Hyperparameter-selection for sparse regression : A probablistic approach

Kronvall, Ted; Jakobsson, Andreas (2018-04-10). Hyperparameter-selection for sparse regression : A probablistic approach Conference Record of 51st Asilomar Conference on Signals, Systems and Computers, ACSSC 2017, 2017-October,, 853 - 857. 51st Asilomar Conference on Signals, Systems and Computers, ACSSC 2017. Pacific Grove, United States: IEEE - Institute of Electrical and Electronics Engineers Inc.
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DOI:
Conference Proceeding/Paper | Published | English
Authors:
Kronvall, Ted ; Jakobsson, Andreas
Department:
Statistical Signal Processing Group
Mathematical Statistics
eSSENCE: The e-Science Collaboration
Biomedical Modelling and Computation
Project:
eSSENCE@LU 4:2 - Efficient data acquisition and analyses for modern multidimensional spectroscopy"
Research Group:
Statistical Signal Processing Group
Biomedical Modelling and Computation
Abstract:

The choice of hyperparameter(s) notably affects the support recovery in LASSO-like sparse regression problems, acting as an implicit model order selection. Parameters are typically selected using cross-validation or various ad hoc approaches. These often overestimates the resulting model order, aiming to minimize the prediction error rather than maximizing the support recovery. In this work, we propose a probabilistic approach to selecting hyperparameters in order to maximize the support recovery, quantifying the type I error (false positive rate) using extreme value analysis, such that the regularization level is selected as an appropriate quantile. By instead solving the scaled LASSO problem, the proposed choice of hyperparameter becomes almost independent of the noise variance. Simulation examples illustrate how the proposed method outperforms both cross-validation and the Bayesian Information Criterion in terms of computational complexity and support recovery.

Keywords:
extreme value distribution ; LASSO ; model order estimation ; regularization ; sparse estimation
ISBN:
9781538618233
LUP-ID:
aa42b4ae-97d5-42a1-bded-50cb3989fb98 | Link: https://lup.lub.lu.se/record/aa42b4ae-97d5-42a1-bded-50cb3989fb98 | Statistics

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