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	<title>Kommentare zu: Steven M. Kay: “Modern Spectral Estimation – Theory and Applications”,p. 61 exercise 3.6</title>
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	<link>https://lysario.de/solved_problems/steven-m-kay-%e2%80%9cmodern-spectral-estimation-%e2%80%93-theory-and-applications%e2%80%9dp-61-exercise-3-6</link>
	<description>&#34;ούτω γάρ ειδέναι το σύνθετον υπολαμβάνομεν, όταν ειδώμεν εκ τίνων και πόσων εστίν ...&#34;</description>
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		<title>Von: Steven M. Kay: “Modern Spectral Estimation – Theory and Applications”,p. 61 exercise 3.7</title>
		<link>https://lysario.de/solved_problems/steven-m-kay-%e2%80%9cmodern-spectral-estimation-%e2%80%93-theory-and-applications%e2%80%9dp-61-exercise-3-6/comment-page-1#comment-535</link>
		<dc:creator>Steven M. Kay: “Modern Spectral Estimation – Theory and Applications”,p. 61 exercise 3.7</dc:creator>
		<pubDate>Tue, 26 Apr 2011 16:12:18 +0000</pubDate>
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		<description><![CDATA[[...]  The mean of the maximum likelihood estimator of the variance can be easily obtained using [4,  relation (8)] and noting that the maximum likelihood estimator of the variance is  times the variance estimator [...]]]></description>
		<content:encoded><![CDATA[<p>[...]  The mean of the maximum likelihood estimator of the variance can be easily obtained using [4,  relation (8)] and noting that the maximum likelihood estimator of the variance is  times the variance estimator [...]</p>
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