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Towards reliable uncertainties in IR interferometry : the bootstrap for correlated statistical and systematic errors

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Table 1. Observing log sorted by science target, calibrator, and observing night. Calibrator characteristics are H magnitude, spectral type, uniform disc diameter ϑ cal , and relative weight in the transfer function calculation, with 1.0 for calibrators ve
Table 1 – continued
Table 1 – continued
Table 2. Tuning of the parameters in the interpolation of the transfer function for all set-ups (Section 3.1.2, equations 3a and 3b)
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