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Gradient Boosting Machine with Partially Randomized Decision Trees

机译:具有部分随机决策树的梯度升压机

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The gradient boosting machine is a powerful ensemble-based machine learning method for solving regression problems. However, one of the difficulties of its using is a possible discontinuity of the regression function, which arises when regions of training data are not densely covered by training points. In order to overcome this difficulty and to reduce the computational complexity of the gradient boosting machine, we propose to apply the partially randomized trees which can be regarded as a special case of the extremely randomized trees applied to the gradient boosting. The gradient boosting machine with the partially randomized trees is illustrated by means of many numerical examples using synthetic and real data.
机译:梯度升压机是一种强大的基于集合的机器学习方法,用于解决回归问题。然而,它使用的困难之一是回归函数的可能不连续,这在训练数据区域不会被训练点密度密集地覆盖时出现。为了克服这种困难并降低梯度升压机的计算复杂性,我们建议应用部分随机的树木,其可以被认为是应用于梯度升压的极其随机树木的特殊情况。具有部分随机化树的梯度升压机通过使用合成和实际数据的许多数值示例来示出。

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