广义随机优势分类器的统计比较

C. Jansen, Malte Nalenz, G. Schollmeyer, Thomas Augustin
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引用次数: 5

摘要

尽管这是机器学习算法发展的一个关键问题,但对于如何根据几个标准在多个数据集上比较分类器,仍然没有达成共识。每个比较框架都面临(至少)三个基本挑战:质量标准的多样性,数据集的多样性和数据集选择的随机性。在本文中,我们通过采用决策理论的最新发展,为生动的辩论增添了新的观点。基于所谓的偏好系统,我们的框架根据随机优势的广义概念对分类器进行排序,这有力地规避了繁琐的,甚至是自相矛盾的,对集合的依赖。此外,我们还证明了广义随机优势可以通过求解易于处理的线性程序来操作,并且采用自适应的双样本观察随机化检验进行统计检验。这确实产生了一个强大的框架,用于同时针对多个质量标准对多个数据集上的分类器进行统计比较。我们在模拟研究中使用一组标准基准数据集来说明和研究我们的框架。
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Statistical Comparisons of Classifiers by Generalized Stochastic Dominance
Although being a crucial question for the development of machine learning algorithms, there is still no consensus on how to compare classifiers over multiple data sets with respect to several criteria. Every comparison framework is confronted with (at least) three fundamental challenges: the multiplicity of quality criteria, the multiplicity of data sets and the randomness of the selection of data sets. In this paper, we add a fresh view to the vivid debate by adopting recent developments in decision theory. Based on so-called preference systems, our framework ranks classifiers by a generalized concept of stochastic dominance, which powerfully circumvents the cumbersome, and often even self-contradictory, reliance on aggregates. Moreover, we show that generalized stochastic dominance can be operationalized by solving easy-to-handle linear programs and moreover statistically tested employing an adapted two-sample observation-randomization test. This yields indeed a powerful framework for the statistical comparison of classifiers over multiple data sets with respect to multiple quality criteria simultaneously. We illustrate and investigate our framework in a simulation study and with a set of standard benchmark data sets.
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