Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/88735
題名: 非均質馬可夫決策系統的決策空間
Policies in Nonhomogeneous Markov Decision Processes
作者: 劉任昌
Liou, Chen Chang
貢獻者: 陸行
Paul Lu
劉任昌
Liou, Chen Chang
關鍵詞: 非均質馬可夫決策系統
Nonhomogeneous Markov Processes
日期: 1994
上傳時間: 29-Apr-2016
摘要:   在求無限期非均質馬可夫決策過程(nonhomogeneous Markov decisinon processes)第一期的的最佳解時,我們通常要將它表示成有限期的動態規劃問題。動態規劃可以用合成函數型式表示,也可以用最常見的線性規劃型式表示。
  Hopp, Bean and Duenyas(1992) formulate a mixed integer program (MIP) to determine whether a finite time horizon is a forecast horizon in a nonhomogeneous Markov decision process(NMDP). Their formula are solved by complex Bender`s decomposition In this thesis, we make an examination in details of the contraction property and affine mapping property of NMDP. By these properties we are relieved of the complex MIP formula and Bender`s decomposition algorithm. The main contribution of the thesis is to show that it is not necessary to determine the optimal policies by running through the whole feasible solution space of their MIP problem. We only need to check a finite number of vertices at a polyhedral set shaped by the solution of the NMDP. The analysis shows insights into the NMDP and facilitate the prosess in determining the forecast horizon. Furthermore, this NMDP formulation is presented in the form of a simple dynamic function which is different from the linear program presented by Hopp, Bean and Duenyas.
描述: 碩士
國立政治大學
應用數學系
81155006
資料來源: http://thesis.lib.nccu.edu.tw/record/#B2002003903
資料類型: thesis
Appears in Collections:學位論文

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