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Abstract: <br /> <br /> <br /> <br /> <br /> Many attempts have been made to imitate the way nature solves complex problems, to match its elegance, to equal its imperfect and imprecision yet ideal solutions. Two of many techniques built for the ambitious goal are G...

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Main Author: (NIM 235 05 021), Nurwijaya
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/8872
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:8872
spelling id-itb.:88722017-09-27T15:37:09Z#TITLE_ALTERNATIVE# (NIM 235 05 021), Nurwijaya Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/8872 Abstract: <br /> <br /> <br /> <br /> <br /> Many attempts have been made to imitate the way nature solves complex problems, to match its elegance, to equal its imperfect and imprecision yet ideal solutions. Two of many techniques built for the ambitious goal are Genetic Algorithms (GA) and Artificial Neural Networks (ANN). GA is reminiscent of natural selection, an elegant generate-and-test strategy known to be very effective at finding optimal or near optimal solutions to a wide variety of problem. ANN is a representation of human brain, popular for its capability to recognize patterns from noisy, complex data, and estimating their nonlinear relationships. <br /> <br /> <br /> <br /> <br /> ANN is often very difficult to design, simply because the method of forming such complex and massive network as the human brain it represents is still a great mystery. Even more, when complex combinations of performance criteria (such as learning speed, compactness, generalization ability, and noise-resistance) are given, and as network applications continue to grow in size and complexity, the traditional engineering approach will not work, a more efficient and automated solution will be needed. GA can be used to automate ANN architecture design in several ways, for example: topology optimization, genetic training algorithms, and control parameter optimization. <br /> <br /> <br /> <br /> <br /> This paper is an in-depth study of ANN optimization method by using GA, or in other words, Genetically Evolved Artificial Neural Network. The study is to be made on the benchmark result of GA optimized ANN on several tasks. <br /> text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Abstract: <br /> <br /> <br /> <br /> <br /> Many attempts have been made to imitate the way nature solves complex problems, to match its elegance, to equal its imperfect and imprecision yet ideal solutions. Two of many techniques built for the ambitious goal are Genetic Algorithms (GA) and Artificial Neural Networks (ANN). GA is reminiscent of natural selection, an elegant generate-and-test strategy known to be very effective at finding optimal or near optimal solutions to a wide variety of problem. ANN is a representation of human brain, popular for its capability to recognize patterns from noisy, complex data, and estimating their nonlinear relationships. <br /> <br /> <br /> <br /> <br /> ANN is often very difficult to design, simply because the method of forming such complex and massive network as the human brain it represents is still a great mystery. Even more, when complex combinations of performance criteria (such as learning speed, compactness, generalization ability, and noise-resistance) are given, and as network applications continue to grow in size and complexity, the traditional engineering approach will not work, a more efficient and automated solution will be needed. GA can be used to automate ANN architecture design in several ways, for example: topology optimization, genetic training algorithms, and control parameter optimization. <br /> <br /> <br /> <br /> <br /> This paper is an in-depth study of ANN optimization method by using GA, or in other words, Genetically Evolved Artificial Neural Network. The study is to be made on the benchmark result of GA optimized ANN on several tasks. <br />
format Theses
author (NIM 235 05 021), Nurwijaya
spellingShingle (NIM 235 05 021), Nurwijaya
#TITLE_ALTERNATIVE#
author_facet (NIM 235 05 021), Nurwijaya
author_sort (NIM 235 05 021), Nurwijaya
title #TITLE_ALTERNATIVE#
title_short #TITLE_ALTERNATIVE#
title_full #TITLE_ALTERNATIVE#
title_fullStr #TITLE_ALTERNATIVE#
title_full_unstemmed #TITLE_ALTERNATIVE#
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url https://digilib.itb.ac.id/gdl/view/8872
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