Bangla Text Emotion Classification using LR, MNB and MLP with TF-IDF & CountVectorizer

Tamal Ahmed, Shawly Folia Mukta, Tamim Al Mahmud, S. Hasan, Md Gulzar Hussain
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引用次数: 2

Abstract

Emotions have a significant role in human contact. Written material, vocal discourse, and facial expressions can all be used to convey emotion. The habit of showing emotion on digital platforms or blogs has grown considerably in recent years. Bangla is a widely spoken language throughout the globe, with billions of people speaking it. Bangla is used by these folks to express their emotions. It will be wonderful to have a means to identify these emotions outside of the text. In order to achieve this goal, we tested three algorithms for detecting emotion in Bangla texts. Logistic Regression, Multinomial Naive Bayes, and Multi-layer Perceptron have all been used to determine six identical emotion-related categories. TF-IDF, count vectorizer and their combination is used as features on two blended datasets to evaluate the performance of these three algorithms. It is found that he LR with TF-IDF approach gives the best overall accuracy, precision, recall, and F1-measure score among all of the results.
基于TF-IDF和反矢量器的LR、MNB和MLP孟加拉语文本情感分类
情感在人际交往中扮演着重要的角色。书面材料、口头话语和面部表情都可以用来表达情感。近年来,在数字平台或博客上表达情感的习惯显著增加。孟加拉语是全球广泛使用的语言,有数十亿人使用。这些人用孟加拉语来表达他们的情感。如果能在文本之外找到识别这些情感的方法,那就太好了。为了实现这一目标,我们测试了三种算法来检测孟加拉语文本中的情绪。逻辑回归、多项朴素贝叶斯和多层感知器都被用来确定六个相同的情感相关类别。将TF-IDF、计数矢量器及其组合作为特征在两个混合数据集上评估这三种算法的性能。研究发现,结合TF-IDF方法的LR在所有结果中给出了最好的总体准确率、精密度、召回率和f1测量分数。
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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