Home > Publications database > Error reduction using machine learning on Ising worm simulation > print |
001 | 916214 | ||
005 | 20221221131716.0 | ||
024 | 7 | _ | |a arXiv:2212.02365 |2 arXiv |
024 | 7 | _ | |a 2128/33235 |2 Handle |
037 | _ | _ | |a FZJ-2022-06015 |
100 | 1 | _ | |a Kim, Jangho |0 P:(DE-Juel1)188816 |b 0 |e Corresponding author |u fzj |
111 | 2 | _ | |a The 39th International Symposium on Lattice Field Theory, LATTICE2022 |c Bonn |d 2022-08-08 - 2022-08-13 |w Germany |
245 | _ | _ | |a Error reduction using machine learning on Ising worm simulation |
260 | _ | _ | |c 2022 |
300 | _ | _ | |a 018 |
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336 | 7 | _ | |a Contribution to a conference proceedings |b contrib |m contrib |0 PUB:(DE-HGF)8 |s 1671621761_4311 |2 PUB:(DE-HGF) |
500 | _ | _ | |a 8 pages, 18 figures, 39th International Symposium on Lattice Field Theory, LATTICE2022 8th-13th August 2022, Bonn, Germany |
520 | _ | _ | |a We develop a method to improve on the statistical errors for higher moments using machine learning techniques. We present here results for the dual representation of the Ising model with an external field, derived via the high temperature expansion and simulated by the worm algorithm. We compare two ways of measuring the same set of observables, without and with machine learning: moments of the magnetization and the susceptibility can be improved by using the decision tree method to train the correlations between the higher moments and the second moment obtained from an integrated 2-point function. Those results are compared in small volumes to analytic predictions. |
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588 | _ | _ | |a Dataset connected to arXivarXiv |
700 | 1 | _ | |a Unger, Wolfgang |0 P:(DE-HGF)0 |b 1 |
856 | 4 | _ | |u https://juser.fz-juelich.de/record/916214/files/2212.02365.pdf |y OpenAccess |
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