We investigate how to improve new physics detection strategies exploiting variational autoencoders and normalizing flows for anomaly detection at the Large Hadron Collider. As a working example, we consider the DarkMachines challenge dataset. We show how different design choices (e.g., event representations, anomaly score definitions, network architectures) affect the result on specific benchmark new physics models. Once a baseline is established, we discuss how to improve the anomaly detection accuracy by exploiting normalizing flow layers in the latent space of the variational autoencoder.We investigate how to improve new physics detection strategies exploiting variational autoencoders and normalizing flows for anomaly detection at the La...
A new paradigm for data-driven, model-agnostic new physics searches at colliders is emerging, and ai...
This paper discusses model-agnostic searches for new physics at the Large Hadron Collider (LHC) usin...
We describe the outcome of a data challenge conducted as part of the Dark Machines Initiative and th...
We investigate how to improve new physics detection strategies exploiting variational autoencoders a...
Using variational autoencoders trained on known physics processes, we develop a one-sided threshold ...
Abstract Using variational autoencoders trained on known physics processes, we develop a one-sided t...
International audienceExploiting the rapid advances in probabilistic inference, in particular variat...
We study the possibility of applying deep learning algorithms, suchas Variational Autoencoders, on s...
A new paradigm for data-driven, model-agnostic new physics searches at colliders is emerging, and ai...
A new paradigm for data-driven, model-agnostic new physics searches at colliders is emerging, and ai...
This paper discusses model-agnostic searches for new physics at the Large Hadron Collider (LHC) usin...
We describe the outcome of a data challenge conducted as part of the Dark Machines Initiative and th...
We investigate how to improve new physics detection strategies exploiting variational autoencoders a...
Using variational autoencoders trained on known physics processes, we develop a one-sided threshold ...
Abstract Using variational autoencoders trained on known physics processes, we develop a one-sided t...
International audienceExploiting the rapid advances in probabilistic inference, in particular variat...
We study the possibility of applying deep learning algorithms, suchas Variational Autoencoders, on s...
A new paradigm for data-driven, model-agnostic new physics searches at colliders is emerging, and ai...
A new paradigm for data-driven, model-agnostic new physics searches at colliders is emerging, and ai...
This paper discusses model-agnostic searches for new physics at the Large Hadron Collider (LHC) usin...
We describe the outcome of a data challenge conducted as part of the Dark Machines Initiative and th...