Predictive Analysis using Convolution Network on Sentiment Analysis of Text Classification using Machine Learning

Vanitha kakollu, Et. al.
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Abstract

Today we have large amounts of textual data to be processed and the procedure involved in classifying text is called natural language processing. The basic goal is to identify whether the text is positive or negative. This process is also called as opinion mining. In this paper, we consider three different data sets and perform sentiment analysis to find the test accuracy. We have three different cases- 1. If the text contains more positive data than negative data then the overall result leans towards positive. 2. If the text contains more negative data than positive data then the overall result leans towards negative. 3. In the final case the number or positive and negative data is nearly equal then we have a neutral output. For sentiment analysis we have several steps like term extraction, feature selection, sentiment classification etc. In this paper the key point of focus is on sentiment analysis by comparing the machine learning approach and lexicon-based approach and their respective accuracy loss graphs.
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基于卷积网络的预测分析在机器学习文本分类情感分析中的应用
今天,我们有大量的文本数据需要处理,而对文本进行分类的过程被称为自然语言处理。基本目标是确定文本是积极的还是消极的。这个过程也被称为意见挖掘。在本文中,我们考虑了三种不同的数据集,并进行情感分析来寻找测试的准确性。我们有三种不同的情况- 1。如果文本包含的正面数据多于负面数据,那么整体结果就倾向于正面。2. 如果文本包含的负面数据多于正面数据,则整体结果倾向于负面。3.在最后一种情况下,正负数据的数量几乎相等,那么我们有一个中性输出。对于情感分析,我们有几个步骤,如术语提取,特征选择,情感分类等。本文的重点是通过比较机器学习方法和基于词典的方法以及它们各自的准确性损失图来进行情感分析。
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Information Technology in Industry
Information Technology in Industry COMPUTER SCIENCE, SOFTWARE ENGINEERING-
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