LFD Book Forum Meaning of 'Full iteration' in HW #5, problem #7
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#1
05-06-2012, 10:38 AM
 jcatanz Member Join Date: Apr 2012 Posts: 41
Meaning of 'Full iteration' in HW #5, problem #7

This is really the same question I asked earlier about problem #5:
does the initial guess count as the first or the zero'th (full) iteration?
#2
05-06-2012, 11:17 AM
 yaser Caltech Join Date: Aug 2009 Location: Pasadena, California, USA Posts: 1,478
Re: Meaning of 'Full iteration' in HW #5, problem #7

Quote:
 Originally Posted by jcatanz This is really the same question I asked earlier about problem #5: does the initial guess count as the first or the zero'th (full) iteration?
An iteration takes a parameter vector and produces another, so the initialization (choosing in case the parameters are weights) is not an iteration, just the starting point of the first iteration that results in .
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#3
05-06-2012, 02:52 PM
 jcatanz Member Join Date: Apr 2012 Posts: 41
Re: Meaning of 'Full iteration' in HW #5, problem #7

Thanks Prof Abu-Mostafa.

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