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Rejection Sampling with Autodifferentiation - Case study: Fitting a Hadronization Model
Published 4 Nov 2024 in hep-ph and hep-ex | (2411.02194v2)
Abstract: We present an autodifferentiable rejection sampling algorithm termed Rejection Sampling with Autodifferentiation (RSA). In conjunction with reweighting, we show that RSA can be used for efficient parameter estimation and model exploration. Additionally, this approach facilitates the use of unbinned machine-learning-based observables, allowing for more precise, data-driven fits. To showcase these capabilities, we apply an RSA-based parameter fit to a simplified hadronization model.
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