Unsupervised Learning in an Ensemble of Spiking Neural Networks Mediated by ITDP
- PMID: 27760125
- PMCID: PMC5070787
- DOI: 10.1371/journal.pcbi.1005137
Unsupervised Learning in an Ensemble of Spiking Neural Networks Mediated by ITDP
Abstract
We propose a biologically plausible architecture for unsupervised ensemble learning in a population of spiking neural network classifiers. A mixture of experts type organisation is shown to be effective, with the individual classifier outputs combined via a gating network whose operation is driven by input timing dependent plasticity (ITDP). The ITDP gating mechanism is based on recent experimental findings. An abstract, analytically tractable model of the ITDP driven ensemble architecture is derived from a logical model based on the probabilities of neural firing events. A detailed analysis of this model provides insights that allow it to be extended into a full, biologically plausible, computational implementation of the architecture which is demonstrated on a visual classification task. The extended model makes use of a style of spiking network, first introduced as a model of cortical microcircuits, that is capable of Bayesian inference, effectively performing expectation maximization. The unsupervised ensemble learning mechanism, based around such spiking expectation maximization (SEM) networks whose combined outputs are mediated by ITDP, is shown to perform the visual classification task well and to generalize to unseen data. The combined ensemble performance is significantly better than that of the individual classifiers, validating the ensemble architecture and learning mechanisms. The properties of the full model are analysed in the light of extensive experiments with the classification task, including an investigation into the influence of different input feature selection schemes and a comparison with a hierarchical STDP based ensemble architecture.
Conflict of interest statement
The authors have declared that no competing interests exist.
Figures
















Similar articles
-
Unsupervised post-training learning in spiking neural networks.Sci Rep. 2025 May 21;15(1):17647. doi: 10.1038/s41598-025-01749-x. Sci Rep. 2025. PMID: 40399359 Free PMC article.
-
Mirrored STDP Implements Autoencoder Learning in a Network of Spiking Neurons.PLoS Comput Biol. 2015 Dec 3;11(12):e1004566. doi: 10.1371/journal.pcbi.1004566. eCollection 2015 Dec. PLoS Comput Biol. 2015. PMID: 26633645 Free PMC article.
-
Dynamic evolving spiking neural networks for on-line spatio- and spectro-temporal pattern recognition.Neural Netw. 2013 May;41:188-201. doi: 10.1016/j.neunet.2012.11.014. Epub 2012 Dec 20. Neural Netw. 2013. PMID: 23340243
-
A review of learning in biologically plausible spiking neural networks.Neural Netw. 2020 Feb;122:253-272. doi: 10.1016/j.neunet.2019.09.036. Epub 2019 Oct 11. Neural Netw. 2020. PMID: 31726331 Review.
-
Linking cellular-level phenomena to brain architecture: the case of spiking cerebellar controllers.Neural Netw. 2025 Aug;188:107538. doi: 10.1016/j.neunet.2025.107538. Epub 2025 Apr 23. Neural Netw. 2025. PMID: 40344928 Review.
Cited by
-
Modulation of Spike-Timing Dependent Plasticity: Towards the Inclusion of a Third Factor in Computational Models.Front Comput Neurosci. 2018 Jul 3;12:49. doi: 10.3389/fncom.2018.00049. eCollection 2018. Front Comput Neurosci. 2018. PMID: 30018546 Free PMC article. Review.
-
Neuromorphic Implementation of Attractor Dynamics in a Two-Variable Winner-Take-All Circuit with NMDARs: A Simulation Study.Front Neurosci. 2017 Feb 7;11:40. doi: 10.3389/fnins.2017.00040. eCollection 2017. Front Neurosci. 2017. PMID: 28223913 Free PMC article.
-
Adaptive SNN for Anthropomorphic Finger Control.Sensors (Basel). 2021 Apr 13;21(8):2730. doi: 10.3390/s21082730. Sensors (Basel). 2021. PMID: 33924453 Free PMC article.
-
SpiLinC: Spiking Liquid-Ensemble Computing for Unsupervised Speech and Image Recognition.Front Neurosci. 2018 Aug 23;12:524. doi: 10.3389/fnins.2018.00524. eCollection 2018. Front Neurosci. 2018. PMID: 30190670 Free PMC article.
-
Analysis of Liquid Ensembles for Enhancing the Performance and Accuracy of Liquid State Machines.Front Neurosci. 2019 May 28;13:504. doi: 10.3389/fnins.2019.00504. eCollection 2019. Front Neurosci. 2019. PMID: 31191219 Free PMC article.
References
-
- O’Reilly RC. Modeling integration and dissociation in brain and cognitive development In: Munakata Y, Johnson MH, editors. Processes of Change in Brain and Cognitive Development: Attention and Performance XXI. Oxford: Oxford University Press; 2006. p. 1–22.
MeSH terms
LinkOut - more resources
Full Text Sources
Other Literature Sources