Predictive big data analytic on demonetization data using support vector machine

被引:0
作者
Nattar Kannan
S. Sivasubramanian
M. Kaliappan
S. Vimal
A. Suresh
机构
[1] Dhanalakshmi College of Engineering,Department of CSE
[2] National Engineering College,Department of Information Technology
[3] Nehru Institute of Engineering and Technology,Department of CSE
来源
Cluster Computing | 2019年 / 22卷
关键词
Descriptive analysis; Predictive analysis; Support vector machine; Sentiment analysis;
D O I
暂无
中图分类号
学科分类号
摘要
Predictive analytics is the branch of the advanced analytics which makes the user to predict the future events with current statistics. The patterns found in historical and transactional data can be used to identify risks and opportunities for future. Predictive analytics models capture relationships among many factors to assess risk with a particular set of conditions to assign a score. This paper provides predictive analysis on demonetization data using support vector machine approach (PAD-SVM). The proposed PAD-SVM system involved three stages including preprocessing stage, descriptive analysis stage, and prescriptive analysis. The pre-processing stage involves cleaning the obtained data, performing missing value treatment and splitting the necessary data from the tweets. The descriptive analysis stage involves finding the most influential people regarding this subject and performing analytical functionalities. Semantic analysis also is performed to find the sentiment values of the users and to find the compound polarity of each tweet. Predictive analysis is performed to view the current mindset of people and the society reacts to the issue in the current time. This analysis is performed to find out the overall view point of the society and their view may change in the near-future in regarding to the scheme of demonetization as well.
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页码:14709 / 14720
页数:11
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