ET-GNN combines Transformer-based models and GCNs for holistic AES. Essay embeddings serve as graph nodes, enabling GCNs to capture relational dependencies and enhance sc...
Abstract:
Essay writing tasks are crucial for assessing students’ writing skills, but manual evaluation can be time-consuming and prone to inconsistencies. Automated Essay Scoring ...Show MoreMetadata
Abstract:
Essay writing tasks are crucial for assessing students’ writing skills, but manual evaluation can be time-consuming and prone to inconsistencies. Automated Essay Scoring (AES) offers a solution by automatically evaluating essays, reducing the need for human intervention. This paper presents a hybrid method, called Ensemble Transformer-Based Graph Neural Networks (ET-GNN), which integrates Transformer-based models with Graph Convolutional Networks (GCNs) for holistic AES. Three Transformer models, DistilBERT, RoBERTa, and DeBERTaV3, were individually fine-tuned to generate contextual embeddings for each essay. The GCNs process these embeddings, effectively capturing relevant semantic information and inter-essay similarities. Additionally, ensemble methods are used to combine the DistilBERT-GCN, RoBERTa-GCN, and DeBERTaV3-GCN models employing averaging for regression tasks, majority voting for classification tasks, and a weighted ensemble method for both types of tasks. The proposed ET-GNN method enhances the performance and robustness of AES systems, achieving Quadratic Weighted Kappa (QWK) scores of 0.835 and 0.841 on the ASAP and AES 2.0 datasets, respectively. These results outperform other state-of-the-art models based on Transformer or GCNs architectures for the AES task.
ET-GNN combines Transformer-based models and GCNs for holistic AES. Essay embeddings serve as graph nodes, enabling GCNs to capture relational dependencies and enhance sc...
Published in: IEEE Access ( Volume: 13)
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Graph Neural Networks ,
- Essay Scores ,
- Automated Essay Scoring ,
- Classification Task ,
- Semantic Information ,
- Hybrid Method ,
- Majority Voting ,
- Ensemble Method ,
- Transformer Model ,
- Graph Convolutional Network ,
- Graph Convolution ,
- Transformer Architecture ,
- Contextual Embedding ,
- High Similarity ,
- Convolutional Neural Network ,
- Deep Learning Models ,
- Baseline Study ,
- Semantic Similarity ,
- Nodes In The Graph ,
- Graph Convolutional Network Model ,
- Semantic Features ,
- Word Embedding ,
- Bidirectional Long Short-term Memory ,
- Scoring Rubric ,
- Traditional Machine Learning Methods ,
- Deep Neural Network Method ,
- Best-performing Model ,
- Node Features ,
- Natural Language Processing Tasks
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Graph Neural Networks ,
- Essay Scores ,
- Automated Essay Scoring ,
- Classification Task ,
- Semantic Information ,
- Hybrid Method ,
- Majority Voting ,
- Ensemble Method ,
- Transformer Model ,
- Graph Convolutional Network ,
- Graph Convolution ,
- Transformer Architecture ,
- Contextual Embedding ,
- High Similarity ,
- Convolutional Neural Network ,
- Deep Learning Models ,
- Baseline Study ,
- Semantic Similarity ,
- Nodes In The Graph ,
- Graph Convolutional Network Model ,
- Semantic Features ,
- Word Embedding ,
- Bidirectional Long Short-term Memory ,
- Scoring Rubric ,
- Traditional Machine Learning Methods ,
- Deep Neural Network Method ,
- Best-performing Model ,
- Node Features ,
- Natural Language Processing Tasks
- Author Keywords