有趣的回归和模型树通过变量的限制

Rikard König, U. Johansson, A. Lindqvist, Peter Brattberg
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引用次数: 0

摘要

本文的总体目的是提出一种创建有趣的回归树和模型树的新技术。有趣的模型在这里被定义为满足某些领域相关限制的模型,这些限制是关于如何在模型中使用变量的。建议的技术名为reem,是M5的扩展,它可以在创建回归和模型树时强制变量约束。为了评估reem,进行了两个案例研究,其中第一个涉及高尔夫球手技能的建模,第二个涉及卡车油耗的建模。两个案例研究都有由领域专家定义的可变约束,这些约束应该被满足,以使模型被认为是有趣的。当用于高尔夫球手技能建模时,reem创建的回归树的准确性略低于M5s回归树。然而,用reem创建的模型被高尔夫教学专业人士认为很有趣,而M5模型则不然。在第二个案例研究中,reem根据M5s模型树和汽车行业中常用的半自动化方法进行评估。在这里,实验表明reem可以实现与M5相当的预测性能,并且明显优于半自动化方法,同时满足有关有趣模型的约束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interesting regression- and model trees through variable restrictions
The overall purpose of this paper is to suggest a new technique for creating interesting regression- and model trees. Interesting models are here defined as models that fulfill some domain dependent restriction of how variables can be used in the models. The suggested technique, named ReReM, is an extension of M5 which can enforce variable constraints while creating regression and model trees. To evaluate ReReM, two case studies were conducted where the first concerned modeling of golf player skill, and the second modeling of fuel consumption in trucks. Both case studies had variable constraints, defined by domain experts, that should be fulfilled for models to be deemed interesting. When used for modeling golf player skill, ReReM created regression trees that were slightly less accurate than M5s regression trees. However, the models created with ReReM were deemed to be interesting by a golf teaching professional while the M5 models were not. In the second case study, ReReM was evaluated against M5s model trees and a semi-automated approach often used in the automotive industry. Here, experiments showed that ReReM could achieve a predictive performance comparable to M5 and clearly better than a semi-automated approach, while fulfilling the constraints regarding interesting models.
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