Machine Learning · Statistics
Compressive Statistical Learning with Random Feature Moments
Rémi Gribonval, Gilles Blanchard, Nicolas Keriven, Yann Traonmilin
2021-06-23
Machine Learning · Computer Science
Statistical Learning Guarantees for Compressive Clustering and Compressive Mixture Modeling
Rémi Gribonval, Gilles Blanchard, Nicolas Keriven, Yann Traonmilin
2021-08-18
Machine Learning · Computer Science
Generative Learning of Continuous Data by Tensor Networks
Alex Meiburg, Jing Chen, Jacob Miller, Raphaëlle Tihon +2
2024-07-26
Machine Learning · Computer Science
Sketching for Large-Scale Learning of Mixture Models
Nicolas Keriven, Anthony Bourrier, Rémi Gribonval, Patrick Pérez
2017-05-08
Computer Vision and Pattern Recognition · Computer Science
Teachers Do More Than Teach: Compressing Image-to-Image Models
Qing Jin, Jian Ren, Oliver J. Woodford, Jiazhuo Wang +3
2021-08-19
Computer Vision and Pattern Recognition · Computer Science
Train Sparsely, Generate Densely: Memory-efficient Unsupervised Training of High-resolution Temporal GAN
Masaki Saito, Shunta Saito, Masanori Koyama, Sosuke Kobayashi
2020-06-02
Machine Learning · Statistics
Sketching Datasets for Large-Scale Learning (long version)
Rémi Gribonval, Antoine Chatalic, Nicolas Keriven, Vincent Schellekens +2
2021-06-28
Machine Learning · Computer Science
MG-GCN: Fast and Effective Learning with Mix-grained Aggregators for Training Large Graph Convolutional Networks
Tao Huang, Yihan Zhang, Jiajing Wu, Junyuan Fang +1
2020-11-20
Machine Learning · Statistics
Mean Nystr\"om Embeddings for Adaptive Compressive Learning
Antoine Chatalic, Luigi Carratino, Ernesto De Vito, Lorenzo Rosasco
2022-02-11
Machine Learning · Computer Science
Distributive Pre-Training of Generative Modeling Using Matrix-Product States
Sheng-Hsuan Lin, Olivier Kuijpers, Sebastian Peterhansl, Frank Pollmann
2023-06-27
Machine Learning · Computer Science
Sparse Decomposition of Graph Neural Networks
Yaochen Hu, Mai Zeng, Ge Zhang, Pavel Rumiantsev +3
2025-03-18
Machine Learning · Computer Science
Effective Network Compression Using Simulation-Guided Iterative Pruning
Dae-Woong Jeong, Jaehun Kim, Youngseok Kim, Tae-Ho Kim +1
2019-02-13
Image and Video Processing · Electrical Eng. & Systems
High-Fidelity Generative Image Compression
Fabian Mentzer, George Toderici, Michael Tschannen, Eirikur Agustsson
2020-10-26
Machine Learning · Computer Science
Weight Pruning via Adaptive Sparsity Loss
George Retsinas, Athena Elafrou, Georgios Goumas, Petros Maragos
2020-06-05
Computer Vision and Pattern Recognition · Computer Science
Entropy-based Guidance of Deep Neural Networks for Accelerated Convergence and Improved Performance
Mackenzie J. Meni, Ryan T. White, Michael Mayo, Kevin Pilkiewicz
2024-07-08