Does sklearn.LinearRegression support online/incremental learning?

I have 100 groups of data, and I am trying to implement them altogether. For each group, there are over 10000 instances and ~ 10 features, so it will lead to memory error with sklearn if I construct a huge matrix (10^6 by 10). It will be nice if I can update the regressor each time with batch samples of new group.

I found this post relevant, but the accepted solution works for online learning with single new data (only one instance) rather than batch samples.

up vote 8 down vote accepted

Take a look at linear_model.SGDRegressor, it learns a a linear model using stochastic gradient.

In general, sklearn has many models that admit "partial_fit", they are all pretty useful on medium to large datasets that don't fit in the RAM.

  • Thank you caoy. It's helpful. But the input for sgdregressor is exactly the same as ordinary linear regressor (I still need the large datasets well prepared)? – ChuNan Mar 26 '14 at 19:19
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    @ChuNan, no you do not need to form the large datasets. Take a look at the example code: scikit-learn.org/dev/auto_examples/applications/… – Yanshuai Cao Mar 26 '14 at 19:23
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    @ChuNan, in particular, look at how chunks of data are constructed on the fly inside the generator function "iter_minibatches". If you are not familiar with the notion of python generator, take a look at: wiki.python.org/moin/Generators – Yanshuai Cao Mar 26 '14 at 19:25
  • That's exactly what I want. Thanks a lot! – ChuNan Mar 26 '14 at 19:28

Not all algorithms can learn incrementally, without seeing all of the instances at once that is. That said, all estimators implementing the partial_fit API are candidates for the mini-batch learning, also known as "online learning".

Here is an article that goes over scaling strategies for incremental learning. For your purposes, have a look at the sklearn.linear_model.SGDRegressor class. It is truly online so the memory and convergence rate are not affected by the batch size.

  • You're welcome. No, you do not need to contruct the entire matrix. It is done in the class via a yield generator. – Drewness Mar 26 '14 at 19:31
  • Is the online learning capability the main difference between SGDRegressor and LinearRegression? – mszep Mar 26 '16 at 19:02

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