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Joint Dimensionality Reduction and Metric Learning: A Geometric Take

机译:联合维度减少和度量学习:几何接受

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To be tractable and robust to data noise, existing metric learning algorithms commonly rely on PCA as a pre-processing step. How can we know, however, that PCA, or any other specific dimensionality reduction technique, is the method of choice for the problem at hand? The answer is simple: We cannot! To address this issue, in this paper, we develop a Riemannian framework to jointly learn a mapping performing dimensionality reduction and a metric in the induced space. Our experiments evidence that, while we directly work on high-dimensional features, our approach yields competitive runtimes with and higher accuracy than state-of-the-art metric learning algorithms.
机译:要对数据噪声进行易行和强大,现有的度量学习算法通常依赖PCA作为预处理步骤。然而,我们如何知道PCA或任何其他特定的维度减少技术,是手头问题的选择方法?答案很简单:我们不能!为了解决这个问题,在本文中,我们开发了一个riemannian框架,共同学习映射执行维度减少和诱导空间的度量。我们的实验证据证明,虽然我们直接锻炼高维功能,但我们的方法与最先进的公制学习算法产生竞争性的运行时间和更高的准确性。

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