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Locally Multidimensional Scaling for Nonlinear Dimensionality Reduction

机译:非线性维度减少的局部多维缩放

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A data embedding method is introduced to configure global coordinates of data using local distances as input. The method applies classical multidimensional scaling within a neighborhood of each data point. The local models are then aligned to derive global coordinates in order to minimize a residual measure. The residual measure has a quadratic form of resulting global coordinates, which makes the alignment problem solved analytically by using an eigensolver. Experiments show that the method produces less deformed embedding results than locally linear embedding. Variations of the method and possible extensions are also discussed.
机译:引入数据嵌入方法以将本地距离作为输入配置数据的全局坐标。该方法在每个数据点的邻域内应用经典的多维缩放。然后将本地模型对齐以导出全局坐标,以便最小化残余度量。残余措施具有二次形式的全局坐标,这使得通过使用Eigensolver分析对准问题。实验表明,该方法产生比局部线性嵌入更少的嵌入结果。还讨论了方法和可能的延伸的变化。

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