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I am looking for a stable open source library (preferably in Java or Python) which implements continuous online backpropagation for multilayer neural networks. That is, instead of taking as input the entire teaching data (e.g. a CSV) it should be able to take samples as they come one by one from a data stream.

I've seen a previous post (http://tinyurl.com/lcry5b5) about a similar feature in Encog (http://www.heatonresearch.com/encog). However this seems to be a new development and the documentation and examples are not too abundant.


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2 Answers 2

What you are asking for is online training, sort of. Online training is where the where the weights are updated for each sample, rather than batching the updates for all gradient calculation. You can find an example of doing that here with Encog.


If the data comes in sporadically, that is somewhat tricky. You would need to construct a training set, with a single element (or as many as you have) and then call the training method's iterate method. Keep in mind that backpropagation is an "iterative" training method. So just presenting a training sample for one iteration will not produce a neural network that is very "fit" to the training data.

For example, if you receive training element #1, you would need to iterate a number of times on that element. As soon as you receive element #2 you would need to iterate on both element #1 and #2. If you only iterated on #2 the weights would start to move towards #2 only and it would begin to forget #1.

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I think I found the best option for myself for now and wanted to share my experience. I played with Neuroph, Encog, Weka, PyBrain and FANN.

Neuroph and Weka do not support online backpropagation out of the box. Also Neuroph tends to be quite slow, compared to its alternatives.

Encog supports online learning as of its latest version. However I could not adapt the only example (i.e. XOR) for my purposes within reasonable time.

PyBrain does not support online learning out of the box. In an old discussion in its mailing list, there is some code that should allow for that. I tried it, but was getting strange results and eventually quit.

Finally I came to test FANN through its binding for python - pyfann. It does support online backpropagation out of the box through the TRAIN_INCREMENTAL flag. Test results seem pretty good in terms of prediction and speed. Although FANN is not written in Python or Java, given its maturity I think it is best option for now.

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