Neural Information Processing and Computations of Two-Input Synapses

Author:

Kim Soon Ho1,Woo Junhyuk2,Choi Kiri3,Choi MooYoung4,Han Kyungreem5

Affiliation:

1. Laboratory of Computational Neurophysics, Convergence Research Center for Brain Science, Brain Science Institute, Korea Institute of Science and Technology, Seoul 02792, South Korea soonho.eric.kim@gmail.com

2. Laboratory of Computational Neurophysics, Convergence Research Center for Brain Science, Brain Science Institute, Korea Institute of Science and Technology, Seoul 02792, South Korea wjh601@kist.re.kr

3. School of Computational Sciences, Korea Institute for Advanced Study, Seoul 02455, South Korea ckiri0315@kias.re.kr

4. Department of Physics and Astronomy and Center for Theoretical Physics, Seoul National University, Seoul 08826, South Korea mychoi@snu.ac.kr

5. Laboratory of Computational Neurophysics, Convergence Research Center for Brain Science, Brain Science Institute, Korea Institute of Science and Technology, Seoul 02792, South Korea khan@kist.re.kr

Abstract

AbstractInformation processing in artificial neural networks is largely dependent on the nature of neuron models. While commonly used models are designed for linear integration of synaptic inputs, accumulating experimental evidence suggests that biological neurons are capable of nonlinear computations for many converging synaptic inputs via homo- and heterosynaptic mechanisms. This nonlinear neuronal computation may play an important role in complex information processing at the neural circuit level. Here we characterize the dynamics and coding properties of neuron models on synaptic transmissions delivered from two hidden states. The neuronal information processing is influenced by the cooperative and competitive interactions among synapses and the coherence of the hidden states. Furthermore, we demonstrate that neuronal information processing under two-input synaptic transmission can be mapped to linearly nonseparable XOR as well as basic AND/OR operations. In particular, the mixtures of linear and nonlinear neuron models outperform the fashion-MNIST test compared to the neural networks consisting of only one type. This study provides a computational framework for assessing information processing of neuron and synapse models that may be beneficial for the design of brain-inspired artificial intelligence algorithms and neuromorphic systems.

Publisher

MIT Press

Subject

Cognitive Neuroscience,Arts and Humanities (miscellaneous)

Reference117 articles.

1. Tensorflow: A system for large-scale machine learning;Abadi,2016

2. Heterosynaptic metaplasticity in the hippocampus in vivo: A BCM-like modifiable threshold for LTP;Abraham;Proceedings of the National Academy of Sciences,2001

3. Bailey, C. H., Giustetto, M., Huang, Y. Y., Hawkins, R. D., & Kandel, E. R. (2000). Is heterosynaptic modulation essential for stabilizing Hebbian plasticity and memory?Nature Reviews Neuroscience, 1(1), 11–20. 11252764

4. Density and morphology of dendritic spines in mouse neocortex;Ballesteros-Yáñez;Neuroscience,2006

5. Using mutual information for selecting features in supervised neural net learning;Battiti;IEEE Transactions on Neural Networks,1994

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