2023
DOI: 10.1002/nme.7207
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Probabilistic partition of unity networks for high‐dimensional regression problems

Abstract: We explore the probabilistic partition of unity network (PPOU-Net) model in the context of high-dimensional regression problems and propose a general framework focusing on adaptive dimensionality reduction. With the proposed framework, the target function is approximated by a mixture of experts model on a low-dimensional manifold, where each cluster is associated with a fixed-degree polynomial. We present a training strategy that leverages the expectation maximization (EM) algorithm. During the training, we al… Show more

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References 77 publications
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