What is the correct order of the prior vector in fitensemble?

When using matlabs `fitensemble` to learn a classifier I can specify the parameter `prior` as well as parameter `classnames`.

Has the order of the elements in both vectors be the same? And what is the standard value for true/false classes?

To be more specific: assume true class has prior probability 0.6, false class 0.4; Should I use:

`ens = fitensemble(...,'prior',[0.6 0.4])` or

`ens = fitensemble(...,'prior',[0.4 0.6])` or

`ens = fitensemble(...,'prior',[0.4 0.6],'classnames',[true false])` or

`ens = fitensemble(...,'prior',[0.4 0.6],'classnames',[false,true])` ?

I cannot find the answer in the documentation.

The documentation of perfcurve is more specifc:

Prior: Either string or array with two elements. It represents prior probabilities for the positive and negative class, respectively. Default is 'empirical', that is, perfcurve derives prior probabilities from class frequencies. If set to 'uniform', perfcurve sets all prior probabilities equal.

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Thanks for the edit, @Dan. Embarrassing. –  YAK Aug 16 '13 at 13:12

ens = fitensemble(X,Y,method,nlearn,learners) creates an ensemble model that predicts responses to data. The ensemble consists of models listed in learners.

First part

You have to use `prior` in alphabetical order of your class labels.

So if the labels are `['A','B']`, you use `'prior',[P(A) P(B)]`,

or if the labels are `['true','false']`, you use `'prior',[P(false) P(true)]`,

or if the labels are `[-1 10]`, you use `'prior',[P(-1) P(10)]`.

Second Part

About the `classnames`, this option is used so that you can call `fitensemble` for a fewer classes in your data.

Imagine you have four classes `A,B,C,D`, so your `Y` will be something like:

``````Y = [A;A;B;D;B;A;C;A;A;A;D, ... ];
``````

Now you may write `'classnames',['A';'B'],` if you want `fitensemble` for just two classes and it will be the same as `'classnames',['B';'A'],`.

I know this is a late answer, I hope it helps.

Example

I have used 'fisheriris' database, which has three classes (`setosa',`versicolor`,`virginica`).

because it has `150` cases and `50` of each class, I randomized the data and selected `100` samples.

``````load fisheriris
rng(12);
idx = randperm(size(meas,1));
meas = meas(idx,:);
species = species(idx,:);
meas = meas(1 : 100,:);
species = species(1 : 100,:);
trueprior = [ sum(strcmp(species,'setosa')),...
sum(strcmp(species,'versicolor')),...
sum(strcmp(species,'virginica'))] / 100;
``````

The `trueprior = [0.32,0.30,0.38]` shows the true prior probabilities.

In the following code I have trained three `fitensembles`, first one with default options so the prior probability is `empirical` (is as same as `trueprior`); Second one is trained with `pprior` set to `trueprior` which will have the same results as the fist (because `trueprior` is in alphabetical order of class labels). The third one is trained with non-alphabetical order and shows different results than the first two.

``````ada1 = fitensemble(meas,species,'AdaBoostM2',20,'tree');
subplot(311)
title('Resubstitution error for default prior (empirical)');
subplot(312)
title('Resubstitution error for prior with alphabetical order of class labels');
subplot(313)
title('Resubstitution error for prior with random order');
``````

I also trained a `fitensemble` with only two classes using `classnames` option

``````ada4 = fitensemble(meas,species,'AdaBoostM1',20,'tree','classnames',...
{'versicolor','virginica'});
``````

As a proof `AdaBoosM1` that doesn't support more than two classes works fine here with only two classes.

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Odd...the ClassNames property of an ensemble should be automatically sorted then. If you could give a short usage summary in the beginning of your answer it be even more useful. –  YAK Nov 28 '14 at 3:43
@YAK, I provided a better example. See the edit. –  Rashid Nov 28 '14 at 9:33
perfect. I simply used predict with an ensemble on completely random data and can confirm your results. –  YAK Nov 29 '14 at 19:12
@YAK, Thanks, I'm glad it worked for you. –  Rashid Nov 29 '14 at 19:17