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Ekaterina Lobacheva
Ekaterina Lobacheva
HSE University / bayesgroup.ru
Подтвержден адрес электронной почты в домене hse.ru - Главная страница
Название
Процитировано
Процитировано
Год
On power laws in deep ensembles
E Lobacheva, N Chirkova, M Kodryan, DP Vetrov
Advances in Neural Information Processing Systems 33, 2375-2385, 2020
452020
On the periodic behavior of neural network training with batch normalization and weight decay
E Lobacheva, M Kodryan, N Chirkova, A Malinin, DP Vetrov
Advances in Neural Information Processing Systems 34, 21545-21556, 2021
232021
Bayesian sparsification of recurrent neural networks
E Lobacheva, N Chirkova, D Vetrov
arXiv preprint arXiv:1708.00077, 2017
192017
Bayesian compression for natural language processing
N Chirkova, E Lobacheva, D Vetrov
arXiv preprint arXiv:1810.10927, 2018
162018
Automated real-time classification of functional states based on physiological parameters
EM Lobacheva, YN Galatenko, RF Gabidullina, VV Galatenko, ED Livshitz, ...
Procedia-Social and Behavioral Sciences 86, 373-378, 2013
112013
Semantic embeddings for program behavior patterns
A Chistyakov, E Lobacheva, A Kuznetsov, A Romanenko
arXiv preprint arXiv:1804.03635, 2018
92018
Training scale-invariant neural networks on the sphere can happen in three regimes
M Kodryan, E Lobacheva, M Nakhodnov, DP Vetrov
Advances in Neural Information Processing Systems 35, 14058-14070, 2022
82022
Deep ensembles on a fixed memory budget: One wide network or several thinner ones?
N Chirkova, E Lobacheva, D Vetrov
arXiv preprint arXiv:2005.07292, 2020
82020
Structured sparsification of gated recurrent neural networks
E Lobacheva, N Chirkova, A Markovich, D Vetrov
Proceedings of the AAAI Conference on Artificial Intelligence 34 (04), 4989-4996, 2020
82020
automated real-time classification of functional states: significance of individual tuning stage
MG Ya, E Podol’Skii Vladimir
Psychology in Russia: State of the art 6 (3), 41-48, 2013
82013
Joint optimization of segmentation and color clustering
E Lobacheva, O Veksler, Y Boykov
Proceedings of the IEEE International Conference on Computer Vision, 1626-1634, 2015
72015
Bayesian sparsification of gated recurrent neural networks
E Lobacheva, N Chirkova, D Vetrov
arXiv preprint arXiv:1812.05692, 2018
42018
Deep part-based generative shape model with latent variables
A Kirillov, M Gavrikov, E Lobacheva, A Osokin, D Vetrov
27th British Machine Vision Conference (BMVC 2016), 2016
32016
Monotonic models for real-time dynamic malware detection
A Chistyakov, E Lobacheva, A Shevelev, A Romanenko
arXiv preprint arXiv:1804.03643, 2018
22018
Loss function dynamics and landscape for deep neural networks trained with quadratic loss
MS Nakhodnov, MS Kodryan, EM Lobacheva, DS Vetrov
Doklady Mathematics 106 (Suppl 1), S43-S62, 2022
12022
On the memorization properties of contrastive learning
I Sadrtdinov, N Chirkova, E Lobacheva
arXiv preprint arXiv:2107.10143, 2021
12021
Adaptive prediction time for sequence classification
M Ryabinin, E Lobacheva
12018
To Stay or Not to Stay in the Pre-train Basin: Insights on Ensembling in Transfer Learning
I Sadrtdinov, D Pozdeev, DP Vetrov, E Lobacheva
Advances in Neural Information Processing Systems 36, 2024
2024
Large Learning Rates Improve Generalization: But How Large Are We Talking About?
E Lobacheva, E Pockonechnyy, M Kodryan, D Vetrov
arXiv preprint arXiv:2311.11303, 2023
2023
Electronic apparatus for compressing recurrent neural network and method thereof
EM Lobacheva, NA Chirkova, DP Vetrov
US Patent 11,568,237, 2023
2023
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