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Empowering Short Answer Grading: Integrating Transformer-Based Embeddings and BI-LSTM Network

Wael H. Gomaa, Abdelrahman Ezzeldin Nagib, Mostafa Saeed, Abdulmohsen Algarni, Emad Nabil

2023Big Data and Cognitive Computing12 citationsDOIOpen Access PDF

Abstract

Automated scoring systems have been revolutionized by natural language processing, enabling the evaluation of students’ diverse answers across various academic disciplines. However, this presents a challenge as students’ responses may vary significantly in terms of length, structure, and content. To tackle this challenge, this research introduces a novel automated model for short answer grading. The proposed model uses pretrained “transformer” models, specifically T5, in conjunction with a BI-LSTM architecture which is effective in processing sequential data by considering the past and future context. This research evaluated several preprocessing techniques and different hyperparameters to identify the most efficient architecture. Experiments were conducted using a standard benchmark dataset named the North Texas Dataset. This research achieved a state-of-the-art correlation value of 92.5 percent. The proposed model’s accuracy has significant implications for education as it has the potential to save educators considerable time and effort, while providing a reliable and fair evaluation for students, ultimately leading to improved learning outcomes.

Topics & Concepts

Computer scienceGrading (engineering)HyperparameterTransformerArtificial intelligencePreprocessorMachine learningData pre-processingNatural language processingArchitectureEngineeringVisual artsArtVoltageElectrical engineeringCivil engineeringOnline Learning and AnalyticsTopic ModelingIntelligent Tutoring Systems and Adaptive Learning
Empowering Short Answer Grading: Integrating Transformer-Based Embeddings and BI-LSTM Network | Litcius