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Design of automated model for inspecting and evaluating handwritten answer scripts: A pedagogical approach with NLP and deep learning

A. Nazifah Abdullah, S. Geetha, Asfia Aziz, Utkarsh Mishra

2024Alexandria Engineering Journal16 citationsDOIOpen Access PDF

Abstract

We address common challenges examiners face, such as accidental question skipping, marking omissions, and potential bias in assessment. These issues often arise due to the necessity of examining scripts in separate sessions, driven by the high volume of examination materials. In response, we propose the implementation of a self-regulating examiner, harnessing contemporary technology to reduce examiner workload and mitigate the possibility of errors. This automated approach aims to ensure fairness and accuracy in evaluating response scripts, offering a promising solution to the challenges encountered by examiners in the field Our study introduces an innovative approach that seamlessly integrates technologies, including Optical Character Recognition (OCR) for text ex- traction, Natural Language Processing (NLP) for keyword analysis, and ma- chine learning for grading. The results of our method are efficiently presented through a user-friendly web application, providing a streamlined and understandable means for examiners to evaluate response scripts. • Transition from traditional examiner to automated answer script evaluation enhances efficiency. • Novel ”Neural Network Strings and Lines” approach achieves 84 % and 97.8 % accuracy. • Research reports both upper and lower case recognition accuracy. • Valuable insights on choice of classifiers and accuracy. • Comprehensive overview of diverse text recognition methods.

Topics & Concepts

Scripting languageArtificial intelligenceComputer scienceNatural language processingDeep learningMachine learningProgramming languageHandwritten Text Recognition TechniquesNatural Language Processing TechniquesImage Processing and 3D Reconstruction
Design of automated model for inspecting and evaluating handwritten answer scripts: A pedagogical approach with NLP and deep learning | Litcius