Machine Learning Estimation on the Trace of Inverse Dirac Operator using the Gradient Boosting Decision Tree Regression
PoS(LATTICE2024)033 We present our preliminary results on the machine learning estimation of $\text{Tr} \, M^{-n}$ from other observables with the gradient boosting decision tree regression, where $M$ is the Dirac operator. Ordinarily, $\text{Tr} \, M^{-n}$ is obtained by linear CG solver for stocha...
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Zusammenfassung: | PoS(LATTICE2024)033 We present our preliminary results on the machine learning estimation of
$\text{Tr} \, M^{-n}$ from other observables with the gradient boosting
decision tree regression, where $M$ is the Dirac operator. Ordinarily,
$\text{Tr} \, M^{-n}$ is obtained by linear CG solver for stochastic sources
which needs considerable computational cost. Hence, we explore the possibility
of cost reduction on the trace estimation by the adoption of gradient boosting
decision tree algorithm. We also discuss effects of bias and its correction. |
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DOI: | 10.48550/arxiv.2411.18170 |