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Heuristic Rule-Based Regression via Dynamic Reduction to Classification

机译:通过动态归类到分类的启发式基于规则的回归

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In this paper, we propose a novel approach for learning regression rules by transforming the regression problem into a classification problem. Unlike previous approaches to regression by classification, in our approach the discretization of the class variable is tightly integrated into the rule learning algorithm. The key idea is to dynamically define a region around the target value predicted by the rule, and considering all examples within that region as positive and all examples outside that region as negative. In this way, conventional rule learning heuristics may be used for inducing regression rules. Our results show that our heuristic algorithm outperforms approaches that use a static discretization of the target variable, and performs en par with other comparable rule-based approaches, albeit without reaching the performance of statistical approaches.
机译:在本文中,我们提出了一种通过将回归问题转换为分类问题来学习回归规则的新颖方法。与以前的通过分类回归的方法不同,在我们的方法中,将类变量的离散化紧密集成到规则学习算法中。关键思想是在规则预测的目标值周围动态定义一个区域,并将该区域内的所有示例视为正,将该区域以外的所有示例视为负。以此方式,常规规则学习试探法可用于推导回归规则。我们的结果表明,尽管未达到统计方法的性能,我们的启发式算法的性能优于使用目标变量的静态离散化的方法,并且与其他可比较的基于规则的方法相比表现出色。

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