AI RESEARCH
Deep Unfolding: Recent Developments, Theory, and Design Guidelines
arXiv CS.LG
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ArXi:2512.03768v2 Announce Type: replace Optimization methods play a central role in signal processing, serving as the mathematical foundation for inference, estimation, and control. While classical iterative optimization algorithms provide interpretability and theoretical guarantees, they often rely on surrogate objectives, require careful hyperparameter tuning, and exhibit substantial computational latency. Conversely, machine learning (ML ) offers powerful data-driven modeling capabilities but lacks the structure, transparency, and efficiency needed for optimization-driven inference.