Twitter sentiment analysis using deep learning methods

Adyan Marendra Ramadhani, H. Goo
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引用次数: 89

Abstract

The social media has Immense and popularity among all the services today. Data from SNS (Social Network Service) can be used for a lot of objectives such as prediction or sentiment analysis. Twitter is a SNS that has a huge data with user posting, with this significant amount of data, it has the potential of research related to text mining and could be subjected to sentiment analysis. But handling such a huge amount of unstructured data is a difficult task, machine learning is needed for handling such huge of data. Deep learning is of the machine learning method that use the deep feed forward neural network with many hidden layers in the term of neural network with the result of the experiment about 75%.
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使用深度学习方法进行Twitter情绪分析
社交媒体在当今所有服务中具有巨大的知名度。来自社交网络服务(SNS)的数据可以用于许多目标,如预测或情感分析。Twitter是一个拥有大量用户发布数据的社交网站,有了这些大量的数据,它就有了与文本挖掘相关的研究潜力,并可能成为情感分析的对象。但是处理如此庞大的非结构化数据是一项艰巨的任务,处理如此庞大的数据需要机器学习。深度学习是神经网络中使用具有多隐层的深度前馈神经网络的一种机器学习方法,实验结果约为75%。
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