標題: 互關訊息於非線性估計之探討
Mutual Entropy to Nonlinear Estimation
作者: 林耀中
Yaw-Chung Linn
吳炳飛
Bing-Fei Wu
電控工程研究所
關鍵字: 互關訊息;相關性係數;相互高斯;最小均方估計誤差;mutual entropy;correlation coefficient;jointly Gaussian;minimum mean-square estimation error
公開日期: 1993
摘要: 對於一般非線性估計問題,我們自互關訊息 (mutual entropy)發展一上 限 (upper bound) 於相關性係數 (correlation coefficient),此一上 限依據非線性轉換 (nonlinear transformation),而經由此轉換之後, 進而產生相互高斯 (jointly Gaussian) 訊號。我們也探討了最小均方估 計誤差 (minimum mean-squared estimation error) 和互關訊息的關係 。此外,當給定一相關性係數時,我們可以很容易地產生 ergodic 和相 互高斯訊號,所以可經由電腦來模擬。 For a general estimation problem, we develop an upper bound on the correlation coefficients in terms of the mutual entropy. This upper bound may be reached by means of a nonlinear trans- formation, after transformation, the processes are jointly Gaussian. The relationship between the minimum mean-squared error and the mutual entropy is discussed. Moreover, given a correl- ation coefficient, ergodic and jointly Gaussian signals can be generated easily, so that the simulation can be done by mputer.
URI: http://140.113.39.130/cdrfb3/record/nctu/#NT820327039
http://hdl.handle.net/11536/57755
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