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Transferred Dimensionality Reduction

机译:转移维度减少

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摘要

Dimensionality reduction is one of the widely used techniques for data analysis. However, it is often hard to get a demanded low-dimensional representation with only the unlabeled data, especially for the discriminative task. In this paper, we put forward a novel problem of Transferred Dimensionality Reduction, which is to do unsupervised discriminative dimensionality reduction with the help of related prior knowledge from other classes in the same type of concept. We propose an algorithm named Transferred Discriminative Analysis to tackle this problem. It uses clustering to generate class labels for the target unlabeled data, and use dimensionality reduction for them joint with prior labeled data to do subspace selection. This two steps run adaptively to find a better discriminative subspace, and get better clustering results simultaneously. The experimental results on both constrained and unconstrained face recognition demonstrate significant improvements of our algorithm over the state-of-the-art methods.
机译:减少维度是数据分析的广泛使用技术之一。然而,通常很难获得一个有所要求的低维表示,只有未标记的数据,特别是对于歧视任务。在本文中,我们提出了一种转移维度减少的新问题,这是根据来自同一类型概念的其他课程的相关事先知识进行无监督的歧视维度。我们提出了一种名为Trant Tradiviminative分析的算法来解决这个问题。它使用群集来为目标未标记数据生成类标签,并使用先前标记数据的关节使用维度减少,以进行子空间选择。这两个步骤自适应地运行以找到更好的鉴别子空间,并同时获得更好的聚类结果。受约束和无约束人面识的实验结果表明了我们在最先进的方法上的算法的显着改进。

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