High Energy Physics - Experiment · Physics
Selection and processing of calibration samples to measure the particle identification performance of the LHCb experiment in Run 2
Roel Aaij, Lucio Anderlini, Sean Benson, Marco Cattaneo +19
2019-07-19
High Energy Physics - Experiment · Physics
Robust Neural Particle Identification Models
Aziz Temirkhanov, Artem Ryzhikov, Denis Derkach, Mikhail Hushchyn +2
2022-12-16
High Energy Physics - Experiment · Physics
A Neural-Network-defined Gaussian Mixture Model for particle identification applied to the LHCb fixed-target programme
Giacomo Graziani, Lucio Anderlini, Saverio Mariani, Edoardo Franzoso +2
2022-02-11
Computer Vision and Pattern Recognition · Computer Science
Dynamic Spatial Sparsification for Efficient Vision Transformers and Convolutional Neural Networks
Yongming Rao, Zuyan Liu, Wenliang Zhao, Jie Zhou +1
2023-06-05
Machine Learning · Computer Science
Improving the performance of Stein variational inference through extreme sparsification of physically-constrained neural network models
Govinda Anantha Padmanabha, Jan Niklas Fuhg, Cosmin Safta, Reese E. Jones +1
2024-07-02
Machine Learning · Computer Science
Learning Sparse Networks Using Targeted Dropout
Aidan N. Gomez, Ivan Zhang, Siddhartha Rao Kamalakara, Divyam Madaan +3
2019-09-10
Machine Learning · Computer Science
Proportional integral derivative booster for neural networks-based time-series prediction: Case of water demand prediction
Tony Salloom, Okyay Kaynak, Xinbo Yub, Wei He
2025-12-11
Computer Vision and Pattern Recognition · Computer Science
Visual Prompting Upgrades Neural Network Sparsification: A Data-Model Perspective
Can Jin, Tianjin Huang, Yihua Zhang, Mykola Pechenizkiy +3
2024-09-09
High Energy Physics - Experiment · Physics
A Convolutional Neural Network for Multiple Particle Identification in the MicroBooNE Liquid Argon Time Projection Chamber
MicroBooNE collaboration, P. Abratenko, M. Alrashed, R. An +183
2021-05-19
Systems and Control · Electrical Eng. & Systems
A scalable, gradient-stable approach to multi-step, nonlinear system identification using first-order methods
Cesare Donati, Martina Mammarella, Fabrizio Dabbene, Carlo Novara +1
2025-02-17
Instrumentation and Detectors · Physics
Particle identification in the GlueX detector with machine learning
Eric Habjan, Richard Dube, James McIntyre, Mezmur Edo +1
2025-09-18
Machine Learning · Computer Science
Activation by Interval-wise Dropout: A Simple Way to Prevent Neural Networks from Plasticity Loss
Sangyeon Park, Isaac Han, Seungwon Oh, Kyung-Joong Kim
2025-06-24
Machine Learning · Computer Science
Speeding up NAS with Adaptive Subset Selection
Vishak Prasad C, Colin White, Paarth Jain, Sibasis Nayak +1
2022-11-04
Machine Learning · Statistics
Fast Adaptive Weight Noise
Justin Bayer, Maximilian Karl, Daniela Korhammer, Patrick van der Smagt
2015-07-21