Sentiment Analysis using Optimized Feature Sets in Different Facebook/Twitter Dataset Domains using Big Data

Mohammed Ibrahim Al-mashhadani, Kilan M. Hussein, Enas Tariq Khudir, Muhammad ilyas
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引用次数: 10

Abstract

Now days, in many real life applications, the sentiment analysis plays very vital role for automatic prediction of human being activities especially on online social networks (OSNs). Therefore since from last decade, the research on opinion mining and sentiment analysis is growing with increasing volume of online reviews available over the social media networks like Facebook OSNs. Sentiment analysis falls under the data mining domain research problem. Sentiment analysis is kind of text mining process used to determine the subjective attitude like sentiment from the written texts and hence becoming the main research interest in domain of natural language processing and data mining. The main task in sentiment analysis is classifying human sentiment with objective of classifying the sentiment or emotion of end users for their specific text on OSNs. There are number of research methods designed already for sentiment analysis. There are many factors like accuracy, efficiency, speed etc. used to evaluate the effectiveness of sentiment analysis methods. The MapReduce framework under the domain of big-data is used to minimize the speed of execution and efficiency recently with many data mining methods. The sentiment analysis for Facebook OSNs messages is very challenging tasks as compared to other sentiment analysis because of misspellings and slang words presence in twitter dataset. In this paper, different solutions recently presented are discussed in detail. Then proposed the new approach for sentiment analysis based on hybrid features extraction methods and multi-class Support Vector Machine (SVM). These algorithms are designed using the Big-data techniques to optimize the performance of sentiment analysis
使用大数据在不同的Facebook/Twitter数据集域中使用优化的特征集进行情感分析
如今,在许多现实生活应用中,情感分析对人类活动的自动预测,特别是对在线社交网络(OSNs)的自动预测起着至关重要的作用。因此,自过去十年以来,随着Facebook等社交媒体网络上可用的在线评论数量的增加,对意见挖掘和情感分析的研究也在不断增长。情感分析属于数据挖掘领域的研究问题。情感分析是一种文本挖掘过程,用于从书面文本中确定情感等主观态度,因此成为自然语言处理和数据挖掘领域的主要研究方向。情感分析的主要任务是对人类情感进行分类,目的是对终端用户在osn上的特定文本的情感或情绪进行分类。已经有许多研究方法被设计用于情绪分析。有许多因素,如准确性,效率,速度等,用于评估情感分析方法的有效性。近年来,许多数据挖掘方法都采用了大数据领域的MapReduce框架来降低执行速度和效率。与其他情感分析相比,Facebook OSNs消息的情感分析是非常具有挑战性的任务,因为twitter数据集中存在拼写错误和俚语。本文详细讨论了近年来提出的各种解决方案。然后提出了基于混合特征提取方法和多类支持向量机(SVM)的情感分析新方法。这些算法使用大数据技术来优化情感分析的性能
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