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Efficacy of Deep Neural Embeddings-Based Semantic Similarity in Automatic Essay Evaluation
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Author(s): Manik Hendre (Ramanbyte Pvt. Ltd., India), Prasenjit Mukherjee (Ramanbyte Pvt. Ltd., India), Raman Preet (Ramanbyte Pvt. Ltd., India)and Manish Godse (Pune Institute of Business Management, India)
Copyright: 2023
Volume: 17
Issue: 1
Pages: 14
Source title:
International Journal of Cognitive Informatics and Natural Intelligence (IJCINI)
Editor(s)-in-Chief: Kangshun Li (South China Agricultural University, China)
DOI: 10.4018/IJCINI.323190
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Abstract
Semantic similarity is used extensively for understanding the context and meaning of the text data. In this paper, use of the semantic similarity in an automatic essay evaluation system is proposed. Different text embedding methods are used to compute the semantic similarity. Recent neural embedding methods including Google sentence encoder (GSE), embeddings for language models (ELMo), and global vectors (GloVe) are employed for computing the semantic similarity. Traditional methods of textual data representation such as TF-IDF and Jaccard index are also used in finding the semantic similarity. Experimental analysis of an intra-class and inter-class semantic similarity score distributions shows that the GSE outperforms other methods by accurately distinguishing essays from the same or different set/topic. Semantic similarity calculated using the GSE method is further used for finding the correlation with human rated essay scores, which shows high correlation with the human-rated scores on various essay traits.
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