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Prediction Analysis Techniques of Data Mining:A Review


Affiliations
1 Department of Computer Science & IT, Central University, Jammu, India
 

The technique through which important information is extracted from the raw data in data sets is known as data mining. The future scenarios related to current data can be predicted with the help of prediction analysis technique provided under data mining. Clustering and classification forms the basis of prediction analysis. Numerous techniques have been proposed by various researchers in order to perform prediction analysis on various real-time applications. This paper describes the various techniques of prediction analysis proposed by various researchers. The paper also presents a review and analysis of these techniques based on parameters such as algorithms and techniques, datasets, attributes and tools used for analysis.

Keywords

Prediction Analysis, Classification, Clustering, K-Means, SVM (Support Vector Machine).
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  • Prediction Analysis Techniques of Data Mining:A Review

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Authors

Adeep Malmotra
Department of Computer Science & IT, Central University, Jammu, India
Bhavna Arora
Department of Computer Science & IT, Central University, Jammu, India

Abstract


The technique through which important information is extracted from the raw data in data sets is known as data mining. The future scenarios related to current data can be predicted with the help of prediction analysis technique provided under data mining. Clustering and classification forms the basis of prediction analysis. Numerous techniques have been proposed by various researchers in order to perform prediction analysis on various real-time applications. This paper describes the various techniques of prediction analysis proposed by various researchers. The paper also presents a review and analysis of these techniques based on parameters such as algorithms and techniques, datasets, attributes and tools used for analysis.

Keywords


Prediction Analysis, Classification, Clustering, K-Means, SVM (Support Vector Machine).

References