EPE ML meeting - Jessica Nicole Howard
Thursday 25 February 2021 -
17:00
Monday 22 February 2021
Tuesday 23 February 2021
Wednesday 24 February 2021
Thursday 25 February 2021
17:00
Foundations of a Fast, Data-Driven, Machine-Learned Simulator
-
Jessica Nicole Howard
(
University of California Irvine (US)
)
Foundations of a Fast, Data-Driven, Machine-Learned Simulator
Jessica Nicole Howard
(
University of California Irvine (US)
)
17:00 - 17:30
We introduce a novel strategy for machine-learning-based fast simulators, which is the first that can be trained in an unsupervised manner using observed data samples to learn a predictive model of detector response and other difficult-to-model transformations. Across the physical sciences, a barrier to interpreting observed data is the lack of knowledge of a detector’s imperfect resolution, which transforms and obscures the unobserved latent data. Modeling this detector response is an essential step for statistical inference, but closed-form models are often unavailable or intractable, requiring the use of computationally expensive, ad-hoc numerical simulations. Using particle physics detectors as an illustrative example, we describe a novel strategy for a fast, predictive simulator called Optimal Transport based Unfolding and Simulation (OTUS), which uses a probabilistic autoencoder to learn this transformation directly from observed data, rather than from existing simulations. Unusually, the probabilistic autoencoder’s latent space is physically meaningful, such that the decoder becomes a fast, predictive simulator for a new latent sample, and has the potential to replace Monte Carlo simulators. We provide proof-of-principle results for Z-boson and top-quark decays, but stress that our approach can be widely applied to other physical science fields.