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I had these questions in an exam today. State True or False and explain.

  1. If k1(.,.) and k2(.,.) are two valid kernel functions, then if h = k1 - k2, is h(.,.) a valid kernel function?

  2. A standard soft margin SVM is used to classify data set. We have a fixed C parameter. Two different algorithms A1 and A2 are used to obtain the support vector set {S: α i > 0}. Call them S1 and S2. Is S1 = S2 in all cases? Assume both algorithm use the same kernel function.

EDITED:

I guessed as:

  1. As kernel function need to be positive semi definite (PSD), the difference between two kernel functions need not be PSD. Hence FALSE.

  2. αi can be different among the two algorithms, the number of support vectors can differ as well. Hence FALSE again.

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try stats.stackexchange.com –  Leo Apr 1 '14 at 12:11
    
@Anony-Mousse I had clearly mentioned this is an exam question. I had no clue about these questions. I only know about kernel functions, but not about operations between kernel functions. I only guessed: as kernel function need to be positive semi definite (PSD), the difference between two kernel functions need not be PSD. Hence FALSE. For the second one, I guessed as αi can be different among the two algorithms, the number of support vectors can differ as well. Hence FALSE again. Anyways, I was merely guessing. –  user2761431 Apr 1 '14 at 15:39
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This question appears to be off-topic because it is about solving a homework. –  lejlot Apr 2 '14 at 5:07
    
@Anony-Mousse If you mean that you need to know about the two algorithms A1 and A2, NO, our Professor didn't specify what the algorithms were. –  user2761431 Apr 3 '14 at 12:37
    
@Anony-Mousse He only mentioned in class that in order to determine C and alpha, we have to use the Grid approach along with the cross validation method. I am not sure if this answers your question. –  user2761431 Apr 3 '14 at 16:12

1 Answer 1

up vote 0 down vote accepted

A) constant 0 is a kernel, constant 1 is a kernel, too. But 0-1=-1 is not PSD.

Thus false IMHO.

B) Assuming 2D data, where x=0 for Class 1, x=1 for Class 2, and y is uniformly random. Any vector from each class is as good a support vector as the others, yielding the same hyperplane. Visually:

x1 | y1
   |
x2 | y2

Which SVM is better, the one using x1 and y1 as support vectors, or the one using x2 and y2?

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