Safe Screening Rules for Group SLOPE
Journal:
arXiv
Published Date:
Jun 11, 2025
Abstract
Variable selection is a challenging problem in high-dimensional sparse
learning, especially when group structures exist. Group SLOPE performs well for
the adaptive selection of groups of predictors. However, the block
non-separable group effects in Group SLOPE make existing methods either invalid
or inefficient. Consequently, Group SLOPE tends to incur significant
computational costs and memory usage in practical high-dimensional scenarios.
To overcome this issue, we introduce a safe screening rule tailored for the
Group SLOPE model, which efficiently identifies inactive groups with zero
coefficients by addressing the block non-separable group effects. By excluding
these inactive groups during training, we achieve considerable gains in
computational efficiency and memory usage. Importantly, the proposed screening
rule can be seamlessly integrated into existing solvers for both batch and
stochastic algorithms. Theoretically, we establish that our screening rule can
be safely employed with existing optimization algorithms, ensuring the same
results as the original approaches. Experimental results confirm that our
method effectively detects inactive feature groups and significantly boosts
computational efficiency without compromising accuracy.