Sonabend, Raphael Bender, Andreas Vollmer, Sebastian
MOTIVATION: In this paper we consider how to evaluate survival distribution predictions with measures of discrimination. This is non-trivial as discrimination measures are the most commonly used in survival analysis and yet there is no clear method to derive a risk prediction from a distribution prediction. We survey methods proposed in literature ...
Graczykowski, Łukasz Kamil Jakubowska, Monika Deja, Kamil Rafał Kabus, Maja
Published in
Journal of Instrumentation
Particle identification (PID) is one of the main strengths of the ALICE experiment at the LHC. It is a crucial ingredient for detailed studies of the strongly interacting matter formed in ultrarelativistic heavy-ion collisions. ALICE provides PID information via various experimental techniques, allowing for the identification of particles over a br...
Khoda, Elham E. Rankin, Dylan de Lima, Rafael Teixeira Harris, Philip Hauck, Scott Hsu, Shih-Chieh Kagan, Michael Loncar, Vladimir Paikara, Chaitanya Rao, Richa
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Recurrent neural networks have been shown to be effective architectures for many tasks in high energy physics, and thus have been widely adopted. Their use in low-latency environments has, however, been limited as a result of the difficulties of implementing recurrent architectures on field-programmable gate arrays (FPGAs). In this paper we present...
Pappalardo, Alessandro Umuroglu, Yaman Blott, Michaela Mitrevski, Jovan Hawks, Ben Tran, Nhan Loncar, Vladimir Summers, Sioni Borras, Hendrik Muhizi, Jules
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We present extensions to the Open Neural Network Exchange (ONNX) intermediate representation format to represent arbitrary-precision quantized neural networks. We first introduce support for low precision quantization in existing ONNX-based quantization formats by leveraging integer clipping, resulting in two new backward-compatible variants: the q...
Valperga, R Webster, K Klein, V Turaev, D Lamb, JSW
Time-reversal symmetry arises naturally as a structural property in many dynamical systems of interest. While the importance of hard-wiring symmetry is increasingly recognized in machine learning, to date this has eluded time-reversibility. In this paper we propose a new neural network architecture for learning time-reversible dynamical systems fro...
Stokell, Benjamin Shah, Rajen
There are a variety of settings where vague prior information may be available on the importance of predictors in high-dimensional regression settings. Examples include ordering on the variables offered by their empirical variances (which is typically discarded through standardisation), the lag of predictors when fitting autoregressive models in ti...
Clarke, Ross Oldewage, Elre T Hernández-Lobato, José Miguel
Machine learning training methods depend plentifully and intricately on hyperparameters, motivating automated strategies for their optimisation. Many existing algorithms restart training for each new hyperparameter choice, at considerable computational cost. Some hypergradient-based one-pass methods exist, but these either cannot be applied to arbi...
Popescu, SG Sharp, DJ Cole, JH Kamnitsas, K Glocker, B
Machine learning models deployed on medical imaging tasks must be equipped with out-of-distribution detection capabilities in order to avoid erroneous predictions. It is unsure whether out-of-distribution detection models reliant on deep neural networks are suitable for detecting domain shifts in medical imaging. Gaussian Processes can reliably sep...
Guillaumin, AP Sykulski, AM Olhede, SC Simons, FJ
We provide a computationally and statistically efficient method for estimating the parameters of a stochastic covariance model observed on a regular spatial grid in any number of dimensions. Our proposed method, which we call the Debiased Spatial Whittle likelihood, makes important corrections to the well-known Whittle likelihood to account for lar...
Pata, Joosep Duarte, Javier Mokhtar, Farouk Wulff, Eric Yoo, Jieun Vlimant, Jean-Roch Pierini, Maurizio Girone, Maria
We provide details on the implementation of a machine-learning based particle flow algorithm for CMS. The standard particle flow algorithm reconstructs stable particles based on calorimeter clusters and tracks to provide a global event reconstruction that exploits the combined information of multiple detector subsystems, leading to strong improveme...