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An Application of Genetic Algorithm in Data Analysis

Swati Jain, Vikas Kumar Jain, Sunil Kumar Kashyap

Abstract


ABSTRACT
Genetic Algorithm (GA) is applied to analyze the data. This paper presents the significance of GA in data analysis. The prediction, optimization, generalisation, connectedness, compactness and boundedness are the key advantages of this application. GA based data analysis considers the generation of the homomorphic data. This data is the filtered data but useful for the further analysis contained minimum errors.

Keywords: Data analysis, GA

Cite this Article: Swati Jain, Vikas Kumar Jain, Sunil Kumar Kashyap. An Application of Genetic Algorithm in Data Analysis. International Journal of Digital Communication and Analog Signals. 2019; 5(1): 1–7p.

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DOI: https://doi.org/10.37628/jdcas.v5i1.1094

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