基于互补特征的回归决策树构建算法

S. Saltykov
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引用次数: 1

摘要

在所谓的解释人工智能中,需要建立小的模型,但对于分析师来说是准确和直观的。有必要形式化,哪些模型可以被分析师和决策者直观地理解和合理地感知。研究表明,利用累积的信息在一定意义上相互补充、互补的特征可以提高小回归决策树的准确性,使其更可信。提出了羽毛互补性的正式定义。提出了一种基于互补特征的回归决策树构建算法。描述了两层决策树的合理性条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithm of Building Regression Decision Tree Using Complementary Features
In the so-called explained artificial intelligence, there is a need to build small models, but accurate and intuitive for the analyst. It is necessary to formalize, which models are perceived by analysts and decision-makers as intuitively understandable and plausible.It’s shown that the use of accumulated information about additional to each other in some sense, complementary features can improve the accuracy of the small regression decision trees, as well as make them more plausible. The formal definition of the complementarities of the feathers is proposed. Algorithm of building regression decision tree with complementary features is presented. Condition of plausibility of two-levels decision tree is described.
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