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We usually use feature normalization bef...
Q.
We usually use feature normalization before using the Gaussian k
A.
e 1
B.
1 and 2
C.
1 and 3
D.
2 and 3
Answer» B. 1 and 2
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We usually use feature normalization before using the Gaussian kernel in SVM. What is true about feature normalization? 1. We do feature normalization so that new feature will dominate other 2. Some times, feature normalization is not feasible in case of categorical variables 3. Feature normalization always helps when we use Gaussian kernel in SVM
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Give the correct Answer for following statements. 1. It is important to perform feature normalization before using the Gaussian kernel. 2. The maximum value of the Gaussian kernel is 1.
We usually use feature normalization before using the Gaussian k
Any linear combination of the components of a multivariate Gaussian is a univariate Gaussian.
Any linear combination of the components of a multivariate Gaussian is a univariate Gaussian.
Gaussian distribution when plotted, gives a bell shaped curve which is symmetric about the of the feature values.