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#1
09-25-2015, 12:26 PM
 zuodongz Junior Member Join Date: Sep 2015 Posts: 7
Q13, how to calculate b ,and final predicted solution ?

Hi, i achieve alpha through quadratic programming MATLAB , however , i cannot exactly understand hot to achieve bias and weight . anyone has ideas ? how many support vectors is the correct answer .
#2
09-25-2015, 11:11 PM
 yaser Caltech Join Date: Aug 2009 Location: Pasadena, California, USA Posts: 1,478
Re: Q13, how to calculate b ,and final predicted solution ?

Quote:
 Originally Posted by zuodongz Hi, i achieve alpha through quadratic programming MATLAB , however , i cannot exactly understand hot to achieve bias and weight . anyone has ideas ? how many support vectors is the correct answer .
See slide 10 of Lecture 15.

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