Implementation of Group-Learning-Oriented Knowledge Reinforced Intelligent Financial Decision Support System—an Example of Knowledge Extraction on TaiEX

博士 === 國立交通大學 === 資訊管理研究所 === 94 === Artificial intelligence has been applied in numerous studies to predict stock trends after years of development. The fluctuating and chaotic nature of the stock market has long been a topic of interest for investors and financial researchers. As most learning mod...

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Main Authors: LI, Jung-Bin, 李鍾斌
Other Authors: CHEN, An-Pin
Format: Others
Language:en_US
Published: 2006
Online Access:http://ndltd.ncl.edu.tw/handle/74259562675857696085
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spelling ndltd-TW-094NCTU53960642016-05-27T04:18:37Z http://ndltd.ncl.edu.tw/handle/74259562675857696085 Implementation of Group-Learning-Oriented Knowledge Reinforced Intelligent Financial Decision Support System—an Example of Knowledge Extraction on TaiEX 以群體學習為基礎的知識再強化智慧型財務決策支援系統建置—以台灣加權指數內含行為的知識萃取為例 LI, Jung-Bin 李鍾斌 博士 國立交通大學 資訊管理研究所 94 Artificial intelligence has been applied in numerous studies to predict stock trends after years of development. The fluctuating and chaotic nature of the stock market has long been a topic of interest for investors and financial researchers. As most learning models form the past studies were based on trial and error, they produced unsatisfactory performances in terms of efficiency and accuracy, or could only be applied in a closed form environment. Since the power of computers has been improved tremendously in recent years, the learning model of artificial intelligence should also be re-examined to improve decision quality. This study built an intelligent group learning model based on the group learning concept in human behavior in traditional learning theories. Cooperative learning is widely defined as the process through which a group of individuals interact to achieve their goal. In the fluctuating stock market, investors often have various decision making approaches. This work integrates eXtended Classifier System (XCS) and neural network modules incorporating features such as dynamic learning and group decision making. An empirical study is conducted by comparing the profitability of the proposed system with that of investment strategies based on simple rules with single technical indices, individual learning XCS, buy and hold, and six-year term deposits based on the Taiwan Index. The proposed system demonstrates superior performance in terms of accuracy and the rate of cumulative return. CHEN, An-Pin 陳安斌 2006 學位論文 ; thesis 76 en_US
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language en_US
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description 博士 === 國立交通大學 === 資訊管理研究所 === 94 === Artificial intelligence has been applied in numerous studies to predict stock trends after years of development. The fluctuating and chaotic nature of the stock market has long been a topic of interest for investors and financial researchers. As most learning models form the past studies were based on trial and error, they produced unsatisfactory performances in terms of efficiency and accuracy, or could only be applied in a closed form environment. Since the power of computers has been improved tremendously in recent years, the learning model of artificial intelligence should also be re-examined to improve decision quality. This study built an intelligent group learning model based on the group learning concept in human behavior in traditional learning theories. Cooperative learning is widely defined as the process through which a group of individuals interact to achieve their goal. In the fluctuating stock market, investors often have various decision making approaches. This work integrates eXtended Classifier System (XCS) and neural network modules incorporating features such as dynamic learning and group decision making. An empirical study is conducted by comparing the profitability of the proposed system with that of investment strategies based on simple rules with single technical indices, individual learning XCS, buy and hold, and six-year term deposits based on the Taiwan Index. The proposed system demonstrates superior performance in terms of accuracy and the rate of cumulative return.
author2 CHEN, An-Pin
author_facet CHEN, An-Pin
LI, Jung-Bin
李鍾斌
author LI, Jung-Bin
李鍾斌
spellingShingle LI, Jung-Bin
李鍾斌
Implementation of Group-Learning-Oriented Knowledge Reinforced Intelligent Financial Decision Support System—an Example of Knowledge Extraction on TaiEX
author_sort LI, Jung-Bin
title Implementation of Group-Learning-Oriented Knowledge Reinforced Intelligent Financial Decision Support System—an Example of Knowledge Extraction on TaiEX
title_short Implementation of Group-Learning-Oriented Knowledge Reinforced Intelligent Financial Decision Support System—an Example of Knowledge Extraction on TaiEX
title_full Implementation of Group-Learning-Oriented Knowledge Reinforced Intelligent Financial Decision Support System—an Example of Knowledge Extraction on TaiEX
title_fullStr Implementation of Group-Learning-Oriented Knowledge Reinforced Intelligent Financial Decision Support System—an Example of Knowledge Extraction on TaiEX
title_full_unstemmed Implementation of Group-Learning-Oriented Knowledge Reinforced Intelligent Financial Decision Support System—an Example of Knowledge Extraction on TaiEX
title_sort implementation of group-learning-oriented knowledge reinforced intelligent financial decision support system—an example of knowledge extraction on taiex
publishDate 2006
url http://ndltd.ncl.edu.tw/handle/74259562675857696085
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