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Performance Assessment and Interpretation of Random Forests by Three-dimensional Visualizations

机译:三维可视化随机森林的性能评估和解释

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Ensemble learning techniques and in particular Random Forests have been one of the most successful machine learning approaches of the last decade. Despite their success, there exist barely suitable visualizations of Random Forests, which allow a fast and accurate understanding of how well they perform a certain task and what leads to this performance. This paper proposes an exemplar-driven visualization illustrating the most important key concepts of a Random Forest classifier, namely strength and correlation of the individual trees as well as strength of the whole forest. A visual inspection of the results enables not only an easy performance evaluation but also provides further insights why this performance was achieved and how parameters of the underlying Random Forest should be changed in order to further improve the performance. Although the paper focuses on Random Forests for classification tasks, the developed framework is by no means limited to that and can be easily applied to other tree-based ensemble learning methods.
机译:合奏学习技术和特定的随机森林是过去十年中最成功的机器学习方法之一。尽管取得了成功,但随机森林的勉强有很大的可视化,这允许快速准确地了解他们对某项任务的程度以及导致这种性能的原因。本文提出了一种示例性驱动的可视化,其示出了随机森林分类器的最重要关键概念,即各种树木的强度和相关性以及整个森林的强度。对结果的目视检查不仅可以轻松的性能评估,还提供了进一步的见解,为什么应该改变这种性能以及潜在的随机森林的参数,以进一步提高性能。虽然纸张侧重于随机林进行分类任务,但发达的框架绝不是仅限于此,并且可以轻松应用于其他基于树的集合学习方法。

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