The Application and Research of C4.5 Algorithm

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In the sustainable development of private universities, stable teachers team is the guarantee of talent training. For colleges or universities, it has important significance to analysis the main factors which cause teachers loss.C4.5 algorithm is a kind of machine learning algorithm in the classification decision tree algorithm. Decision tree is the main technology of data mining classification and prediction. Through the survey data from the information, it establishes the teacher turnover tendency decision tree model using C4.5 algorithm to provide the decision-making basis for the university management work.

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1285-1288

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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