Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/32566
題名: 模糊期望值與模糊變異數的檢定方法
Methods on Testing Hypotheses of Fuzzy Mean and Fuzzy Variance
作者: 張曙光
Shu-Kuang,Chang
貢獻者: 吳柏林
張曙光
Shu-Kuang,Chang
關鍵詞: 隸屬度函數
模糊樣本取樣
模糊樣本期望值
模糊樣本變異數
人性思考
t檢定
F檢定
模糊常態分配
Membership function
fuzzy sampling survey
fuzzy mean
human thought
t-test
F-test
normally distributed
日期: 2006
上傳時間: 17-Sep-2009
摘要: 在許多實際情形下,傳統的統計檢定方法是不足以應付的。故本論文提出模糊檢定方法,我們定義出模糊樣本期望值與模糊樣本變異數的計算方法,再針對不同的模糊資料,分別提出不同的檢定方法,去解決最實際需要解決的問題,其中包括推廣古典的統計檢定方法與自創的檢定方法。\n\n關鍵字:隸屬度函數,模糊樣本取樣,模糊樣本期望值,模糊樣本變異數,人性思考,t檢定,F檢定,模糊常態分配。
In many expositions of fuzzy methods, fuzzy techniques are described as an alternative to a more traditional statistical approach. In this paper, we present a class of fuzzy statistical decision process in which testing hypothesis can be naturally reformulated in terms of interval-valued statistics. We provide the definitions of fuzzy mean, fuzzy distance as well as investigation of their related properties. We also give some empirical examples to illustrate the techniques and to analyze fuzzy data. Empirical studies show that fuzzy hypothesis testing with soft computing for interval data are more realistic and reasonable in the social science research. Finally certain comments are suggested for the further studies. We hope that this reformation will make the corresponding fuzzy techniques more acceptable to researchers whose only experience is in using traditional statistical methods.\nKey words: Membership function, fuzzy sampling survey, fuzzy mean, human thought, t-test, F-test, normally distributed.
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描述: 博士
國立政治大學
應用數學研究所
90751503
95
資料來源: http://thesis.lib.nccu.edu.tw/record/#G0090751503
資料類型: thesis
Appears in Collections:學位論文

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