RCML reformulates multiplier updating as projected-pressure feedback with residual tracking to improve stability and feasibility in stochastic constrained decision-making.
Stochastic Penalty-Barrier Methods for Constrained Machine Learning
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abstract
Constrained machine learning enables fairness-aware training, physics-informed neural networks, and integration of symbolic domain knowledge into statistical models. Despite its practical importance, no general method exists for the non-convex, non-smooth, stochastic setting that arises naturally in deep learning. We propose the Stochastic Penalty-Barrier Method (SPBM), which extends classical penalty and barrier methods to this setting via exponential dual averaging, a stabilized penalty schedule, and the Moreau envelope to handle non-smoothness. Experiments across multiple settings show that SPBM matches or outperforms existing constrained optimization baselines while incurring only linear runtime overhead compared to unconstrained Adam for up to 10,000 constraints.
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cs.LG 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Residual-Controlled Multiplier Learning for Stochastic Constrained Decision-Making
RCML reformulates multiplier updating as projected-pressure feedback with residual tracking to improve stability and feasibility in stochastic constrained decision-making.