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Role of Machine Learning in the Classification of Data over Social Media Platforms

Issue Abstract

Abstract

            The demand for data classification operations on social media platforms such as Twitter, Facebook, and WhatsApp has been increasing for the past two decades. Various methodologies, including machine learning and various soft computing techniques, have been employed for data classification. Machine learning has been noted for its substantial impact on data classification. Several research studies have been conducted on data classification using machine learning. However, the present study effort has been hindered by restricted performance and a lack of accuracy. The current research has mostly concentrated on utilising machine learning techniques to classify data on social media platforms. The objective is to improve the precision of a classification model that utilises machine learning techniques. The proposed study focusses on analysing comments made on social platforms to classify them and enhance sentiment analysis and opinion mining.

Keywords: Machine Learning; Social Media, Data

 


Author Information
K Chandramouli Raju, Vijaya Rudraraju, M Siva Krishnam Raju, Research Scholar , School of Management Studies, GIET University, Gunpur, Odisha, Professor, School of Management Studies, GIET University, Professor, School of Management Studies, GIET
Issue No
9
Volume No
10
Issue Publish Date
26 Sep 2024
Issue Pages
18-29

Issue References

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