Running the code of linear binary pattern for Adrian. This program runs but gives the following warning:

C:\Python27\lib\site-packages\sklearn\svm\base.py:922: ConvergenceWarning: Liblinear failed to converge, increase the number of iterations.
 "the number of iterations.", ConvergenceWarning

I am running python2.7 with opencv3.7, what should I do?

  • in LogisticRegression algorithm deafult iteration is 100. increase it if your dataset samples more than 100. – Hafiz Shehbaz Ali May 12 '19 at 22:04

Normally when an optimization algorithm does not converge, it is usually because the problem is not well-conditioned, perhaps due to a poor scaling of the decision variables. There are a few things you can try.

  1. Normalize your training data so that the problem hopefully becomes more well conditioned, which in turn can speed up convergence. One possibility is to scale your data to 0 mean, unit standard deviation using Scikit-Learn's StandardScaler for an example. Note that you have to apply the StandardScaler fitted on the training data to the test data.
  2. Related to 1), make sure the other arguments such as regularization weight, C, is set appropriately.
  3. Set max_iter to a larger value. The default is 1000.
  • 1
    I am seeing that warning in this notebook: kaggle.com/ninovanhooff/svm-for-fraud-detection Note that it seems to be that all variables used for train and test are normalized I did not set any classifier parameters though, but unsure of what values of C to use. Should I set C based on my investigation of the coefficients? (See the bar plot in that notebook) – Nino van Hooff Nov 15 '18 at 16:32
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    Answer to my previous comment: As suggested by the scikit docs, I set dual to false. This removed the warning and seemed to have no influence on classification performance – Nino van Hooff Nov 16 '18 at 10:55
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    @PJRobot You are welcome. But also consider my other comments about setting the regularization parameter and standardizing the variables. Usually the optimization algorithm should not take too many iterations to converge. If it does, then it is a sign that the optimization problem is ill-conditioned. Setting the regularization parameter and scaling the data appropriately, or solving the dual of the optimization problem as suggested by Nino van Hooff, are better ways to "fix" this problem which you should consider before you try changing max_iter. – lightalchemist Feb 11 '19 at 2:50

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