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Hybrid Manifold Embedding

机译:混合流形嵌入

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摘要

In this brief, we present a novel supervised manifold learning framework dubbed hybrid manifold embedding (HyME). Unlike most of the existing supervised manifold learning algorithms that give linear explicit mapping functions, the HyME aims to provide a more general nonlinear explicit mapping function by performing a two-layer learning procedure. In the first layer, a new clustering strategy called geodesic clustering is proposed to divide the original data set into several subsets with minimum nonlinearity. In the second layer, a supervised dimensionality reduction scheme called locally conjugate discriminant projection is performed on each subset for maximizing the discriminant information and minimizing the dimension redundancy simultaneously in the reduced low-dimensional space. By integrating these two layers in a unified mapping function, a supervised manifold embedding framework is established to describe both global and local manifold structure as well as to preserve the discriminative ability in the learned subspace. Experiments on various data sets validate the effectiveness of the proposed method.
机译:在本文中,我们提出了一种新型的监督流形学习框架,称为混合流形嵌入(HyME)。与大多数现有的提供线性显式映射功能的有监督流形学习算法不同,HyME旨在通过执行两层学习过程来提供更通用的非线性显式映射功能。在第一层中,提出了一种称为测地线聚类的新聚类策略,以将原始数据集划分为具有最小非线性的几个子集。在第二层中,在每个子集上执行被称为局部共轭判别投影的有监督的降维方案,以在最小化的低维空间中最大化判别信息并同时最小化维冗余。通过将这两层集成在统一的映射功能中,建立了一个监督的流形嵌入框架,以描述全局和局部流形结构,并保留学习子空间中的判别能力。在各种数据集上的实验证明了该方法的有效性。

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