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Dey+22 Calibrated Predictive distribution #16

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torluca opened this issue Aug 5, 2022 · 2 comments
Open

Dey+22 Calibrated Predictive distribution #16

torluca opened this issue Aug 5, 2022 · 2 comments
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enhancement New feature or request

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@torluca
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torluca commented Aug 5, 2022

The goal is to implement the calibrated predictive distributions of Dey+22 in rail.evaluate

@eacharles
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Quick note to consider if we should split this in to it's own package b/c of pytorch dependencies

@aimalz
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aimalz commented Nov 7, 2022

Thanks for sharing your great progress @torluca! In response to today's discussion, I anticipate a question to resolve as you stage-ify the code: while the calculation of the PIT on subsamples is like evaluating a metric, I think the calibration process that outputs a catalog of photo-z PDFs is actually more at home as an estimator, so it might be appropriate to move it to the other subpackage at the same time.

@eacharles eacharles transferred this issue from LSSTDESC/rail_attic Jun 14, 2023
@aimalz aimalz added the enhancement New feature or request label Jul 18, 2023
@torluca torluca self-assigned this Aug 2, 2023
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