answers.
Keywords:
- Correction
- Source
- Cite
- Save
- Machine Reading By IdeaReader
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KQI