Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/86166
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dc.contributor.advisor陳樹衡zh_TW
dc.contributor.advisorChen, Shu-Hengen_US
dc.contributor.author廖崇智zh_TW
dc.contributor.authorLiao, Chung-Chihen_US
dc.creator廖崇智zh_TW
dc.creatorLiao, Chung-Chihen_US
dc.date1999en_US
dc.date.accessioned2016-04-26T02:25:15Z-
dc.date.available2016-04-26T02:25:15Z-
dc.date.issued2016-04-26T02:25:15Z-
dc.identifierB2002001635en_US
dc.identifier.urihttp://nccur.lib.nccu.edu.tw/handle/140.119/86166-
dc.description碩士zh_TW
dc.description國立政治大學zh_TW
dc.description經濟學系zh_TW
dc.description86258001zh_TW
dc.description.abstract我們把經濟體視為一個複雜適應系統(complex adaptive system), 強調系統中異質性(heterogeneous)agent的學習適應行為與agent之間的互動性交互作用, 此時主流經濟學裡的分析架構, 如:代表性個人模型(represesentive agent model)、理性預期(rational expectation)、固定點均衡分析(fixed-point equilibrium analysis)等將不再適用, 取而代之的是演化經濟學(evolutionary economics)的研究典範, 這樣的研究架構下, 並沒有適當的數學分析工具可資運用, 因此我們改以agent-based建模(agent-based modelng)的社會模擬(social simulation)來建構一個人工的經濟體(artificial economy), 以此為主要研究方法, 這就是agent-based計算經濟學(agent-based computational economics)或稱人工經濟生命(artificial economic life)。\r\n本文中以股票市場為主要的研究課題, 我們以遺傳規劃(genetic programming)的人工智慧(artificial intelligence)方法來模擬股市中有限理性(bounded rational)異質交易者的交易策略學習行為, 建構出一個人工股票市場(artificial stock market), 在這樣的架構下, 我們成功地產生出類似真實股票市場的股價時間序列特性, 我們同時也檢定了人工股票市場中價量的因果關係, 說明了在沒有外生因素之下, 人工股票市場的複雜系統可自發地產生出雙向的價量因果關係, 進一步地, 我們研究下層agent(交易者)行為與上層股價時間序列行為的關聯性, 我們也發現個體的行為並不能直接加總或推論出複雜適應系統的總體行為, 這就是突現性質(emergent property)的發生, 最後, 本文描述了agent-based計算經濟學研究架構的優勢與缺點, 再附帶介紹一個用以進行agent-based建模相關研究的軟體程式庫-SWARM。zh_TW
dc.description.tableofcontents謝辭…………………………………………………vi\r\n第1章 緒論…………………………………………1\r\n 1.1 研究動機……………………………………1\r\n 1.2 Agent-Based計算建模…………………… 5\r\n 1.3 本文架構……………………………………7\r\n第2章Agent-Based計算經濟學……………………9\r\n 2.1 建構人工經濟生命…………………………9\r\n 2.2 複雜適應系統典範…………………………13\r\n 2.3 演化經濟學…………………………………16\r\n 2.4 完全理性與有限理性………………………18\r\n 2.5 何以採用電腦模擬?………………………20\r\n 2.6 如何模擬適應行為?………………………22\r\n 2.7 ACE的研究架構…….………………………25\r\n第3章 GP-Based人工股票市場模擬研究…………28\r\n 3.1 人工股票市場文獻回顧……………………28\r\n 3.2 GP-Based的市場結構………………………31\r\n 3.3 模型設定……………………………………35\r\n 3.4 人工股票市場時間序列……………………39\r\n 3.5 人工股票市場的價量關係檢定……………41\r\n 3.6 人工股票市場中下層agent的行為……… 43\r\n 3.7 人工股票市場理性預期的檢定……………45\r\n 3.8 小結…………………………………………46\r\n第4章 結論與展望…………………………………59\r\n 4.1 ACE研究架構的優勢與批評……………… 59\r\n 4.2 SWARM……………………………………… 62\r\n參考文獻與書目……………………………………66zh_TW
dc.source.urihttp://thesis.lib.nccu.edu.tw/record/#B2002001635en_US
dc.subject人工股票市場zh_TW
dc.subjectagent-based計算經濟學zh_TW
dc.subject複雜適應系統zh_TW
dc.subject遺傳規劃zh_TW
dc.subject演化經濟學zh_TW
dc.subject突現性質zh_TW
dc.subject社會模擬zh_TW
dc.subject人工經濟生命zh_TW
dc.subjectartificial stock marketen_US
dc.subjectagent-based computational economicsen_US
dc.subjectcomplex adaptive systemen_US
dc.subjectgenetic programmingen_US
dc.subjectevolutionary economicsen_US
dc.subjectemergent propertyen_US
dc.subjectsocial simulationen_US
dc.subjectartificial economic lifeen_US
dc.title人工股票市場的Agent-Based計算建模zh_TW
dc.titleOn Agent-Based Computational Modeling of Artificial Stock Marketsen_US
dc.typethesisen_US
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