IML Machine Learning Working Group
Tuesday 14 February 2023 -
15:00
Monday 13 February 2023
Tuesday 14 February 2023
15:00
News
-
Anja Butter
(
Centre National de la Recherche Scientifique (FR)
)
Stefano Carrazza
(
CERN
)
Simon Akar
(
University of Cincinnati (US)
)
Pietro Vischia
(
Universidad de Oviedo and Instituto de Ciencias y Tecnologías Espaciales de Asturias (ICTEA)
)
Michael Kagan
(
SLAC National Accelerator Laboratory (US)
)
Lorenzo Moneta
(
CERN
)
Fabio Catalano
(
University and INFN Torino (IT)
)
Julian Garcia Pardinas
(
CERN
)
News
Anja Butter
(
Centre National de la Recherche Scientifique (FR)
)
Stefano Carrazza
(
CERN
)
Simon Akar
(
University of Cincinnati (US)
)
Pietro Vischia
(
Universidad de Oviedo and Instituto de Ciencias y Tecnologías Espaciales de Asturias (ICTEA)
)
Michael Kagan
(
SLAC National Accelerator Laboratory (US)
)
Lorenzo Moneta
(
CERN
)
Fabio Catalano
(
University and INFN Torino (IT)
)
Julian Garcia Pardinas
(
CERN
)
15:00 - 15:05
Room: 6/2-024 - BE Auditorium Meyrin
15:05
Generative transformers and how to evaluate them
-
Raghav Kansal
(
Univ. of California San Diego (US)
)
Generative transformers and how to evaluate them
Raghav Kansal
(
Univ. of California San Diego (US)
)
15:05 - 15:30
Room: 6/2-024 - BE Auditorium Meyrin
With the increase in luminosity and detector granularity, simulation will be a significant computational challenge in the HL-LHC. To tackle this, we present developments in machine learning (ML) graph- [1, 2] and attention-based [3] models for generating jets at the LHC using sparse and efficient point cloud representations of our data, which offer a three-orders-of-magnitude improvement in latency compared to full (Geant4) simulation. We also present studies on metrics for validating ML-based simulations, including the novel Frechet and kernel physics distances, which are found to be highly sensitive to typical mismodelling by ML generative models [3] [1] ML4PS @ NeurIPS 2020, https://arxiv.org/abs/2012.00173 [2] NeurIPS 2021, https://arxiv.org/abs/2106.11535 [3] 2022, https://arxiv.org/abs/2211.10295
15:30
Question time
Question time
15:30 - 15:35
Room: 6/2-024 - BE Auditorium Meyrin
15:35
Anomaly detection and self-supervised representation learning
-
Luigi Favaro
(
University of Heidelberg
)
Anomaly detection and self-supervised representation learning
Luigi Favaro
(
University of Heidelberg
)
15:35 - 16:00
Room: 6/2-024 - BE Auditorium Meyrin
Autoencoders are an effective analysis tool for model-agnostic searches at the LHC. Unfortunately, it is known that their OOD detection performance is not robust and heavily depends on the compressibility of the signals. Even if a neural network can learn the physical content of the low-level data, the gain in sensitivity on features of interest can be hindered by redundant information already explainable in terms of known physics. This poses the problem of constructing a representation space where known physical symmetries are manifest and discriminating features are retained. I’ll present ideas in both directions. I’ll introduce a Normalized Auto-Encoder (NAE), a robust OOD detector based on an energy model, and how a self-supervised contrastive learning training can produce optimized observables for jet tagging (JetCLR) and anomaly detection (AnomCLR).
16:00
Question time
Question time
16:00 - 16:05
Room: 6/2-024 - BE Auditorium Meyrin
16:05
Versatile Energy-Based Models for High Energy Physics
-
Taoli Cheng
(
University of Montreal
)
Versatile Energy-Based Models for High Energy Physics
Taoli Cheng
(
University of Montreal
)
16:05 - 16:30
Room: 6/2-024 - BE Auditorium Meyrin
Energy-based models have the natural advantage of flexibility in the form of the energy function. Recently, energy-based models have achieved great success in modeling high-dimensional data in computer vision and natural language processing. In accordance with these signs of progress, we build a versatile energy-based model for High Energy Physics events at the Large Hadron Collider. This framework builds on a powerful generative model and describes higher-order inter-particle interactions. It suits different encoding architectures and builds on implicit generation. As for applicational aspects, it can serve as a powerful parameterized event generator, a generic anomalous signal detector, and an augmented event classifier.
16:30
Question time
Question time
16:30 - 16:35
Room: 6/2-024 - BE Auditorium Meyrin