International audienceExploiting the rapid advances in probabilistic inference, in particular variational autoencoders (VAEs) for machine learning (ML) anomaly detection (AD) tasks, remains an open research question. In this work, we use the deep conditional varia-tional autoencoders (CVAE), and we define an original loss function together with a metric that targets AD for hierarchically structured data. Our target application is a real world problem: monitoring the trigger system which is a component of many particle physics experiments at the CERN Large Hadron Collider (LHC). Experiments show the superior performance of this method over vanilla VAEs
We investigate how to improve new physics detection strategies exploiting variational autoencoders a...
We study the possibility of applying deep learning algorithms, suchas Variational Autoencoders, on s...
International audienceThe CMS detector is a general-purpose apparatus that detects high-energy colli...
International audienceExploiting the rapid advances in probabilistic inference, in particular variat...
International audienceExploiting the rapid advances in probabilistic inference, in particular variat...
We propose a novel neural network architecture called Hierarchical Latent Autoencoder to exploit the...
Abstract Using variational autoencoders trained on known physics processes, we develop a one-sided t...
International audienceThe certification of the CMS experiment data as usable for physics analysis is...
Using variational autoencoders trained on known physics processes, we develop a one-sided threshold ...
We investigate how to improve new physics detection strategies exploiting variational autoencoders a...
We investigate how to improve new physics detection strategies exploiting variational autoencoders a...
We study the possibility of applying deep learning algorithms, suchas Variational Autoencoders, on s...
International audienceThe CMS detector is a general-purpose apparatus that detects high-energy colli...
International audienceExploiting the rapid advances in probabilistic inference, in particular variat...
International audienceExploiting the rapid advances in probabilistic inference, in particular variat...
We propose a novel neural network architecture called Hierarchical Latent Autoencoder to exploit the...
Abstract Using variational autoencoders trained on known physics processes, we develop a one-sided t...
International audienceThe certification of the CMS experiment data as usable for physics analysis is...
Using variational autoencoders trained on known physics processes, we develop a one-sided threshold ...
We investigate how to improve new physics detection strategies exploiting variational autoencoders a...
We investigate how to improve new physics detection strategies exploiting variational autoencoders a...
We study the possibility of applying deep learning algorithms, suchas Variational Autoencoders, on s...
International audienceThe CMS detector is a general-purpose apparatus that detects high-energy colli...