基于粗糙集理论的CART改进算法

Weiguang Wang, Cong Wang, W. Gao, Jinbin Li
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引用次数: 6

摘要

数据预测与分类是医学营养数据分析领域的关键方法。由于决策树算法具有直观、高效、易于理解等特点,在该领域得到了广泛的应用。然而,从决策树中提取的分类规则并不是最简单有效的。分析了经典的决策树算法CART,提出了一种新的改进算法R2-CART。该高级算法的核心思想是为了简化分类规则和分类树,将CART算法与粗糙集理论相结合,对决策树的分类规则进行属性约简和规则约简。实验将原始CART算法与改进后的算法进行了比较,结果表明改进后的算法在实现简单高效的分类规则集的同时,具有更好的分类效率。该改进算法对大规模医疗营养数据的分类和预测分析具有潜在的实用价值。
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An Improved Algorithm for CART Based on the Rough Set Theory
Data prediction and classification is a critical method in medical nutrition data analysis area. As for the characteristics of being intuitive, efficient and easy to understand, the decision tree algorithm is widely used in this field. However, the classification rules extracted from the decision tree are not the most simple and efficient. The paper analyzes the classical decision tree algorithm CART, and proposes a new improved algorithm R2-CART. The core idea of the advanced algorithm is, in order to simplify the classification rules and tree, combining CART algorithm with rough set theory to conduct the attribute and rule reduction on the classification rules of decision tree. The experiment, which compares the Original CART algorithm with the improved algorithm, shows that the improved algorithm has much better classification efficiency with achieving a simple and efficient classification rule set at the same time. This improved algorithm has a potential practical value for large-scale medical nutrition data of classification and predictive analysis.
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