Manifold Approximation by Moving Least-Squares Projection (MMLS)
Barak Sober, David Levin

TL;DR
This paper introduces a nonlinear moving least-squares projection method to approximate smooth low-dimensional manifolds from noisy high-dimensional data, enabling efficient operations without explicit dimension reduction.
Contribution
It proposes a novel manifold approximation technique that is linear in high dimensions, highly smooth, and avoids data distortion typical of traditional dimension reduction methods.
Findings
The method achieves high approximation order of O(h^{m+1})
The approximant is infinitely smooth under mild assumptions
It enables direct operations on high-dimensional data without explicit dimension reduction
Abstract
In order to avoid the curse of dimensionality, frequently encountered in Big Data analysis, there was a vast development in the field of linear and nonlinear dimension reduction techniques in recent years. These techniques (sometimes referred to as manifold learning) assume that the scattered input data is lying on a lower dimensional manifold, thus the high dimensionality problem can be overcome by learning the lower dimensionality behavior. However, in real life applications, data is often very noisy. In this work, we propose a method to approximate a -dimensional smooth submanifold of () based upon noisy scattered data points (i.e., a data cloud). We assume that the data points are located "near" the lower dimensional manifold and suggest a non-linear moving least-squares projection on an approximating -dimensional manifold. Under…
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