Induction learning of decision tree based on ID3 algorithm is an important branch of inductive learning now, which can be used to automatic acquisition of knowledge.
基于ID 3算法的决策树归纳学习是归纳学习的一个重要分支,可用于知识的自动获取过程。
Simplifying trees is the key part of decision tree induction learning.
树的简化是决策树归纳学习中关键的部分。
Based on the above analysis, a new algorithm of decision tree induction is proposed.
基于上述分析,提出了决策树优化算法。
With the thorough analysis on the algorithm of decision tree induction, we established a classification and prediction system based on C4.5 and accomplished the integration with the LMIS system.
通过对决策树算法的深入分析,我们围绕着C4.5决策树生成算法建立了一个分类预测系统并实现了与劳动力市场信息管理系统(LMIS)的集成。
The new algorithm combines the merit of decision tree induction method and naive Bayesian method. It retains the good interpretability of decision tree and has good incremental learning ability.
该算法综合了决策树方法和贝叶斯方法的优点,既有良好的可解释性,又有良好的增量学习能力。
Decision tree induction is a kind of the induction learning.
决策树归纳是归纳学习的一种。
Decision tree induction is a kind of the induction learning.
决策树归纳是归纳学习的一种。
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