Novel min-max reformulations of Linear Inverse Problems

5 Jul 2020Mohammed Rayyan SheriffDebasish Chatterjee

In this article, we dwell into the class of so-called ill-posed Linear Inverse Problems (LIP) which simply refers to the task of recovering the entire signal from its relatively few random linear measurements. Such problems arise in a variety of settings with applications ranging from medical image processing, recommender systems, etc... (read more)

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