首页> 外文会议>European conference on machine learning and knowledge discovery in databases;ECML PKDD 2011 >PerTurbo: A New Classification Algorithm Based on the Spectrum Perturbations of the Laplace-Beltrami Operator
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PerTurbo: A New Classification Algorithm Based on the Spectrum Perturbations of the Laplace-Beltrami Operator

机译:PerTurbo:一种基于Laplace-Beltrami算子的频谱扰动的新分类算法

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摘要

PerTurbo, an original, non-parametric and efficient classification method is presented here. In our framework, the manifold of each class is characterized by its Laplace-Beltrami operator, which is evaluated with classical methods involving the graph Laplacian. The classification criterion is established thanks to a measure of the magnitude of the spectrum perturbation of this operator. The first experiments show good performances against classical algorithms of the state-of-the-art. Moreover, from this measure is derived an efficient policy to design sampling queries in a context of active learning. Performances collected over toy examples and real world datasets assess the qualities of this strategy.
机译:这里介绍了Perturbo,原始,非参数和有效的分类方法。在我们的框架中,每个类的歧管的特点是其Laplace-Beltrami运算符,该算子通过涉及图拉普拉斯的古典方法进行评估。由于该操作员的频谱扰动的幅度衡量,建立了分类标准。第一个实验表现出对最先进的经典算法的良好性能。此外,从该措施中,从主动学习的语境中设计有效的策略来设计采样查询。在玩具例子和现实世界数据集收集的表演评估了这一战略的质量。

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