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Employment Factor Correlation Analysis Using Self-Organizing Data Mining Based on GMDH Principle

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2 Author(s)
Li Nan ; Dept. of Manage. Sci. & Eng., Dalian Maritime Univ., Dalian ; Chen Yan

A new approach is suggested for designing and developing an employment influence factors correlation analysis application where GMDH principle is used for generating it more easily. This approach uses self-organizing data mining importing the concept of evolution based on principle of GMDH and enables the knowledge extraction process on a highly automated level and generates optimal complex model in an objective way. In correlation analysis of employment considering domestic economic factors, model structure is created automatically using self-organizing data mining technology and the internal correlations between these factors are found.

Published in:
Innovative Computing Information and Control, 2008. ICICIC '08. 3rd International Conference on

Date of Conference: 18-20 June 2008

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