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I have a mat file with a structure that looks like this:

enter image description here

How do I normalize the data and save it as a .dat file (ascii)

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what do you mean by "normalize"? –  r.m. Oct 11 '11 at 17:20
1) find the minimum and maximum dataset 2) find Normalized scale minimum and maximum 3) change all numbers in the data set to 4) Normalized value –  Garrith Graham Oct 11 '11 at 17:23
What have you tried so far? –  Nzbuu Oct 11 '11 at 19:15
please see above –  Garrith Graham Oct 11 '11 at 19:20
I mean I can manually copy the data from the vec in the mat file and paste into excel then save as csv then convert the csv to .dat but there must be a way to save directly as .dat -ASCII –  Garrith Graham Oct 11 '11 at 19:30

2 Answers 2

up vote 4 down vote accepted

I assume that you want to normalize each column.

There are two ways you can normalize:

(1) Set minimum to 0 and maximum to 1

dataset = bsxfun(@minus,dataset,min(dataset));
dataset = bsxfun(@rdivide,dataset,max(dataset));

(2) Set average to zero, standard deviation to 1 (if you don't have the Statistics Toolbox, use mean and std to subtract and divide, respectively, as above).

dataset = zscore(dataset); 


Why anyone ever use option 2 to normalize?

When you calculate the difference (dissimilarity) between different data points, you may want to weigh the different dimensions equally. Since dimensions with large variance will dominate the dissimilarity measure, you normalize the variance to one.

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why not just vec = randn(494021, 42);? –  Garrith Graham Oct 11 '11 at 19:08
@Garrith Graham: Because there may be correlation in your data. –  Jonas Oct 11 '11 at 19:21
using your method is there a way to specify the size to take from the dataset you will notice with mine I use vec = randn(494021, 42); I can change this to take only 10 or 1000 records from n columns –  Garrith Graham Oct 11 '11 at 20:04
@GarrithGraham: Sure. Create a subset of your data as subset = dataset(1:howeverManyRowsYouWant,:), then run my code with subset instead of dataset. –  Jonas Oct 11 '11 at 20:11
that doesnt work? its just outputs the subset with the same as the M file –  Garrith Graham Oct 11 '11 at 20:29

Your normalization:

dataset = dataset-ones(size(dataset,1),1)*min(dataset) % subtract min
dataset = dataset ./ (ones(size(dataset,1),1)*max(dataset)+eps) % divide by max
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I get this error: ??? Error using ==> minus Matrix dimensions must agree. –  Garrith Graham Oct 11 '11 at 17:50

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