Data-Driven Priors in the Maximum Entropy on the Mean Method for Linear Inverse Problems
2024-12-23Code Available0· sign in to hype
Matthew King-Roskamp, Rustum Choksi, Tim Hoheisel
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Abstract
We establish the theoretical framework for implementing the maximumn entropy on the mean (MEM) method for linear inverse problems in the setting of approximate (data-driven) priors. We prove a.s. convergence for empirical means and further develop general estimates for the difference between the MEM solutions with different priors and based upon the epigraphical distance between their respective log-moment generating functions. These estimates allow us to establish a rate of convergence in expectation for empirical means. We illustrate our results with denoising on MNIST and Fashion-MNIST data sets.