Have a personal or library account? Click to login
Spike Timing Dependent Plasticity Versus Intrinsic Plasticity as Feature Extraction Technique Cover

Spike Timing Dependent Plasticity Versus Intrinsic Plasticity as Feature Extraction Technique

Open Access
|Mar 2026

References

  1. Andrews, D. F. Plots of High-Dimensional Data. – Biometrics, Vol. 28, 1972, No 1, pp. 125-136.
  2. Basalyga, G., P. M. Gleiser, T. Wennekers. Emergence of Small-World Structure in Networks of Spiking Neurons through STDP Plasticity. – Adv. Exp. Med. Biol., Vol. 718, 2011, pp. 33-9.
  3. Belatreche, B., R. Paul. Dynamic Cluster Formation Using Populations of Spiking Neurons. – In: Proc. of IEEE World Congress on Computational Intelligence “WCCI’12”, Brisbane, Australia, 10-15 June 2012.
  4. Cateau, H., K. Kitano, T. Fukai. Interplay between a Phase Response Curve and Spike-Timing-Dependent Plasticity Leading to Wireless Clustering. – Phys. Rev. E, Vol. 77, 2008, No 5, 051909.
  5. Chaudhari, S., H. Nair, J. M. F. Moura, J. PaulShen. Unsupervised Clustering of Time Series Signals Using Neuromorphic Energy-Efficient Temporal Neural Networks. – In: IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP’21), Toronto, ON, Canada, 2021, pp. 7873-7877.
  6. Debanne, D., Y. Inglebert. Spike Timing-Dependent Plasticity and Memory. – Current Opinion in Neurobiology, Vol. 80, 2023, 102707.
  7. Gewaltig, M.-O., M. Diesmann. NEST (Neural Simulation Tool). – Scholarpedia, Vol. 2, 2007, No 4, 1430.
  8. Guetig, R., R. Aharonov, S. Rotter, H. Sompolinsky. Learning Input Correlations through Nonlinear Temporally Asymmetric Hebbian Plasticity. – Journal of Neuroscience, Vol. 23, 2003, pp. 3697-3714.
  9. Huo, B., F. Li, S. Peng, H. Chen, S. Xin, H. Wang. Research on SNN Learning Algorithms and Networks Based on Biological Plausibility. – IEEE Access, Vol. 13, 2025, pp. 95243-95256.
  10. Izhikevich, E. M. Dynamical Systems in Neuroscience: The Geometry of Excitability and Bursting. The MIT Press, 2007.
  11. Jaeger, H. Tutorial on Training Recurrent Neural Networks, Covering BPPT, RTRL, EKF, and the “Echo State Network” Approach. GMD Report 159, German National Research Center for Information Technology, 2002.
  12. Kasabov, N. Time-Space, Spiking Neural Networks and Brain-Inspired Artificial Intelligence. Springer Series on Bio- and Neurosystems, 2019.
  13. Khalid, T. K., S. Nasreen. A Survey of Feature Selection and Feature Extraction Techniques in Machine Learning. – In: Proc. of Science and Information Conference, London, UK, 2014, pp. 372-378.
  14. Koprinkova-Hristova, P. Multi-Dimensional Data Clustering and Visualization via Echo State Networks. – In: R. Kountchev, K. Nakamatsu, Eds. New Approaches in Intelligent Image Analysis. Intelligent Systems Reference Library. Vol. 108. Cham, Springer, 2016.
  15. Koprinkova-Hristova, P., I. Georgiev, M. Raykovska. Echo State Network for Features Extraction and Segmentation of Tomography Images. – Computer Science and Information Systems, Vol. 21, 2024, No 1, pp. 379-393.
  16. Koprinkova-Hristova, P., D. Penkov, S. Nedelcheva, S. Yordanov, N. Kasabov. On-Line Learning, Classification and Interpretation of Brain Signals Using 3D SNN and ESN. – In: Proc. of International Joint Conference on Neural Networks (IJCNN’23), Gold Coast, Australia, 2023, pp. 1-6.
  17. Koprinkova-Hristova, P., M. Stefanova, B. Genova, N. Bocheva. Echo State Network for Classification of Human Eye Movements during Decision Making. – In: L. Iliadis, I. Maglogiannis, V. Plagianakos, Eds. Artificial Intelligence Applications and Innovations (AIAI’18). IFIP Advances in Information and Communication Technology. Vol. 519. Cham, Springer, 2018.
  18. Li, X., M. Small. Enhancement of Signal Sensitivity in a Heterogeneous Neural Network Refined from Synaptic Plasticity. – New J. Phys., Vol. 12, 2010, 083045.
  19. Majumdar, P. Spiking Neural Networks: A Comprehensive Review of Diverse Applications, Research Progress, Challenges, and Future Research Directions. – Evolving Systems, Vol. 16, 2025, 125.
  20. Masquelier, T., R. Guyonneau, S. J. Thorpe. Spike Timing Dependent Plasticity Finds the Start of Repeating Patterns in Continuous Spike Trains. – PLoS ONE, Vol. 3, 2008, No 1, e1377.
  21. Masquelier, T., S. J. Thorpe. Unsupervised Learning of Visual Features through Spike Timing Dependent Plasticity. – PLoS Comput Biol., Vol. 3, 2007, No 2, e31.
  22. Mutlag, W. K., S. K. Ali, Z. M. Aydam, B. H. Taher. Feature Extraction Methods: A Review. – J. Phys.: Conf. Ser., Vol. 1591, 2020, 012028.
  23. Rohr, V., R. Berner, E. L. Lameu, O. V. Popovych, S. Yanchuk. Frequency Cluster Formation and Slow Oscillations in Neural Populations with Plasticity. – PLoS ONE, Vol. 14, 2019, No 11, e0225094.
  24. Rotter, S., M. Diesmann. Exact Digital Simulation of Time-Invariant Linear Systems with Applications to Neuronal Modeling. – Biol. Cybern., Vol. 81, 1999, pp. 381-402.
  25. Safa, A. Continual Learning with Hebbian Plasticity in Sparse and Predictive Coding Networks: A Survey and Perspective. – Neuromorph. Comput. Eng., Vol. 4, 2024, 042001.
  26. Schrauwen, B., M. Wandermann, D. Verstraeten, J. J. Steil, D. Stroobandt. Improving Reservoirs Using Intrinsic Plasticity. – Neurocomputing, Vol. 71, 2008, pp. 1159-1171.
  27. Tal, A., N. Peled, H. T. Siegelmann. Biologically Inspired Load Balancing Mechanism in Neocortical Competitive Learning. – Frontiers in Neural Circuits, Vol. 8, 2014, 18.
DOI: https://doi.org/10.2478/cait-2026-0010 | Journal eISSN: 1314-4081 | Journal ISSN: 1311-9702
Language: English
Page range: 174 - 184
Submitted on: Feb 3, 2026
|
Accepted on: Mar 9, 2025
|
Published on: Mar 21, 2026
In partnership with: Paradigm Publishing Services
Publication frequency: 4 issues per year

© 2026 Petia Koprinkova-Hristova, published by Bulgarian Academy of Sciences, Institute of Information and Communication Technologies
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.