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-   -   Input normalization (http://book.caltech.edu/bookforum/showthread.php?t=4454)

Sweater Monkey 10-28-2013 08:02 PM

Input normalization
 
I could use some clarification on the 9th homework assignment.

In normalizing the features I would assume that it is with respect to the bounds on the feature's possible values rather than on the data itself?

For example, the minimum pixel intensity is for the digit data is -1 and the maximum is +1 therefore, using average pixel intensity as a feature, the min and max average pixel intensities that are possible are -1 and +1 (if all pixels were white or all pixels were black for a given data point). So in this case I am under the assumption that the feature doesn't need any shift or scale normalization since the min and max values are already within the [-1,1] bound regardless of the data. Is this correct?

magdon 11-01-2013 12:22 PM

Re: Input Normalization
 
Feature normalization (as in the example of data snooping in financial trading in chapter 5) is based on the data itself. Similarly in the assignment, the feature normalization is based on the data.

Quote:

Originally Posted by Sweater Monkey (Post 11592)
I could use some clarification on the 9th homework assignment.

In normalizing the features I would assume that it is with respect to the bounds on the feature's possible values rather than on the data itself?

For example, the minimum pixel intensity is for the digit data is -1 and the maximum is +1 therefore, using average pixel intensity as a feature, the min and max average pixel intensities that are possible are -1 and +1 (if all pixels were white or all pixels were black for a given data point). So in this case I am under the assumption that the feature doesn't need any shift or scale normalization since the min and max values are already within the [-1,1] bound regardless of the data. Is this correct?


alanericy 11-04-2013 10:44 PM

Plotting Separators
 
Hi Professor, since the regression will result a highly nonlinear boundary how do we plot it in the feature plot?Thanks!

magdon 11-05-2013 09:41 AM

Re: Plotting Separators
 
You just need to show the region of your feature space that is classified as +1 versus -1. This can be done by griding your space and plotting a blue dot for +1 and a red dot for -1.

Quote:

Originally Posted by alanericy (Post 11599)
Hi Professor, since the regression will result a highly nonlinear boundary how do we plot it in the feature plot?Thanks!



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