2020
DOI: 10.48550/arxiv.2007.13243
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Scalable Derivative-Free Optimization for Nonlinear Least-Squares Problems

Abstract: Derivative-free-or zeroth-order-optimization (DFO) has gained recent attention for its ability to solve problems in a variety of application areas, including machine learning, particularly involving objectives which are stochastic and/or expensive to compute. In this work, we develop a novel model-based DFO method for solving nonlinear least-squares problems. We improve on state-of-the-art DFO by performing dimensionality reduction in the observational space using sketching methods, avoiding the construction o… Show more

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