Bridging between soft and hard thresholding by scaling
Katsuyuki Hagiwara

TL;DR
This paper introduces a scaled soft thresholding method that bridges soft and hard thresholding, analyzing its degrees of freedom and over-fitting sources, and providing insights into its risk behavior in sparse, large-sample settings.
Contribution
It develops a unified thresholding framework that includes soft, hard, and adaptive LASSO, with a detailed analysis of over-fitting and risk behavior.
Findings
Scaled soft thresholding bridges soft and hard thresholding methods.
Two sources of over-fitting are identified and analyzed.
Theoretical insights explain the risk behaviors of thresholding methods.
Abstract
In this article, we developed and analyzed a thresholding method in which soft thresholding estimators are independently expanded by empirical scaling values. The scaling values have a common hyper-parameter that is an order of expansion of an ideal scaling value that achieves hard thresholding. We simply call this estimator a scaled soft thresholding estimator. The scaled soft thresholding is a general method that includes the soft thresholding and non-negative garrote as special cases and gives an another derivation of adaptive LASSO. We then derived the degree of freedom of the scaled soft thresholding by means of the Stein's unbiased risk estimate and found that it is decomposed into the degree of freedom of soft thresholding and the reminder connecting to hard thresholding. In this meaning, the scaled soft thresholding gives a natural bridge between soft and hard thresholding…
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Taxonomy
TopicsImage and Signal Denoising Methods · Sparse and Compressive Sensing Techniques · Probabilistic and Robust Engineering Design
