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Manifold learning using geodesic entropic graphs

机译:使用测地熵图进行流形学习

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Summary form only given. In the manifold learning problem one seeks to discover a smooth low dimensional surface, i.e., a manifold embedded in a higher dimensional linear vector space, based on a set of measured sample points on the surface. In this paper we consider the closely related problem of estimating the manifold's intrinsic dimension and the intrinsic entropy of the sample points. Specifically, we view the sample points as realizations of an unknown multivariate density supported on an unknown smooth manifold. We present a novel geometrical probability approach, called the geodesic entropic graph (GET) method, to obtaining asymptotically consistent estimates of the manifold dimension and the Renyi /spl alpha/-entropy of the sample density on the manifold. The GET approach is striking in its simplicity and does not require reconstructing the manifold or estimating the multivariate density of the samples. The GET method simply constructs an entropic graph, e.g., a minimal spanning tree (MST) or k-nearest neighbor graph (k-NNG), to estimate the geodesic neighborhoods connecting points on the manifold. The growth rate of the length functional of the entropic graph is then used to simultaneously estimate manifold dimension and sample entropy.
机译:摘要表格仅给出。在歧管学习问题中,基于表面上的一组测量的采样点,旨在发现光滑的低尺寸表面,即嵌入在更高尺寸线性矢量空间中的歧管。在本文中,我们考虑估计歧管内在尺寸的密切相关问题和样品点的内在熵。具体地,我们将样本点视为在未知平滑歧管上支持的未知多级密度的实现。我们提出了一种新颖的几何概率方法,称为测地熵图(GET)方法,以获得歧管尺寸的渐近一致的估计和歧管上的样品密度的renyi / splα/对应。 Get方法在其简单性上引人注目,并且不需要重建歧管或估计样品的多变量密度。 GET方法简单地构造熵图,例如,最小的生成树(MST)或k最近邻图(K-NNG),以估计连接歧管上的连接点的测地区邻域。然后使用熵图的长度功能的生长速率同时估计歧管尺寸和样品熵。

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