Machine Learning based Sentiment Analysis of Hindi Data with TF-IDF and Count Vectorization

Ashwani Gupta, U. Sharma
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Abstract

Sentiment refers to emotions. Sentiment analysis, often known as opinion mining, is the technique of identifying and extracting subjective data from pre-web and post-web reviews using text analytics, computational linguistics, and natural language processing. Hindi is an Indian language which is used by many of Indians. Due to phenomenal growth of online product reviews in Hindi post-web Hindi reviews are also increasing rapidly. A machine learning based method in this paper to analysis postweb text data. The present method is divided into four steps. First of all, an annotated Hindi review data set is developed from post-web sources. In second step, feature extraction is performed on annotated Hindi review dataset using the Term-Frequency/ Inverse-Document Frequency (TF-IDF) and count vectorization techniques. In the third step, the retrieved features are given to the classifier so it can make predictions. Moreover, annotated dataset translated into English. Second step and third step are performed on annotated English dataset in last step. A range of evaluation criteria, including precision, recall, and F1- score, are presented in the results. In both instances, the support vector machine produced the most pertinent results.
基于TF-IDF和计数矢量化的机器学习的印地语数据情感分析
Sentiment指的是情绪。情感分析,通常被称为意见挖掘,是一种使用文本分析、计算语言学和自然语言处理从网络前和网络后的评论中识别和提取主观数据的技术。印地语是许多印度人使用的印度语言。由于印度语在线产品评论的显著增长,印度语评论也在迅速增长。本文提出了一种基于机器学习的web后文本数据分析方法。本方法分为四个步骤。首先,一个带注释的印地语评论数据集是从后web来源开发的。第二步,使用术语频率/反文档频率(TF-IDF)和计数矢量化技术对带注释的印地语复习数据集进行特征提取。在第三步中,将检索到的特征提供给分类器,以便它可以进行预测。此外,将带注释的数据集翻译成英文。第二步和第三步是在最后一步的注释英语数据集上执行的。一系列的评价标准,包括精度,召回率,和F1-得分,在结果中提出。在这两种情况下,支持向量机产生了最相关的结果。
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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