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Predictive Modeling and Sentiment Classification of Social Media Through Extreme Learning Machine

机译:基于极限学习机的社交媒体预测建模与情感分类

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Social media platform has revolutionized all sections of the society. The popularity of social or community netwroking platform in the last decade has created new opening to analyze and study public opinions and sentiments for use in financial and social behavioral studies. On the other hand, machine-learning techniques have also laid a significant impact. Machine learning approaches are widely implemented in processing and analyzing sentiments. Extreme Learning Machine is the most favoured machine leaning classifier, which shows better results apart from support vector machine classifier. The working principle of extreme learning machine can represent results in categorical form. However, one-to-one sentiment classification may not disclose too much information, which could have been beneficial for research purpose. So multi-class sentiment has been discussed here with the help of extreme learning machine. The experimental results show that extreme leaning machine achieves better accuracy and performance in comparison to other machine learning classifiers.
机译:社交媒体平台彻底改变了整个社会。在过去的十年中,社交或社区网络化平台的普及为分析和研究用于金融和社会行为研究的公众意见和观点提供了新的机会。另一方面,机器学习技术也产生了重大影响。机器学习方法广泛用于处理和分析情感。极限学习机是最受青睐的机器学习分类器,除支持向量机分类器外,它显示出更好的结果。极限学习机的工作原理可以用分类形式表示结果。然而,一对一的情感分类可能不会透露太多信息,这可能对研究目的是有益的。因此,这里在极限学习机的帮助下讨论了多类情感。实验结果表明,与其他机器学习分类器相比,极限学习机具有更好的精度和性能。

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