LGCAMLFeb 7, 2018

Dimension Reduction Using Active Manifolds

arXiv:1802.04178v11 citations
Originality Incremental advance
AI Analysis

This addresses computational challenges in high-dimensional modeling for scientists and engineers, though it appears incremental over existing subspace methods.

The researchers tackled the problem of approximating high-dimensional functions with sparse observations by developing Active Manifolds, a nonlinear alternative to Active Subspaces that improves estimation accuracy and visualization.

Scientists and engineers rely on accurate mathematical models to quantify the objects of their studies, which are often high-dimensional. Unfortunately, high-dimensional models are inherently difficult, i.e. when observations are sparse or expensive to determine. One way to address this problem is to approximate the original model with fewer input dimensions. Our project goal was to recover a function f that takes n inputs and returns one output, where n is potentially large. For any given n-tuple, we assume that we can observe a sample of the gradient and output of the function but it is computationally expensive to do so. This project was inspired by an approach known as Active Subspaces, which works by linearly projecting to a linear subspace where the function changes most on average. Our research gives mathematical developments informing a novel algorithm for this problem. Our approach, Active Manifolds, increases accuracy by seeking nonlinear analogues that approximate the function. The benefits of our approach are eliminated unprincipled parameter, choices, guaranteed accessible visualization, and improved estimation accuracy.

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