Bangla Aspect-Based Sentiment Analysis Based on Corresponding Term Extraction

Forhad An Naim
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引用次数: 4

Abstract

Aspect-based sentiment analysis is a text analysis technique that extracts and separates each aspect term and identifies the sentiment polarity associated with each aspect term. Bangla is the seventh most spoken language in the world. Sentiment analysis in the Bangla language is considered a crucial and well-timed research topic. Aspect-based sentiment analysis of the Bangla language is treated as a complicated task because of the scarcity of resources like annotated datasets, corpora, etc. In this research, we have proposed a new technique named PSPWA (Priority Sentence Part Weight Assignment) to perform aspect category or term extraction on publicly available datasets named Cricket and Restaurant. We have used conventional supervised learning algorithms and Convolutional Neural Network (CNN) to demonstrate results. Dataset preparation, feature engineering, description of PSPWA, CNN architecture, experimental results along with a state-of-art comparison has been shown in this paper. The public dataset was imbalanced. CNN has performed better among other learning algorithms. CNN has achieved an f1-score of 0.59 and 0.67 for the cricket and the restaurant dataset respectively.
基于相应词提取的孟加拉语面向方面情感分析
基于方面的情感分析是一种提取和分离每个方面项并识别与每个方面项相关的情感极性的文本分析技术。孟加拉语是世界上第七大语言。孟加拉语中的情感分析被认为是一个至关重要且恰逢其时的研究课题。由于诸如带注释的数据集、语料库等资源的稀缺性,基于方面的孟加拉语情感分析被视为一项复杂的任务。在这项研究中,我们提出了一种名为PSPWA(优先句子部分权重分配)的新技术,用于对公开可用的数据集板球和餐馆进行方面类别或术语提取。我们使用传统的监督学习算法和卷积神经网络(CNN)来演示结果。本文展示了数据集准备、特征工程、PSPWA描述、CNN架构、实验结果以及最新的比较。公共数据集不平衡。CNN在其他学习算法中表现得更好。CNN在板球和餐馆数据集上分别获得了0.59和0.67的f1得分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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