Full Event Particle-Level Unfolding with Variable-Length Latent Variational Diffusion

Evaluating Classification Models: Metrics, Techniques & Best Practices


View a PDF of the paper titled Full Event Particle-Level Unfolding with Variable-Length Latent Variational Diffusion, by Alexander Shmakov and 5 other authors

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Abstract:The measurements performed by particle physics experiments must account for the imperfect response of the detectors used to observe the interactions. One approach, unfolding, statistically adjusts the experimental data for detector effects. Recently, generative machine learning models have shown promise for performing unbinned unfolding in a high number of dimensions. However, all current generative approaches are limited to unfolding a fixed set of observables, making them unable to perform full-event unfolding in the variable dimensional environment of collider data. A novel modification to the variational latent diffusion model (VLD) approach to generative unfolding is presented, which allows for unfolding of high- and variable-dimensional feature spaces. The performance of this method is evaluated in the context of semi-leptonic top quark pair production at the Large Hadron Collider.

Submission history

From: Kevin Greif [view email]
[v1]
Mon, 22 Apr 2024 16:47:10 UTC (19,424 KB)
[v2]
Wed, 30 Oct 2024 14:39:15 UTC (23,863 KB)
[v3]
Thu, 23 Jan 2025 19:37:48 UTC (23,904 KB)



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