Huanbiao Zhu, Krish Desai, Mikael Kuusela, Vinicius Mikuni, Benjamin Nachman, Larry Wasserman
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In many experimental contexts, it is necessary to statistically remove the
impact of instrumental effects in order to physically interpret measurements.
This task has been extensively studied in particle physics, where the
deconvolution task is called unfolding. A number of recent methods have shown
how to perform high-dimensional, unbinned unfolding using machine learning.
However, one of the assumptions in all of these methods is that the detector
response is accurately modeled in the Monte Carlo simulation. In practice, the
detector response depends on a number of nuisance parameters that can be
constrained with data. We propose a new algorithm called Profile OmniFold
(POF), which works in a similar iterative manner as the OmniFold (OF) algorithm
while being able to simultaneously profile the nuisance parameters. We
illustrate the method with a Gaussian example as a proof of concept
highlighting its promising capabilities.