Morphological learning in spiking neurons: a new hardware efficient maching learning method
The brain has fascinated mankind from time immemorial due to it computational prowess and complexity. The latest developments in the research of spiking neural network models have shown that unlike the classic neural network models, these models communicate via precisely timed neuron spikes, thus ma...
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sg-ntu-dr.10356-613932023-07-07T16:55:58Z Morphological learning in spiking neurons: a new hardware efficient maching learning method Jahagirdar, Kavya School of Electrical and Electronic Engineering Arindam Basu DRNTU::Engineering::Electrical and electronic engineering The brain has fascinated mankind from time immemorial due to it computational prowess and complexity. The latest developments in the research of spiking neural network models have shown that unlike the classic neural network models, these models communicate via precisely timed neuron spikes, thus making them a closer representation of the biological neurons. ‘Morphological Learning in Spiking Neurons: A New Hardware Efficient Machine Learning Method’ explores the greater performance of spiking neurons with lumped non-linearity than their counterparts with linear synaptic summation of signals. The better performance is due to the additional degree of freedom in such neurons. The algorithm presented is in this project is hardware friendly for learning. MATLAB software developed by MathWorks has been used as a computational tool to simulate the different neuron models and WTA networks as it offers an environment to generate graphical results easily. Bachelor of Engineering 2014-06-10T01:39:36Z 2014-06-10T01:39:36Z 2014 2014 Final Year Project (FYP) http://hdl.handle.net/10356/61393 en Nanyang Technological University 46 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering Jahagirdar, Kavya Morphological learning in spiking neurons: a new hardware efficient maching learning method |
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The brain has fascinated mankind from time immemorial due to it computational prowess and complexity. The latest developments in the research of spiking neural network models have shown that unlike the classic neural network models, these models communicate via precisely timed neuron spikes, thus making them a closer representation of the biological neurons. ‘Morphological Learning in Spiking Neurons: A New Hardware Efficient Machine Learning Method’ explores the greater performance of spiking neurons with lumped non-linearity than their counterparts with linear synaptic summation of signals. The better performance is due to the additional degree of freedom in such neurons. The algorithm presented is in this project is hardware friendly for learning. MATLAB software developed by MathWorks has been used as a computational tool to simulate the different neuron models and WTA networks as it offers an environment to generate graphical results easily. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Jahagirdar, Kavya |
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Final Year Project |
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Jahagirdar, Kavya |
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Jahagirdar, Kavya |
title |
Morphological learning in spiking neurons: a new hardware efficient maching learning method |
title_short |
Morphological learning in spiking neurons: a new hardware efficient maching learning method |
title_full |
Morphological learning in spiking neurons: a new hardware efficient maching learning method |
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Morphological learning in spiking neurons: a new hardware efficient maching learning method |
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Morphological learning in spiking neurons: a new hardware efficient maching learning method |
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morphological learning in spiking neurons: a new hardware efficient maching learning method |
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2014 |
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http://hdl.handle.net/10356/61393 |
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