Faster high-accuracy log-concave sampling via algorithmic warm starts
Jason M. Altschuler, Sinho Chewi

TL;DR
This paper advances high-accuracy sampling from log-concave distributions by achieving faster convergence rates using algorithmic warm starts, reducing the complexity dependence on dimension from linear to square root.
Contribution
It introduces the first $ ilde{O}(d^{1/2})$ Re9nyi mixing rates for discretized underdamped Langevin diffusion, enabling faster warm start techniques for MALA.
Findings
Achieved $ ilde{O}(d^{1/2})$ complexity for high-accuracy sampling.
Developed new differential-privacy-inspired techniques for hypocoercive equations.
Closed the gap between warm start initialization and sampling complexity.
Abstract
Understanding the complexity of sampling from a strongly log-concave and log-smooth distribution on to high accuracy is a fundamental problem, both from a practical and theoretical standpoint. In practice, high-accuracy samplers such as the classical Metropolis-adjusted Langevin algorithm (MALA) remain the de facto gold standard; and in theory, via the proximal sampler reduction, it is understood that such samplers are key for sampling even beyond log-concavity (in particular, for distributions satisfying isoperimetric assumptions). In this work, we improve the dimension dependence of this sampling problem to , whereas the previous best result for MALA was . This closes the long line of work on the complexity of MALA, and moreover leads to state-of-the-art guarantees for high-accuracy sampling under strong log-concavity and beyond…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Generative Adversarial Networks and Image Synthesis · Markov Chains and Monte Carlo Methods
