Application of Optimization and Machine Learning for Sentiment Analysis

Manitosh Chourasiya, Prof. Devendra Singh Rathod
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Abstract

Sentiment analysis is called detecting emotions extracted from text features and is known as one of the most important parts of opinion extraction. Through this process, we can determine if a script is positive, negative or neutral. In this research, sentiment analysis is performed with textual data. A text feeling analyzer combines natural language processing (NLP) and machine learning techniques to assign weighted assessment scores to entities, subjects, subjects, and categories within a sentence or phrase. In expressing mood, the polarity of text reviews could be graded on a negative to positive scale using a learning algorithm. The current decade has seen significant developments in artificial intelligence, and the machine learning revolution has changed the entire AI industry. After all, machine learning techniques have become an integral part of any model in today's computing world. However, the ensemble to learning techniques is promise a high level of automation with the extraction of generalized rules for text and sentiment classification activities. This thesis aims to design and implement an optimized functionality matrix using to the ensemble learning for the sentiment classification and its applications.
优化和机器学习在情感分析中的应用
情感分析即从文本特征中提取情感,是观点提取的重要组成部分之一。通过这个过程,我们可以确定一个脚本是积极的、消极的还是中性的。在本研究中,情感分析是对文本数据进行的。文本感觉分析器结合了自然语言处理(NLP)和机器学习技术,为句子或短语中的实体、主题、主题和类别分配加权评估分数。在表达情绪时,文本评论的极性可以使用学习算法在消极到积极的尺度上进行分级。近十年来,人工智能取得了重大发展,机器学习革命改变了整个人工智能行业。毕竟,机器学习技术已经成为当今计算世界中任何模型的组成部分。然而,学习技术的集成有望在文本和情感分类活动中提取通用规则的高度自动化。本文旨在设计并实现一种基于集成学习的优化功能矩阵,用于情感分类及其应用。
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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