Machine learning through self generating programs
Published Article === People have tried different ways to make machines intelligent. One option is to use a simulated neural net as a platform for Genetic Algorithms. Neural nets are a combination of neurons in a certain pattern. Neurons in a neural net system are a simulation of neurons in an organ...
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Interim : Interdisciplinary Journal, Vol 6, Issue 2: Central University of Technology Free State Bloemfontein
2015
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Online Access: | http://hdl.handle.net/11462/407 |
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ndltd-netd.ac.za-oai-union.ndltd.org-cut-oai-ir.cut.ac.za-11462-4072016-03-16T03:59:04Z Machine learning through self generating programs Lubbe, H.G Kotze, B.J. Central University of Technology Free State Bloemfontein Genetic Algorithms Intelligent programs Published Article People have tried different ways to make machines intelligent. One option is to use a simulated neural net as a platform for Genetic Algorithms. Neural nets are a combination of neurons in a certain pattern. Neurons in a neural net system are a simulation of neurons in an organism's brain. Genetic Algorithms represent an emulation of evolution in nature. The question arose as to why write a program to simulate neurons if a program can execute the functions a combination of neurons would generate. For this reason a virtual robot indicated in Figure 1 was made "intelligent" by developing a process where the robot creates a program for itself. Although Genetic Algorithms might have been used in the past to generate a program, a new method called Single-Chromosome-Evolution-Algorithms (SCEA) was introduced and compared to Genetic Algorithms operation. Instructions in the program were changed by using either Genetic Algorithms or alternatively with SCEA where only one simulation was needed per generation to be tested by the fitness of the system. 2015-09-07T10:49:42Z 2015-09-07T10:49:42Z 2007 2007 Article 1684498X http://hdl.handle.net/11462/407 en_US Interim : Interdisciplinary Journal;Vol 6, Issue 2 Central University of Technology Free State Bloemfontein 57 988 bytes, 1 file Application/PDF Interim : Interdisciplinary Journal, Vol 6, Issue 2: Central University of Technology Free State Bloemfontein |
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Genetic Algorithms Intelligent programs |
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Genetic Algorithms Intelligent programs Lubbe, H.G Kotze, B.J. Machine learning through self generating programs |
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Published Article === People have tried different ways to make machines intelligent. One option is to use a simulated neural net as a platform for Genetic Algorithms. Neural nets are a combination of neurons in a certain pattern. Neurons in a neural net system are a simulation of neurons in an organism's brain. Genetic Algorithms represent an emulation of evolution in nature. The question arose as to why write a program to simulate neurons if a program can execute the functions a combination of neurons would generate. For this reason a virtual robot indicated in Figure 1 was made "intelligent" by developing a process where the robot creates a program for itself. Although Genetic Algorithms might have been used in the past to generate a program, a new method called Single-Chromosome-Evolution-Algorithms (SCEA) was introduced and compared to Genetic Algorithms operation. Instructions in the program were changed by using either Genetic Algorithms or alternatively with SCEA where only one simulation was needed per generation to be tested by the fitness of the system. |
author2 |
Central University of Technology Free State Bloemfontein |
author_facet |
Central University of Technology Free State Bloemfontein Lubbe, H.G Kotze, B.J. |
author |
Lubbe, H.G Kotze, B.J. |
author_sort |
Lubbe, H.G |
title |
Machine learning through self generating programs |
title_short |
Machine learning through self generating programs |
title_full |
Machine learning through self generating programs |
title_fullStr |
Machine learning through self generating programs |
title_full_unstemmed |
Machine learning through self generating programs |
title_sort |
machine learning through self generating programs |
publisher |
Interim : Interdisciplinary Journal, Vol 6, Issue 2: Central University of Technology Free State Bloemfontein |
publishDate |
2015 |
url |
http://hdl.handle.net/11462/407 |
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AT lubbehg machinelearningthroughselfgeneratingprograms AT kotzebj machinelearningthroughselfgeneratingprograms |
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