Apply Auto-Partition to Build a Learnmental Model upon Fuzzy Causal Network
碩士 === 清雲科技大學 === 電子工程研究所 === 95 === In order to fit in humanity, the non-quantification and fuzzified methods are used to evaluate the learning performance of learner in mostly intelligent digital tutorial systems. Therefore, the fuzzy causal network model of learner used in those systems, but the...
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ndltd-TW-095CYU004280222015-10-13T13:47:50Z http://ndltd.ncl.edu.tw/handle/71686587461723993546 Apply Auto-Partition to Build a Learnmental Model upon Fuzzy Causal Network 運用自動分割技術建立學習心態之模糊因果網路模型 Yung-Chuan Chang 張永泉 碩士 清雲科技大學 電子工程研究所 95 In order to fit in humanity, the non-quantification and fuzzified methods are used to evaluate the learning performance of learner in mostly intelligent digital tutorial systems. Therefore, the fuzzy causal network model of learner used in those systems, but the following problems are existed while using the fuzzy inference in a multi-layer causal network with partial feedback: (a) There are too many membership functions need to be assigned and adjusted; (b) Above the second hidden layer, there is not physical meaning to assign and adjust those fuzzy partitions with inference independently. Dearing with those problems, a fuzzy space partition propagation method is designed, and the associated inference method also used in a multi-layer fuzzy causal network. This method has the following advantages. (a) The system will be automatically to adjust the membership function. (b) The consequent of inference in previous layer just as the antecedent part of inference in the posterior layer. This method can reduce the difficulty of artificial partition, and make the digital tutorial systems more flexible and more intelligent. Fu-Hua Chou 周復華 2008 學位論文 ; thesis 68 zh-TW |
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碩士 === 清雲科技大學 === 電子工程研究所 === 95 === In order to fit in humanity, the non-quantification and fuzzified methods are used to evaluate the learning performance of learner in mostly intelligent digital tutorial systems. Therefore, the fuzzy causal network model of learner used in those systems, but the following problems are existed while using the fuzzy inference in a multi-layer causal network with partial feedback: (a) There are too many membership functions need to be assigned and adjusted; (b) Above the second hidden layer, there is not physical meaning to assign and adjust those fuzzy partitions with inference independently. Dearing with those problems, a fuzzy space partition propagation method is designed, and the associated inference method also used in a multi-layer fuzzy causal network. This method has the following advantages. (a) The system will be automatically to adjust the membership function. (b) The consequent of inference in previous layer just as the antecedent part of inference in the posterior layer. This method can reduce the difficulty of artificial partition, and make the digital tutorial systems more flexible and more intelligent.
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author2 |
Fu-Hua Chou |
author_facet |
Fu-Hua Chou Yung-Chuan Chang 張永泉 |
author |
Yung-Chuan Chang 張永泉 |
spellingShingle |
Yung-Chuan Chang 張永泉 Apply Auto-Partition to Build a Learnmental Model upon Fuzzy Causal Network |
author_sort |
Yung-Chuan Chang |
title |
Apply Auto-Partition to Build a Learnmental Model upon Fuzzy Causal Network |
title_short |
Apply Auto-Partition to Build a Learnmental Model upon Fuzzy Causal Network |
title_full |
Apply Auto-Partition to Build a Learnmental Model upon Fuzzy Causal Network |
title_fullStr |
Apply Auto-Partition to Build a Learnmental Model upon Fuzzy Causal Network |
title_full_unstemmed |
Apply Auto-Partition to Build a Learnmental Model upon Fuzzy Causal Network |
title_sort |
apply auto-partition to build a learnmental model upon fuzzy causal network |
publishDate |
2008 |
url |
http://ndltd.ncl.edu.tw/handle/71686587461723993546 |
work_keys_str_mv |
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1717742227333054464 |