Subgradient Langevin methods for sampling from nonsmooth potentials
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Publication:6633041
DOI10.1137/23m1591451MaRDI QIDQ6633041
Thomas Pock, Martin Holler, Andreas Habring
Publication date: 5 November 2024
Published in: SIAM Journal on Mathematics of Data Science (Search for Journal in Brave)
inverse problemsBayesian inferenceMarkov chain Monte Carlo methodsunadjusted Langevin algorithmnonsmooth samplingBayesian imaging
Monte Carlo methods (65C05) Computing methodologies for image processing (68U10) Numerical analysis or methods applied to Markov chains (65C40)
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