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Random Forests with Random Projections of the Output Space for High Dimensional Multi-label Classification

机译:高维多标签分类的输出空间随机投影的随机森林

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We adapt the idea of random projections applied to the output space, so as to enhance tree-based ensemble methods in the context of multi-label classification. We show how learning time complexity can be reduced without affecting computational complexity and accuracy of predictions. We also show that random output space projections may be used in order to reach different bias-variance tradeoffs, over a broad panel of benchmark problems, and that this may lead to improved accuracy while reducing significantly the computational burden of the learning stage.
机译:我们将随机投影的思想应用于输出空间,以便在多标签分类的背景下增强基于树的集成方法。我们展示了如何在不影响计算复杂性和预测准确性的情况下减少学习时间的复杂性。我们还表明,可以使用随机输出空间投影来在广泛的基准问题上达成不同的偏差-方差折衷,并且这可能会提高准确性,同时显着减少学习阶段的计算负担。

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