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DIMAL: Deep Isometric Manifold Learning Using Sparse Geodesic Sampling

机译:DIMAL:使用稀疏测距采样深度等距歧管学习

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This paper explores a fully unsupervised deep learning approach for computing distance-preserving maps that generate low-dimensional embeddings for a certain class of manifolds. We use the Siamese configuration to train a neural network to solve the problem of least squares multidimensional scaling for generating maps that approximately preserve geodesic distances. By training with only a few landmarks, we show a significantly improved local and nonlocal generalization of the isometric mapping as compared to analogous non-parametric counterparts. Importantly, the combination of a deep-learning framework with a multidimensional scaling objective enables a numerical analysis of network architectures to aid in understanding their representation power. This provides a geometric perspective to the generalizability of deep learning.
机译:本文探讨了一种完全无监督的深度学习方法,用于计算为某类歧管产生低维嵌入的远程嵌入贴图。我们使用暹罗配置来训练神经网络来解决用于产生大约保留测地距的地图的多维缩放的最小二乘缩放问题。通过仅具有少数地标培训,与类似的非参数对应物相比,我们显示了等距映射的局部和非局部通用。重要的是,具有多维缩放目标的深度学习框架的组合使网络架构的数值分析能够帮助理解其代表性。这提供了对深度学习的普遍性的几何视角。

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