TL;DR
SMART introduces a spectral transfer method for multi-task linear regression that leverages spectral similarity assumptions, enabling effective transfer learning even with limited data sharing.
Contribution
It proposes a novel spectral transfer approach that requires only source model estimates, not raw data, and develops an ADMM algorithm with theoretical error bounds.
Findings
SMART improves estimation accuracy in simulations.
It demonstrates robustness to negative transfer.
The method achieves near-minimax error rates under certain conditions.
Abstract
Multi-task learning is effective for related applications, but its performance can deteriorate when the target sample size is small. Transfer learning can borrow strength from related studies; yet, many existing methods rely on restrictive bounded-difference assumptions between the source and target models. We propose SMART, a spectral transfer method for multi-task linear regression that instead assumes spectral similarity: the target left and right singular subspaces lie within the corresponding source subspaces and are sparsely aligned with the source singular bases. Such an assumption is natural when studies share latent structures and enables transfer beyond the bounded-difference settings. SMART estimates the target coefficient matrix through structured regularization that incorporates spectral information from a source study. Importantly, it requires only a fitted source model…
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