IPASJ INTERNATIONAL JOURNAL OF COMPUTER SCIENCE(IIJCS)

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ISSN 2321-5992

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A study and review of applications of Machine Learning Classification Algorithms in Education Sector., Authors : Prof. Vidhya Rao,IPASJ INTERNATIONAL JOURNAL OF COMPUTER SCIENCE(IIJCS) ,http://www.ipasj.org/IIJCS/IIJCS.htm

Volume & Issue no: Volume 8, Issue 2, February 2020


Title:
A study and review of applications of Machine Learning Classification Algorithms in Education Sector.
Author Name:
Prof. Vidhya Rao
Abstract:
Abstract: The term machine learning is the study of algorithms that the computer systems use to perform tasks without explicitly instructions. It is a subset of Artificial Intelligence. The machine takes large amount of data, gets trained itself and learns from the data. It predicts outcomes after it has learnt from the past data. Machine learning algorithms are classified as supervised, unsupervised, semi-supervised and reinforcement types. The classification and regression algorithms fall under the supervised category. Clustering and association are grouped under the unsupervised learning. The main objective of this paper is to emphasize the types and study of machine learning classification algorithms. Educational sector produces huge amount of educational data. This data can be used for various purposes such as predicting the performance, dropout rates, retention, failure of students and evaluating their progress .This paper accumulates and refers to the literature related to machine learning classification algorithms, identifies implementation of machine learning classification algorithms and their applications in education domain. Keyword: Machine Learning, Education domain, Classification algorithms
Cite this article:
Prof. Vidhya Rao , " A study and review of applications of Machine Learning Classification Algorithms in Education Sector. " , IPASJ INTERNATIONAL JOURNAL OF COMPUTER SCIENCE(IIJCS), Volume 8, Issue 2, February 2020 , pp. 012-019 , ISSN 2321-5992.
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