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Effective optimization using sample persistence: A case study on quantum annealers and various Monte Carlo optimization methods
2017
Physical review. E
We present and apply a general-purpose, multi-start algorithm for improving the performance of low-energy samplers used for solving optimization problems. The algorithm iteratively fixes the value of a large portion of the variables to values that have a high probability of being optimal. The resulting problems are smaller and less connected, and samplers tend to give better low-energy samples for these problems. The algorithm is trivially parallelizable, since each start in the multi-start
doi:10.1103/physreve.96.043312
pmid:29347481
fatcat:2g56pcdonbhvhbscllzkzwtmrm