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User Satisfaction Levels Sentiment Analysis Toward Goods Delivery Service On Twitter Using Support Vector Machine Algorithm (SVM)

机译:使用支持向量机算法(SVM)的Twitter上的商品交付服务的用户满意度分析

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The data amount is experiencing rapid growth in this era. Data can be in the form of text, images, sound or video. Social media has become one of the factors of data growth. Every person can express their feelings on social media from these opinions can be analyzed. In this study sentiment analysis uses the support vector machine algorithm. The first step is crawling data using the Twitter API with keywords. After collecting data, the preprocessing process is carried out, after the preprocessing process the feature is retrieved for each tweet, the features obtained are then collected into a feature list. The feature list is then transformed into a feature vector in binary form and then transformed using the TF-IDF method. The dataset consists of 2 data, namely training and testing. The training is labelled manually. To test the performance of the algorithm used the K-Fold Cross Validation method. The test results are obtained an average accuracy of 98% with the composition of training data and testing data. From these results, the Support Vector Machine method can be used for sentiment classification of JNE twitter data.
机译:在这个时代,数据量正在快速增长。数据可以是文本,图像,声音或视频的形式。社交媒体已成为数据增长的因素之一。每个人都可以在社交媒体上表达自己的感受,从这些观点可以进行分析。在这项研究中,情感分析使用支持向量机算法。第一步是使用带有关键字的Twitter API抓取数据。在收集数据之后,执行预处理过程,在预处理过程之后,为每个推文检索特征,然后将获得的特征收集到特征列表中。然后将特征列表转换为二进制形式的特征向量,然后使用TF-IDF方法进行转换。该数据集由2个数据组成,即训练和测试。培训被手动标记。为了测试算法的性能,使用了K折交叉验证方法。结合训练数据和测试数据,测试结果的平均准确度达到98%。根据这些结果,支持向量机方法可用于JNE twitter数据的情感分类。

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