Deep Learning-Based Aspect Term Extraction for Sentiment Analysis in Hindi

Ashwani Gupta, Utpal Sharma
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Abstract

Objectives: Aspect terms play a vital role in finalizing the sentiment of a given review. This experimental study aims to improve the aspect term extraction mechanism for Hindi language reviews. Methods: We trained and evaluated a deep learning-based supervised model for aspect term extraction. All experiments are performed on a well-accepted Hindi dataset. A BiLSTM-based attention technique is employed to improve the extraction results. Findings: Our results show better F-score results than many existing supervised methods for aspect term extraction. Accuracy results are outstanding compared to other reported results. Results showed an outstanding 91.27% accuracy and an F–score of 43.16. Novelty: This proposed architecture and the achieved results are a foundational resource for future studies and endeavours in the field. Keywords: Sentiment analysis, Aspect based sentiment analysis, Aspect term extraction, Deep Learning, Bi LSTM, Indian language, Hindi
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基于深度学习的印地语情感分析中的特征词提取
目的:方面术语在最终确定给定评论的情感方面起着至关重要的作用。本实验研究旨在改进印地语评论的特征词提取机制。方法:我们训练并评估了一个基于深度学习的监督模型,用于方面术语提取。所有实验均在广受认可的印地语数据集上进行。我们采用了基于 BiLSTM 的注意力技术来改善提取结果。实验结果我们的结果表明,F-score 结果优于许多现有的方面词提取监督方法。与其他报告的结果相比,准确率结果非常出色。结果显示,准确率高达 91.27%,F 分数为 43.16。新颖性:所提出的架构和取得的成果为该领域未来的研究和努力提供了基础资源。关键词情感分析、基于方面的情感分析、方面术语提取、深度学习、Bi LSTM、印度语、印地语
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