数据挖掘中情感分析的机器学习方法

D. Hussein, Mstafa Rashad, K. Mirza, D. Hussein
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引用次数: 0

摘要

互联网的广泛使用和网络带来了表达个人情感的新方式。情感被定义为个人的观点,其中可以表达情感、态度和思想。在分析和提取情感时,情感分析和观点挖掘是两个最突出的研究学科。他们通过Facebook和Twitter等众多来源使用文本数据获得见解。情绪分析经常会引出人们对各种事件、品牌、产品或业务的感受。研究人员收集公众的回复并即兴制作,以进行评估。本文对推特用户推文的情感分析进行了研究。这种方法可以帮助分析收集和存储在积极、中立和消极意见中的信息。在创建特征向量之前,首先对该信息进行预处理。在机器学习的基础上,使用了分类方法。本研究的算法分别采用了最大熵、朴素贝叶斯和支持向量机;它们用于将文档分类为正面或负面。本文的数据集是从Twitter获得的,包括使用API订阅的推文。在预处理之后,使用机器学习方法来确定推文是正面的还是负面的。社交媒体。
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Machine Learning Approach to Sentiment Analysis in Data Mining
Widespread internet use and the web have brought about new ways of expressing individual sentiments. A sentiment is defined as an individual's view in which feelings, attitudes, and thoughts can be represented. When it comes to analysing and extracting Sentiment analysis and opinion mining are two of the most prominent disciplines of research. They derive insights using text data through numerous sources like Facebook and Twitter. Sentiment analysis frequently elicits information on how people feel about various events, brands, products, or businesses. Researchers collect and improvise replies from the general public to conduct evaluations. This paper looks into sentiment analysis for classifying Twitter subscriber tweets. This approach can help analysing the information gathered and stored in positive, neutral and negative opinions. This information is first pre-processed before creating feature vectors. On the basis of machine learning, classification methods were used. The study's algorithms are used Maximum Entropy, Naive Bayes and Support Vector Machine; they are used to categorize documents as positive or negative. The dataset for this paper are obtained from Twitter and includes subscribed tweets by using the API. Following pre-processing, machine learning methods are used to determine whether the tweets are positive or negative. Social Medi.
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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
23
审稿时长
12 weeks
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