Automatic graph construction and Exploring different types of LSTMs for Asian Hindi languages for Medical review Sentiment Analysis

Author:

kumari Rani1,Sah Dinesh Kumar2,Cengiz Korhan3,Ivković Nikola4,Balaji Prasanalakshmi5

Affiliation:

1. Birla institute of technology, India

2. Indian Institute of Technology (Indian School of Mines), India

3. Istinye University, Turkey and Faculty of Informatics and Management, Czech Republic

4. Faculty of Organization and Informatics, University of Zagreb, Croatia

5. King Khalid University, Saudi Arabia

Abstract

Sentiment Analysis (SA) of medical reviews is crucial for improving healthcare outcomes. However, analyzing sentiment in low-resource languages such as Asian Hindi presents significant challenges. In this study, we propose an automatic graph construction approach to extract relevant features from medical reviews in Asian Hindi languages. We explore different types of Long Short-Term Memory (LSTMs), including traditional LSTMs, bidirectional LSTMs, and attention-based LSTMs, to classify the sentiment of medical reviews. Our proposed approach uses attention-based LSTM architecture and pre-trained Word2Vec embeddings to achieve high accuracy. We compare the proposed approach with existing models using various evaluation metrics, including accuracy, precision, recall, and F1-score. The results demonstrate that our proposed approach outperforms all existing models in terms of accuracy, achieving an accuracy score of 81%. These findings could have implications for improving healthcare outcomes by enabling better monitoring of patient feedback and identifying areas for improvement in medical services.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

Reference42 articles.

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4. Bharat Ram Ambati , Samar Husain , Sambhav Jain , Dipti Misra Sharma , and Rajeev Sangal . 2010 . Two methods to incorporate’local morphosyntactic’features in hindi dependency parsing . In Proceedings of the NAACL HLT 2010 First Workshop on Statistical Parsing of Morphologically-Rich Languages. 22–30 . Bharat Ram Ambati, Samar Husain, Sambhav Jain, Dipti Misra Sharma, and Rajeev Sangal. 2010. Two methods to incorporate’local morphosyntactic’features in hindi dependency parsing. In Proceedings of the NAACL HLT 2010 First Workshop on Statistical Parsing of Morphologically-Rich Languages. 22–30.

5. Ansari Fatima Anees , Arsalaan Shaikh , Arbaz Shaikh , and Sufiyan Shaikh . 2020. Survey paper on sentiment analysis: Techniques and challenges. EasyChair2516-2314 ( 2020 ). Ansari Fatima Anees, Arsalaan Shaikh, Arbaz Shaikh, and Sufiyan Shaikh. 2020. Survey paper on sentiment analysis: Techniques and challenges. EasyChair2516-2314 (2020).

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