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Deep Nets for Local Manifold Learning

机译:用于本地流形学习的深网

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The problem of extending a function $f$ defined on a training data $mathcal{C}$ on an unknown manifold $mathbb{X}$ to the entire manifold and a tubular neighborhood of this manifold is considered in this paper. For $mathbb{X}$ embedded in a high dimensional ambient Euclidean space $mathbb{R|^D$, a deep learning algorithm is developed for finding a local coordinate system for the manifold extbf{without eigen--decomposition}, which reduces the problem to the classical problem of function approximation on a low dimensional cube. Deep nets (or multilayered neural networks) are proposed to accomplish this approximation scheme by using the training data. Our methods do not involve such optimization techniques as back--propagation, while assuring optimal (a priori) error bounds on the output in terms of the number of derivatives of the target function. In addition, these methods are universal, in that they do not require a prior knowledge of the smoothness of the target function, but adjust the accuracy of approximation locally and automatically, depending only upon the local smoothness of the target function. Our ideas are easily extended to solve both the pre--image problem and the out--of--sample extension problem, with a priori bounds on the growth of the function thus extended.
机译:本文考虑了将在未知流形$ mathbb {X} $上的训练数据$ mathcal {C} $上定义的函数$ f $扩展到整个流形和该流形的管状邻域的问题。对于嵌入在高维环境欧几里得空间$ mathbb {R | ^ D $}中的$ mathbb {X} $,开发了一种深度学习算法来为流形 textbf {无本征分解}查找局部坐标系,将问题简化为低维立方体上函数逼近的经典问题。提出了使用训练数据的深网(或多层神经网络)来完成这种近似方案。我们的方法不涉及诸如反向传播之类的优化技术,而是根据目标函数的导数来确保输出的最佳(先验)误差范围。另外,这些方法是通用的,因为它们不需要先验地了解目标函数的平滑度,而是仅根据目标函数的局部平滑度来局部且自动地调整近似精度。我们的想法很容易扩展,既解决了图像前问题又解决了样本外扩展问题,并且对扩展后的函数进行了先验限制。

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