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Non-redundant Spectral Dimensionality Reduction

机译:非冗余频谱降维

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摘要

Spectral dimensionality reduction algorithms are widely used in numerous domains, including for recognition, segmentation, tracking and visualization. However, despite their popularity, these algorithms suffer from a major limitation known as the "repeated eigen-directions" phenomenon. That is, many of the embedding coordinates they produce typically capture the same direction along the data manifold. This leads to redundant and inefficient representations that do not reveal the true intrinsic dimensionality of the data. In this paper, we propose a general method for avoiding redundancy in spectral algorithms. Our approach relies on replacing the orthogonality constraints underlying those methods by unpredictability constraints. Specifically, we require that each embedding coordinate be unpredictable (in the statistical sense) from all previous ones. We prove that these constraints necessarily prevent redundancy, and provide a simple technique to incorporate them into existing methods. As we illustrate on challenging high-dimensional scenarios, our approach produces significantly more informative and compact representations, which improve visualization and classification tasks.
机译:光谱降维算法已广泛用于许多领域,包括识别,分割,跟踪和可视化。但是,尽管它们很流行,但这些算法仍受到称为“重复特征方向”现象的主要限制。也就是说,它们产生的许多嵌入坐标通常沿数据流形捕获相同的方向。这导致冗余和低效的表示不能揭示数据的真实内在维数。在本文中,我们提出了一种避免频谱算法冗余的通用方法。我们的方法依赖于用不可预测性约束替换那些方法背后的正交性约束。具体来说,我们要求每个嵌入坐标(从统计意义上来说)是所有先前坐标都不可预测的。我们证明了这些约束必定会阻止冗余,并提供了一种简单的技术将它们合并到现有方法中。正如我们在具有挑战性的高维场景中所举例说明的那样,我们的方法产生的信息量大且紧凑,可以改善可视化和分类任务。

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