H-AES: Towards Automated Essay Scoring for Hindi
- URL: http://arxiv.org/abs/2302.14635v1
- Date: Tue, 28 Feb 2023 15:14:15 GMT
- Title: H-AES: Towards Automated Essay Scoring for Hindi
- Authors: Shubhankar Singh, Anirudh Pupneja, Shivaansh Mital, Cheril Shah,
Manish Bawkar, Lakshman Prasad Gupta, Ajit Kumar, Yaman Kumar, Rushali Gupta,
Rajiv Ratn Shah
- Abstract summary: We reproduce and compare state-of-the-art methods for Automated Essay Scoring (AES) in the Hindi domain.
We employ classical feature-based Machine Learning (ML) and advanced end-to-end models, including LSTM Networks and Fine-Tuned Transformer Architecture.
We train and evaluate our models using translated English essays and empirically measure their performance on our own small-scale, real-world Hindi corpus.
- Score: 33.755800922763946
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The use of Natural Language Processing (NLP) for Automated Essay Scoring
(AES) has been well explored in the English language, with benchmark models
exhibiting performance comparable to human scorers. However, AES in Hindi and
other low-resource languages remains unexplored. In this study, we reproduce
and compare state-of-the-art methods for AES in the Hindi domain. We employ
classical feature-based Machine Learning (ML) and advanced end-to-end models,
including LSTM Networks and Fine-Tuned Transformer Architecture, in our
approach and derive results comparable to those in the English language domain.
Hindi being a low-resource language, lacks a dedicated essay-scoring corpus. We
train and evaluate our models using translated English essays and empirically
measure their performance on our own small-scale, real-world Hindi corpus. We
follow this up with an in-depth analysis discussing prompt-specific behavior of
different language models implemented.
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