Twitter Sentiment Analysis About Public Opinion on 4G Smartfren Network Services Using Convolutional Neural Network

Muhammad Radifan Aldiansyah, P. S. Sasongko
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引用次数: 4

Abstract

Sentiment Analysis was a process for identifying whether a source of text contains certain opinions, emotions, and polarity. Twitter Sentiment Analysis was a process for identifying sentiment and polarity on tweet. Twitter Sentiment Analysis provided a way for did survey about public sentiment to product, or particular even through collections of tweet. Main problem in sentiment identifying was how to determine classification model that gave high accuracy to classifying sentiment of tweet. One of the method for classifying sentiment of tweet was Deep Learning. Convolutional Neural Network (CNN) was special type of architecture from Deep Learning that its architecture had convolution layer. Convolution layer was important for extract relevant feature from text for classifying sentiment. The objective of this research was for found out the best CNN model for classifying sentiment of tweet. By using a dataset of tweets about public opinion on the Smartfren 4G network service, we searched the best CNN model using 6 combination parameters, that is the computational eficiency method, window size, and dimension of word embedding for parameters in Word2Vec Skip-gram model, then activation function in convolution layer, dropout rate, and pool size in pooling layer for parameters in CNN. The test is done using 10-fold cross validation for each search for the best parameter value and produced the best CNN model with an accuracy value of 88,21%.
基于卷积神经网络的4G smartfriend网络服务舆情推特情绪分析
情感分析是一个识别文本来源是否包含某些观点、情感和极性的过程。推特情绪分析是一个识别推特上的情绪和极性的过程。推特情绪分析为公众对产品的情绪调查提供了一种方法,特别是通过推特的收集。情感识别的主要问题是如何确定分类模型,使tweet的情感分类具有较高的准确率。其中一种分类推文情绪的方法是深度学习。卷积神经网络(Convolutional Neural Network, CNN)是一种来自深度学习的特殊架构,它的架构有卷积层。卷积层对于从文本中提取相关特征进行情感分类非常重要。本研究的目的是找出tweet情感分类的最佳CNN模型。利用Smartfren 4G网络服务的舆论推文数据集,我们使用6个组合参数,即Word2Vec jump -gram模型中参数的计算效率方法、窗口大小、词嵌入维数,以及卷积层激活函数、drop - out率、池化层池大小来搜索CNN中参数的最佳CNN模型。每次搜索最佳参数值,使用10倍交叉验证进行测试,产生最佳CNN模型,准确率值为88.21%。
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