An Experimental Analysis of the Applications of Datamining Methods on Bigdata

Journal: Journal of Autonomous Intelligence DOI: 10.32629/jai.v2i3.59

Chittoju Naga Santhosh Kumar1, K S Reddy2

1. Professor, CSE, ANURAG, KODADA, JNTUH,
2. Researcher., Hyderabad India

Abstract

Data mining is a procedure of separating covered up, obscure, however possibly valuable data from gigantic data. Huge Data impactsly affects logical disclosures and worth creation. Data mining (DM) with Big Data has been broadly utilized in the lifecycle of electronic items that range from the structure and generation stages to the administration organize. A far reaching examination of DM with Big Data and a survey of its application in the phases of its lifecycle won't just profit scientists to create solid research. As of late huge data have turned into a trendy expression, which constrained the analysts to extend the current data mining methods to adapt to the advanced idea of data and to grow new scientific procedures. In this paper, we build up an exact assessment technique dependent on the standard of Design of Experiment. We apply this technique to assess data mining instruments and AI calculations towards structure huge data examination for media transmission checking data. Two contextual investigations are directed to give bits of knowledge of relations between the necessities of data examination and the decision of an instrument or calculation with regards to data investigation work processes.

 

Keywords

Key Words: Data Mining, Big Data, Knowledge Discovery Databases, Decision Tree, Cloud Data Mining, K-Closest Neighbor, Artificial Intelligence, Cluster

References

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Copyright © 2019 Chittoju Naga Santhosh Kumar, K S Reddy

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