A machine learning approach to analyze customer satisfaction from airline tweets

被引:0
作者
Sachin Kumar
Mikhail Zymbler
机构
[1] South Ural State University,Department of System Programming
来源
Journal of Big Data | / 6卷
关键词
Twitter; Machine learning; Convolutional neural network; Association analysis; Customer satisfaction;
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学科分类号
摘要
Customer’s experience is one of the important concern for airline industries. Twitter is one of the popular social media platform where flight travelers share their feedbacks in the form of tweets. This study presents a machine learning approach to analyze the tweets to improve the customer’s experience. Features were extracted from the tweets using word embedding with Glove dictionary approach and n-gram approach. Further, SVM (support vector machine) and several ANN (artificial neural network) architectures were considered to develop classification model that maps the tweet into positive and negative category. Additionally, convolutional neural network (CNN) were developed to classify the tweets and the results were compared with the most accurate model among SVM and several ANN architectures. It was found that CNN outperformed SVM and ANN models. In the end, association rule mining have been performed on different categories of tweets to map the relationship with sentiment categories. The results show that interesting associations were identified that certainly helps the airline industries to improve their customer’s experience.
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