Bulletin of the American Physical Society
APS March Meeting 2022
Volume 67, Number 3
Monday–Friday, March 14–18, 2022; Chicago
Session K09: Physics of Machine Learning II
3:00 PM–5:48 PM,
Tuesday, March 15, 2022
Room: McCormick Place W-180
Sponsoring
Units:
GSNP GDS DCOMP DSOFT
Chair: Yuhai Tu, IBM T. J. Watson Research Center
Abstract: K09.00008 : Nonequilibrium Monte Carlo for unfreezing variables near computational phase transitions
4:24 PM–4:36 PM
Presenter:
Masoud Mohseni
(Google LLC)
Authors:
Masoud Mohseni
(Google LLC)
Daniel K Eppens
(Google LLC)
Federico Ricci-Tersenghi
(Dipartimento di Fisica, Sapienza Università di Roma, P.le Aldo Moro 5, 00185 Rome, Italy)
Johan Strumpfer
(Google LLC)
Alan Ho
(Google LLC)
Raffaele Marino
(Dipartimento di Fisica, Sapienza Università di Roma, P.le Aldo Moro 5, 00185 Rome, Italy)
Vasil Denchev
(Google LLC)
Sergei V Isakov
(Google LLC)
Sergio Boixo
(Google LLC)
Hartmut Neven
(Google LLC)
Sampling highly complex cost/energy functions over discrete variables is at the heart of many open problems across different scientific disciplines and industries. The major obstacle is the emergence of many-body effects among certain interacting variables leading to critical slowing down or collective freezing for known stochastic local search strategies. An exponential computational effort is generally required to unfreeze such variables and explore other unseen regions of the configuration space. Here, we introduce a quantum-inspired family of nonlocal Nonequilibrium Monte Carlo (NMC) algorithms by developing an adaptive gradient-free strategy that can efficiently learn key instance-wise geometrical features of the cost function. That information is employed on the fly to construct spatially inhomogeneous thermal fluctuations for collectively unfreezing variables at various length scales, circumventing costly exploration versus exploitation trade-offs. We apply our algorithm to two of the most challenging combinatorial optimization problems: random k-satisfiability (k-SAT) near the computational phase transitions and Quadratic Assignment Problems (QAP). We observe significant speedup over both generic local stochastic solvers, such as Adaptive Parallel Tempering (APT), and certain specialized deterministic solvers. In particular, for the 10% of hardest random 4-SAT instances we observe two orders of magnitude improvements in the quality of solutions over state-of-the-art specialized solvers known as Survey Propagation (SP) and Backtracking Survey Propagation (BSP).
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