Large Scale Signal Detection: A Unified Perspective
Abstract
There is an overwhelmingly large literature and algorithms already available on `large scale inference problems' based on different modeling techniques and cultures. Our primary goal in this paper is not to add one more new methodology to the existing toolbox but instead (a) to clarify the mystery how these different simultaneous inference methods are connected, (b) to provide an alternative more intuitive derivation of the formulas that leads to simpler expressions, and (c) to develop a unified algorithm for practitioners. A detailed discussion on representation, estimation, inference, and model selection is given. Applications to a variety of real and simulated datasets show promise. We end with several future research directions.
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