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ITER: An Algorithm for Predictive Regression Rule Extraction

机译:ITER:一种预测回归规则提取的算法

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Various benchmarking studies have shown that artificial neural networks and support vector machines have a superior performance when compared to more traditional machine learning techniques. The main resistance against these newer techniques is based on their lack of interpretability: it is difficult for the human analyst to understand the motivation behind these models' decisions. Various rule extraction techniques have been proposed to overcome this opacity restriction. However, most of these extraction techniques are devised for classification and only few algorithms can deal with regression problems. In this paper, we present ITER, a new algorithm for pedagogical regression rule extraction. Based on a trained 'black box' model, ITER is able to extract human-understandable regression rules. Experiments show that the extracted model performs well in comparison with CART regression trees and various other techniques.
机译:各种基准测试研究表明,与更传统的机器学习技术相比,人工神经网络和支持向量机具有出色的性能。对这些较新技术的主要抵抗是基于缺乏可解释性:人类分析师难以理解这些模型决策背后的动机。已经提出了各种规则提取技术来克服这种不透明度限制。然而,大多数这些提取技术都设计用于分类,只有很少的算法可以处理回归问题。在本文中,我们呈现了一种新的教学回归规则提取算法。基于训练有素的“黑匣子”模型,ITER能够提取人类可理解的回归规则。实验表明,与购物车回归树和各种其他技术相比,提取的模型表现良好。

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