December 2014
International Journal of Research in Commerce, IT & Management;Dec2014, Vol. 4 Issue 12, p41
Academic Journal
In this paper, the thought of data mining was précised and its importance towards its methodologies was showed. The data mining based on Neural Network and Genetic Algorithm is researched in detail and the key technology and ways to achieve the data mining on Neural Network and Genetic Algorithm are also surveyed. This paper also conducts a formal review of the area of rule extraction from ANN and GA.


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