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Manifold mapping learning by regression tree boosting

机译:通过回归树增强的流形映射学习

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摘要

Manifold learning has shown powerful information processing capability for high-dimensional data. In this paper, we proposed a manifold mapping learning algorithm to alleviate the shortage of traditional methods and broaden the applications of manifold learning. The mapping is achieved by using the regression tree boosting, which is a strong ensemble learner composed by a group of regression trees as weak learners in the way of LBoost. A set of verification experiments are conducted on both synthetic and real-world data sets. And the results have demonstrated that the algorithm can perform well on both regression and prediction applications.
机译:流形学习已显示出强大的针对高维数据的信息处理能力。本文提出了一种流形映射学习算法,以减轻传统方法的不足,拓宽流形学习的应用范围。映射是通过使用回归树增强来实现的,回归树增强是一种强大的整体学习器,由一组回归树作为LBoost的弱学习者组成。对综合和真实数据集都进行了一组验证实验。结果表明,该算法在回归和预测应用中都能表现良好。

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