Covariance fitting of highly-correlated data in lattice QCD

被引:0
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作者
Boram Yoon
Yong-Chull Jang
Chulwoo Jung
Weonjong Lee
机构
[1] Seoul National University,Lattice Gauge Theory Research Center, FPRD, and CTP, Department of Physics and Astronomy
[2] Brookhaven National Laboratory,Physics Department
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Lattice QCD; CP violation;
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摘要
We address a frequently-asked question on the covariance fitting of highly-correlated data such as our BK data based on the SU(2) staggered chiral perturbation theory. Basically, the essence of the problem is that we do not have a fitting function accurate enough to fit extremely precise data. When eigenvalues of the covariance matrix are small, even a tiny error in the fitting function yields a large chi-square value and spoils the fitting procedure. We have applied a number of prescriptions available in the market, such as the cut-off method, modified covariance matrix method, and Bayesian method. We also propose a brand new method, the eigenmode shift (ES) method, which allows a full covariance fitting without modifying the covariance matrix at all. We provide a pedagogical example of data analysis in which the cut-off method manifestly fails in fitting, but the rest work well. In our case of the BK fitting, the diagonal approximation, the cut-off method, the ES method, and the Bayesian method work reasonably well in an engineering sense. However, interpreting the meaning of χ2 is easier in the case of the ES method and the Bayesian method in a theoretical sense aesthetically. Hence, the ES method can be a useful alternative optional tool to check the systematic error caused by the covariance fitting procedure.
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页码:145 / 162
页数:17
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