How to implement random forest classifier?
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Akshat
on 26 Nov 2024
In order to implement a random forest classifier, you can use "TreeBagger" random forest classifier. Find more on this documentation link:
https://www.mathworks.com/help/stats/treebagger.html
Here is some boilerplate code for you:
% Example data
X = rand(1000, 73);
Y = randi([0, 1], 1000, 1);
rng(1);
cv = cvpartition(size(X, 1), 'HoldOut', 0.3);
idx = cv.test;
XTrain = X(~idx, :);
YTrain = Y(~idx, :);
XTest = X(idx, :);
YTest = Y(idx, :);
numTrees = 100; % Number of trees in the forest
randomForestModel = TreeBagger(numTrees, XTrain, YTrain, 'Method', 'classification');
YPred = predict(randomForestModel, XTest);
Hope this helps!
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