印地语和英语情感分析方法

Aarsh Agrawal, Vinay Bhardwaj
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引用次数: 0

摘要

社交媒体被广泛认为是最重要的非结构化数据之一。从这些数据中分析和提取意义是一个耗时的过程。由于社交媒体平台上有大量可用的数据,情感提取得到了很多关注。微博是一个相对较新的现象,Twitter是使用最广泛的。它是最全面的免费和开放的数据源之一。今天的社会在推特上看到了很多不同的观点。研究人员可以利用意见挖掘来获取公众当前的情绪和情绪。情感分析被定义为提取和发现给定材料的极性,以深入了解文本中包含的隐藏信息,情感和感觉的技术。情感分析的最终目的是从各种信息来源中提取有意义的材料。对推文的第一次分析是使用自然语言处理(NLP)方法完成的。为了进一步分析固执己见的数据,有两种方法可用:基于词典的方法(LBA)和基于监督学习的机器学习方法(MLA)。LBA方法使用了一个资源字典,即印地语SentiWordNet,以及一种基于混合的方法(HBA),该方法将基于Lexicon的方法和机器学习结合起来,将推文分类为积极或消极
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods of Sentiment Analysis for Hindi and English Languages
Social media is widely regarded as one of the most important unstructured data. Analyzing and extracting meaning from such data is a time-consuming process. Because of the enormous data available on social media platforms, sentiment extraction has gotten a lot of attention. Microblogging is a relatively new phenomenon, with Twitter being the most widely utilized. It's one of the most comprehensive free and open data sources available. Today's society sees a lot of differing viewpoints on Twitter. Researchers can use opinion mining to obtain the present emotion and mood of the public. Sentiment Analysis is defined as the technique of extracting and finding the polarity of a given material to get insight into the hidden information, emotion, feeling contained within a text. The ultimate objective of sentiment analysis is to extract meaningful material from various sources of information. The first analysis of tweets was done using the Natural Language Processing (NLP) method. For further analysis of the opinionated data, two approaches are available: the Lexicon Based Approach (LBA) and the Machine Learning Approach (MLA) based on supervised learning. The LBA approach employs a resource dictionary, namely the Hindi SentiWordNet, and a Hybrid Based Approach (HBA) that joins the Lexicon based and Machine learning for categorizing tweets as positive or negative
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