Complex-valued neural networks and their learning algorithms
Recent developments in complex-valued feed-forward neural networks have found number of applications like adaptive array signal processing, medical imaging, communication engineering, etc. However, these applications demand a tighter phase approximation along with magnitude approximation, which has...
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sg-ntu-dr.10356-435342023-07-04T16:23:22Z Complex-valued neural networks and their learning algorithms Savitha Ramasamy. Narasimhan Sundararajan School of Electrical and Electronic Engineering DRNTU::Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Recent developments in complex-valued feed-forward neural networks have found number of applications like adaptive array signal processing, medical imaging, communication engineering, etc. However, these applications demand a tighter phase approximation along with magnitude approximation, which has not been emphasized in the existing literature. To fill this gap, this thesis addresses the development of novel fully complex-valued feed-forward neural networks and their supervised batch and sequential learning algorithms with an emphasis on better phase approximation. The classical approach to handle complex-valued signals is to split each complex-valued signal into two real-valued signals, either the real/imaginary components or magnitude/ phase components, and then use existing real-valued neural networks. In such a split complex-valued network, real-valued activation functions and real valued weights are used to estimate the network parameters. Thus, the gradients used in updating the free parameters of the network do not represent the true complex-valued gradients resulting in poor approximation of complex-valued functions, especially the phase of the complex-valued signals. This clearly shows a need for developing fully complex-valued neural networks and their learning algorithms. Doctor of Philosophy 2011-03-22T00:55:25Z 2011-03-22T00:55:25Z 2011 2011 Thesis http://hdl.handle.net/10356/43534 en 291 p. application/pdf |
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DRNTU::Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Savitha Ramasamy. Complex-valued neural networks and their learning algorithms |
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Recent developments in complex-valued feed-forward neural networks have found number of applications like adaptive array signal processing, medical imaging, communication engineering, etc. However, these applications demand a tighter phase approximation along with magnitude approximation, which has not been emphasized in the existing literature. To fill this gap, this thesis addresses the development of novel fully complex-valued feed-forward neural networks and their supervised batch and sequential learning algorithms with an emphasis on better phase approximation.
The classical approach to handle complex-valued signals is to split each complex-valued signal into two real-valued signals, either the real/imaginary components or magnitude/ phase components, and then use existing real-valued neural networks. In such a split complex-valued network, real-valued activation functions and real valued weights are used to estimate the network parameters. Thus, the gradients used in updating the free parameters of the network do not represent the true complex-valued gradients resulting in poor approximation of complex-valued functions, especially the phase of the complex-valued signals. This clearly shows a need for developing fully complex-valued neural networks and their learning algorithms. |
author2 |
Narasimhan Sundararajan |
author_facet |
Narasimhan Sundararajan Savitha Ramasamy. |
format |
Theses and Dissertations |
author |
Savitha Ramasamy. |
author_sort |
Savitha Ramasamy. |
title |
Complex-valued neural networks and their learning algorithms |
title_short |
Complex-valued neural networks and their learning algorithms |
title_full |
Complex-valued neural networks and their learning algorithms |
title_fullStr |
Complex-valued neural networks and their learning algorithms |
title_full_unstemmed |
Complex-valued neural networks and their learning algorithms |
title_sort |
complex-valued neural networks and their learning algorithms |
publishDate |
2011 |
url |
http://hdl.handle.net/10356/43534 |
_version_ |
1772825135558950912 |