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I'm using the random forest algorithm as the classifier of my thesis project. The training set consists of thousands of images, and for each image about 2000 pixels get sampled. For each pixel, I've hundred of thousands of features. With my current hardware limitations (8G of ram, possibly extendable to 16G) I'm able to fit in memory the samples (i.e. features per pixel) for only one image. My questions is: is it possible to call multiple times the train method, each time with a different image's samples, and get the statistical model automatically updated at each call? I'm particularly interested in the variable importance since, after I train the full training set with the whole features set, my idea is to reduce the number of features from hundred of thousands to about 2000, keeping only the most important ones.

Thank you for any advice, Daniele

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I dont think the algorithm supports incremental training. You could consider reducing the size of your descriptors prior to training, using other feature reduction method. Or estimate the variable importance on a random subset of pixels taken among all your training images, as much as you can stuff into your memory...

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See my answer to this post. There are incremental versions of random forests, and they will let you train on much larger data.

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Unfortunately I've read your answer too late. I end-up with a custom implementation somehow similar to yours (tree growth in a breath-first manner). Moreover, the growth is done per-node and parallelized using OpenCL. All the code is here code.google.com/p/parloma/source/browse/… . The code is now specific for my problem (hand pose recognition), hope to find the time to rewrite the library to handle generic problems. –  mUogoro Dec 1 '12 at 11:29
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