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Can someone explain the decision tree modeling in Matlab? I saw the help in Matlab, but they have provided an example without explaining how to use the parameters in the 'classregtree' function. I have start my research which involves decision tree implementation. Any help to explain the use of 'classregtree' with its parameters will be appreciated.

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up vote 23 down vote accepted

The documentation page of the function classregtree is self-explanatory...

Lets go over some of the most common parameters of the classification tree model:

  • x: data matrix, rows are instances, cols are predicting attributes
  • y: column vector, class label for each instance
  • categorical: specify which attributes are discrete type (as opposed to continuous)
  • method: whether to produce classification or regression tree (depend on the class type)
  • names: gives names to the attributes
  • prune: enable/disable reduced-error pruning
  • minparent/minleaf: allows to specify min number of instances in a node if it is to be further split
  • nvartosample: used in random trees (consider K randomly chosen attributes at each node)
  • weights: specify weighted instances
  • cost: specify cost matrix (penalty of the various errors)
  • splitcriterion: criterion used to select the best attribute at each split. I'm only familiar with the Gini index which is a variation of the Information Gain criterion.
  • priorprob: explicitly specify prior class probabilities, instead of being calculated from the training data

A complete example to illustrate the process:

%# load data
load carsmall

%# construct predicting attributes and target class
vars = {'MPG' 'Cylinders' 'Horsepower' 'Model_Year'};
x = [MPG Cylinders Horsepower Model_Year];
y = cellstr(Origin);

%# train classification decision tree
t = classregtree(x, y, 'method','classification', 'names',vars, ...
                'categorical', [2 4], 'prune','off');
view(t)

%# test
yPredicted = eval(t, x);
cm = confusionmat(y,yPredicted);           %# confusion matrix
N = sum(cm(:));
err = ( N-sum(diag(cm)) ) / N;             %# testing error

%# prune tree to avoid overfitting
tt = prune(t, 'level',2);
view(tt)

%# predict a new unseen instance
inst = [33 4 78 NaN];
prediction = eval(tt, inst)

tree

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Thanks Amro for the elaborate explanation. Basically the stucking problem I had before and still I am not able to comprehend is regarding the conditions on which tree is built. By conditions I mean, where are those conditions (or criteria) incorporated in the Matlab function for the tree to proceed? I'll be thankful if you could explain that through some small program or may be in anyway you want to explain. Thanks. –  Pupil Dec 29 '09 at 4:30
2  
It seems you are trying to write your own decision tree implementation. I suggest you first familiarize yourself with the subject before starting to code. Besides that take a look at this other solution I had for a similar question, which explains how to use Entropy and Information Gain as splitting criterion: stackoverflow.com/questions/1859554/… –  Amro Dec 29 '09 at 15:17
2  
Also, you might find this list of tutorials by Andrew Moore to be very useful: autonlab.org/tutorials (first two are of interest to you) –  Amro Dec 29 '09 at 15:19
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protected by Brad Larson Mar 26 '13 at 1:33

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