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Michal Cernansky
Michal Cernansky
Department of Applied Informatics, University of SS. Cyril and Methodius, Trnava, Slovakia
Geverifieerd e-mailadres voor ucm.sk
Titel
Geciteerd door
Geciteerd door
Jaar
Markovian architectural bias of recurrent neural networks
P Tino, M Cernansky, L Benusková
IEEE Transactions on Neural Networks 15 (1), 6-15, 2004
2122004
Simple recurrent network trained by RTRL and extended Kalman filter algorithms
M Cernansky
Neural Network World 13 (3), 223-234, 2003
472003
Performance evaluations of IPTables firewall solutions under DDoS attacks
M Šimon, L Huraj, M Čerňanský
Journal of Applied Mathematics, Statistics and Informatics 11 (2), 35-45, 2015
382015
Predictive modeling with echo state networks
M Čerňanský, P Tiňo
International Conference on Artificial Neural Networks, 778-787, 2008
352008
Organization of the state space of a simple recurrent network before and after training on recursive linguistic structures
M Čerňanský, M Makula, Ľ Beňušková
Neural Networks 20 (2), 236-244, 2007
302007
Feed-forward echo state networks
M Cernansky, M Makula
Proceedings. 2005 IEEE International Joint Conference on Neural Networks …, 2005
302005
Training recurrent neural network using multistream extended Kalman filter on multicore processor and CUDA enabled graphic processor unit
M Čerňanský
International Conference on Artificial Neural Networks, 381-390, 2009
212009
Comparison of echo state networks with simple recurrent networks and variable-length Markov models on symbolic sequences
M Čerňanský, P Tiňo
International Conference on Artificial Neural Networks, 618-627, 2007
152007
On using of Turing machine simulators in teaching of theoretical computer science
M Čerňanský, M Nehéz, D Chudá, I Polický
Aplimat-Journal of Applied Methematics 1, 301-312, 2008
62008
Approaches based on Markovian architectural bias in recurrent neural networks
M Makula, M Čerňanský, Ľ Beňušková
SOFSEM 2004: Theory and Practice of Computer Science: 30th Conference on …, 2004
52004
Processing Symbolic Sequences by Recurrent Neural Networks Trained by Kalman Filter-Based Algorithms
M Cernanský, M Makula, L Benušková
SOFSEM, 2004
52004
Finite-state Reber automaton and the recurrent neural networks trained in supervised and unsupervised manner
M Cernansky, L Benusková
Lecture Notes in Computer Science (см. в книгах) 2130, 0737-0737, 2001
42001
P.: ext Correction Using Approaches Based on Markovian Architectural Bias
M Cernanský, M Makula, P Trebatický, P Lacko
Proceedings of the 10th International Conference on Engineering Applications …, 2007
32007
On using of random access machine simulators in teaching of theoretical computer science
D Chudá, M Nehéz, M Čerňanský
Proceedings of the International Conference on Computer Systems and …, 2009
22009
Improving the state space organization of untrained recurrent networks
M Čerňanský, M Makula, Ľ Beňušková
International Conference on Neural Information Processing, 671-678, 2008
22008
Controlled DDoS attack on IPv4/IPv6 network using distributed computing infrastructure
M Čerňanský, L Huraj, M Šimon
Journal of Information and Organizational Sciences 44 (2), 297-316, 2020
12020
Processing Symbolic Sequences Using Echo-State Networks
M Cernansky, P Tino, RM French, E Thomas
NCPW10: Tenth Neural Computation and Psychology Workshop, 2008
12008
Processing Symbolic Sequences Using Echo-State Networks
M ČERŇANSKÝ, P TIŇO
From Associations To Rules: Connectionist Models of Behavior and Cognition …, 2008
12008
Finite-State Reber Automaton and the Recurrent Neural Networks Trained in Supervised and Unsupervised Manner
M Cerňanský, L Benuškov
International Conference on Artificial Neural Networks, 737-742, 2001
12001
Multi-reservoir Echo State Networks with Encoders
M Čerňanský, ID Luptáková
Computer Science On-line Conference, 480-489, 2022
2022
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Artikelen 1–20