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Autores principales: Ganesan, Balaji, Ravikumar, Arjun, Piplani, Lakshay, Bhaumik, Rini, Padmanaban, Dhivya, Narasimhamurthy, Shwetha, Adhikary, Chetan, Deshapogu, Subhash
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2401.08688
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author Ganesan, Balaji
Ravikumar, Arjun
Piplani, Lakshay
Bhaumik, Rini
Padmanaban, Dhivya
Narasimhamurthy, Shwetha
Adhikary, Chetan
Deshapogu, Subhash
author_facet Ganesan, Balaji
Ravikumar, Arjun
Piplani, Lakshay
Bhaumik, Rini
Padmanaban, Dhivya
Narasimhamurthy, Shwetha
Adhikary, Chetan
Deshapogu, Subhash
contents Automated answer validation can help improve learning outcomes by providing appropriate feedback to learners, and by making question answering systems and online learning solutions more widely available. There have been some works in science question answering which show that information retrieval methods outperform neural methods, especially in the multiple choice version of this problem. We implement Siamese neural network models and produce a generalised solution to this problem. We compare our supervised model with other text similarity based solutions.
format Preprint
id arxiv_https___arxiv_org_abs_2401_08688
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automated Answer Validation using Text Similarity
Ganesan, Balaji
Ravikumar, Arjun
Piplani, Lakshay
Bhaumik, Rini
Padmanaban, Dhivya
Narasimhamurthy, Shwetha
Adhikary, Chetan
Deshapogu, Subhash
Computation and Language
Information Retrieval
Automated answer validation can help improve learning outcomes by providing appropriate feedback to learners, and by making question answering systems and online learning solutions more widely available. There have been some works in science question answering which show that information retrieval methods outperform neural methods, especially in the multiple choice version of this problem. We implement Siamese neural network models and produce a generalised solution to this problem. We compare our supervised model with other text similarity based solutions.
title Automated Answer Validation using Text Similarity
topic Computation and Language
Information Retrieval
url https://arxiv.org/abs/2401.08688