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Hi Tommy, I think it would be useful to me if you could describe at a higher level what concerns you are looking to address. Are you looking into toys because you cannot rely on the asymptotic approximation for discovery significance / limits, or are you investigating something else? You mention stability and quality of the fit:
Neither of these two things necessarily require toys, but it depends on the details. |
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Dear experts,
We're currently working on a B -> Xu l nu branching fraction measurement. The question we have is related to the discussions in #2251 and #2257.
When throwing toys with
pyhf
, the event per-bin rates are Poisson-varied and the auxiliary data (or global observables) are Gaussian-varied. However, for global observables with asymmetric uncertainties, the corresponding Gaussian will also be asymmetric (the actual form of the Gaussian is not straightforward to derive but this paper gives a good idea of what I mean here). In the end when one plots the bias for a given number of toys, a biased normal distribution is obtained (see plots shown in the above mentioned discussions).So, if the toy bias appears only because of the asymmetric Gaussian variations then should this also happen in the signal extraction ? It seems that the asymmetry here impacts toys but will it also bias the extracted POI (the signal strength giving the branching fraction in our case) ? I would need some clarification on that point.
If the asymmetries don't impact the signal extraction but only the Asimov toy pull, how would one evaluate the stability of the fit ? I reckon one could do a linearity check (where the signal strength is scaled up and down in the Asimov data and the fit is expected to recover this scaled signal strength) but if someone has other ideas, please tell me. In the end our goal would be to avoid having to symmetrise all uncertainties and still prove the good quality of the fit.
Thank you for your help.
Tommy
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