The Analysis and Application of the C4.5 Algorithm in Decision Tree Technology

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Abstract:

The Decision Tree technology, which is the main technology of the Data Mining classification and forecast, is the classifying rule that infers the Decision Tree manifestation through group of out-of-orders, the non-rule examples. Based on the research background of The Decision Tree’s concept, the C4.5 Algorithm and the construction of The Decision Tree, the using of C4.5 Decision Tree Algorithm was applied to result analysis of students’ score for the purpose of improving the teaching quality.

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Advanced Materials Research (Volumes 457-458)

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754-757

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January 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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