2018
DOI: 10.48550/arxiv.1807.02038
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Frame-constrained Total Variation Regularization for White Noise Regression

Abstract: Despite the popularity and practical success of total variation (TV) regularization for function estimation, surprisingly little is known about its theoretical performance in a statistical setting. While TV regularization has been known for quite some time to be minimax optimal for denoising one-dimensional signals, for higher dimensions this remains elusive until today. In this paper we consider frame-constrained TV estimators including many well-known (overcomplete) frames in a white noise regression model, … Show more

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