Bridging between soft and hard thresholding by scaling

04/20/2021
by   Katsuyuki Hagiwara, et al.
0

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 methods. Since the degree of freedom represents the degree of over-fitting, this result implies that there are two sources of over-fitting in the scaled soft thresholding. The first source originated from soft thresholding is determined by the number of un-removed coefficients and is a natural measure of the degree of over-fitting. We analyzed the second source in a particular case of the scaled soft thresholding by referring a known result for hard thresholding. We then found that, in a sparse, large sample and non-parametric setting, the second source is largely determined by coefficient estimates whose true values are zeros and has an influence on over-fitting when threshold levels are around noise levels in those coefficient estimates. In a simple numerical example, these theoretical implications has well explained the behavior of the degree of freedom. Moreover, based on the results here and some known facts, we explained the behaviors of risks of soft, hard and scaled soft thresholding methods.

READ FULL TEXT
research
07/28/2017

Empirical Bayes Estimators for High-Dimensional Sparse Vectors

The problem of estimating a high-dimensional sparse vector θ∈R^n from an...
research
04/24/2018

Between hard and soft thresholding: optimal iterative thresholding algorithms

Iterative thresholding algorithms seek to optimize a differentiable obje...
research
08/14/2013

Confidence Sets Based on Thresholding Estimators in High-Dimensional Gaussian Regression Models

We study confidence intervals based on hard-thresholding, soft-threshold...
research
04/14/2023

Convex Dual Theory Analysis of Two-Layer Convolutional Neural Networks with Soft-Thresholding

Soft-thresholding has been widely used in neural networks. Its basic net...
research
09/29/2022

Hard thresholding hyperinterpolation over general regions

We propose a fully discrete hard thresholding polynomial approximation o...
research
06/05/2019

Data-driven Thresholding in Denoising with Spectral Graph Wavelet Transform

This paper is devoted to adaptive signal denoising in the context of Gra...
research
04/11/2012

Least Absolute Gradient Selector: Statistical Regression via Pseudo-Hard Thresholding

Variable selection in linear models plays a pivotal role in modern stati...

Please sign up or login with your details

Forgot password? Click here to reset