How do I do weighted classification?

Hello
I'm using classifiers in Matlab (e.g. [fitcsvm](<http://ch.mathworks.com/help/stats/fitcsvm.html>) or [fitcknn](<http://ch.mathworks.com/help/stats/classificationknn-class.html))>. Because I have highly unbalanced classes (10% negative class and 90% positive class), I would like to use weighting. Usually I calculate the weight for class i as follows:
weight_i = numSamples / (numClasses * numSamplesClass_i)
That means the total number of observations divided by the product of the number of classes and the number of samples for class i.
Matlab offers the 'Weights' flag to set weights for each observation. But in the description the following is written:
The software normalizes Weights to sum up to the value of the prior probability in the respective class.
I'm completely unsure how I should now use the weights. Can I just set the weight calculated from the above formula for each data point according to its class belonging?

 Accepted Answer

You can easily change 'prior' to 'uniform'. 'uniform' sets all class probabilities equal. The default value is 'empirical' which determines class probabilities from class frequencies in Y. For example if you are using decision tree as a classifier then:
tree = fitctree(X,Y, 'prior', 'uniform')

3 Comments

MHN
MHN on 21 Apr 2016
Edited: MHN on 21 Apr 2016
There are many tricks to handle an unbalanced data. e.g. you can also define a cost matrix in a way that misclassification of your minor class costs much more than the misclassification of another class. e.g the following cost matrix: [0 9/10; 1/10 0]
MHN
MHN on 21 Apr 2016
Edited: MHN on 21 Apr 2016
You can also use weight. "The software normalizes Weights to sum up to the value of the prior probability in the respective class" means that your weight must be a distribution. For example if you define all the weights equal to 1 and change the 'prior' to 'empirical', then Matlab normalizes your weights to 1/M (M:number of samples) to make it a distribution which sums up to 1.
Tom Gerard
Tom Gerard on 21 Apr 2016
Edited: Tom Gerard on 21 Apr 2016
Thank you very much for your answer. Which of the three possibilities (prior, cost, weight) is best or is there no difference?
So, technically I can use my above formula weight_i = numSamples / (numClasses * numSamplesClass_i) for setting a cost matrix but not for settings weights for each data point. Correct?

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More Answers (1)

MHN
MHN on 26 Apr 2016
It depends on your evaluation criteria and does not have a straight forward answer. I suggest you to try them and see which gives you the best answer according to your evaluation criteria.

Asked:

on 21 Apr 2016

Answered:

MHN
on 26 Apr 2016

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