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    政大機構典藏 > 理學院 > 應用數學系 > 學位論文 >  Item 140.119/84948
    Please use this identifier to cite or link to this item: https://nccur.lib.nccu.edu.tw/handle/140.119/84948


    Title: 模糊時間數列的屬性預測
    Qualitive Forecasting for Fuzzy Time Series
    Authors: 林玉鈞
    Contributors: 吳柏林
    林玉鈞
    Keywords: 模糊時間數列
    模糊關係
    模糊規則
    準確度
    隸屬度函數
    Fuzzy time series
    Fuzzy relation
    Fuzzy rule
    Accuracy
    Membership Function
    Date: 2001
    Issue Date: 2016-04-15 16:02:51 (UTC+8)
    Abstract: 本文嘗試以模糊理論的觀念,應用到時間數列分析上。研究重點包括模糊關係、模糊規則庫和模糊時間數列模式建構與預測等。我們首先給定模糊時間數列模式的概念與一些重要性質。接著提出模糊規則庫的定義,以及模式建構的流程,並以模糊關係方程式的推導,提出模糊時間數列模式建構方法。最後,利用提出的方法,對台灣地區加權股票指數建立模糊時間數列模式,並對未來進行預測,且考慮以平均預測準確度來做預測效果之比較。這對於財務金融的未來走勢分析將深具意義。
    The paper has attempted to apply the concept of fuzzy method on the analysis of time series. This reserch is also to include fuzzy relation, fuzzy rule base, fuzzy time series model constructed and forecasting. First, we`ll define the concept of fuzzy time series model and some important properties. Next, the definition of fuzzy rule base will also be put forward, along with procedure of model constructed, the formation of fuzzy relation polynomial, and the methods to construct fuzzy time series model. At last, with the above methods, we`ll build up fuzzy time series model on Taiwan Weighted Index and predict future trend while examine the predictive results with average forecasting accuracy. This shall carry profund signifigornce on the analysis of future trend in terms of financialism.
    封面頁
    證明書
    致謝詞
    論文摘要
    目錄
    1、前言
    2、模糊集合理論與模糊時間數列
    2.1 模糊理論
    2.2 隸屬度函數(Membership Function)
    2.3 模糊時間數列分析
    3、模糊時間數列模式建構步驟與預測流程
    3.1 模糊規則
    3.2 平均預測秩階準確度
    3.3 模糊時間數列的分析與預測
    4、台灣股票加權指數之模糊時間數列
    4.1資料分析
    4.2模糊模式建構
    5、結論
    參考文獻
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    Description: 碩士
    國立政治大學
    應用數學系
    87751011
    Source URI: http://thesis.lib.nccu.edu.tw/record/#A2002001139
    Data Type: thesis
    Appears in Collections:[應用數學系] 學位論文

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