89

I have a dataset consisting of both numeric and categorical data and I want to predict adverse outcomes for patients based on their medical characteristics. I defined a prediction pipeline for my dataset like so:

X = dataset.drop(columns=['target'])
y = dataset['target']

# define categorical and numeric transformers
numeric_transformer = Pipeline(steps=[
    ('knnImputer', KNNImputer(n_neighbors=2, weights="uniform")),
    ('scaler', StandardScaler())])

categorical_transformer = Pipeline(steps=[
    ('imputer', SimpleImputer(strategy='constant', fill_value='missing')),
    ('onehot', OneHotEncoder(handle_unknown='ignore'))])

#  dispatch object columns to the categorical_transformer and remaining columns to numerical_transformer
preprocessor = ColumnTransformer(transformers=[
    ('num', numeric_transformer, selector(dtype_exclude="object")),
    ('cat', categorical_transformer, selector(dtype_include="object"))
])

# Append classifier to preprocessing pipeline.
# Now we have a full prediction pipeline.
clf = Pipeline(steps=[('preprocessor', preprocessor),
                      ('classifier', LogisticRegression())])

X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2)

clf.fit(X_train, y_train)
print("model score: %.3f" % clf.score(X_test, y_test))

However, when running this code, I get the following warning message:

ConvergenceWarning: lbfgs failed to converge (status=1):
STOP: TOTAL NO. of ITERATIONS REACHED LIMIT.
Increase the number of iterations (max_iter) or scale the data as shown in:
    https://scikit-learn.org/stable/modules/preprocessing.html
Please also refer to the documentation for alternative solver options:
    https://scikit-learn.org/stable/modules/linear_model.html#logistic-regression
  extra_warning_msg=_LOGISTIC_SOLVER_CONVERGENCE_MSG)

    model score: 0.988

Can someone explain to me what this warning means? I am new to machine learning so am a little lost as to what I can do to improve the prediction model. As you can see from the numeric_transformer, I scaled the data through standardisation. I am also confused as to how the model score is quite high and whether this is a good or bad thing.

3 Answers 3

141

The warning means what it mainly says: Suggestions to try to make the solver (the algorithm) converges.


lbfgs stand for: "Limited-memory Broyden–Fletcher–Goldfarb–Shanno Algorithm". It is one of the solvers' algorithms provided by Scikit-Learn Library.

The term limited-memory simply means it stores only a few vectors that represent the gradients approximation implicitly.

It has better convergence on relatively small datasets.


But what is algorithm convergence?

In simple words. If the error of solving is ranging within very small range (i.e., it is almost not changing), then that means the algorithm reached the solution (not necessary to be the best solution as it might be stuck at what so-called "local Optima").

On the other hand, if the error is varying noticeably (even if the error is relatively small [like in your case the score was good], but rather the differences between the errors per iteration is greater than some tolerance) then we say the algorithm did not converge.

Now, you need to know that Scikit-Learn API sometimes provides the user the option to specify the maximum number of iterations the algorithm should take while it's searching for the solution in an iterative manner:

LogisticRegression(... solver='lbfgs', max_iter=100 ...)

As you can see, the default solver in LogisticRegression is 'lbfgs' and the maximum number of iterations is 100 by default.

Final words, please, however, note that increasing the maximum number of iterations does not necessarily guarantee convergence, but it certainly helps!


Update:

Based on your comment below, some tips to try (out of many) that might help the algorithm to converge are:

  • Increase the number of iterations: As in this answer;
  • Try a different optimizer: Look here;
  • Scale your data: Look here;
  • Add engineered features: Look here;
  • Data pre-processing: Look here - use case and here;
  • Add more data: Look here.
3
  • 11
    I increased the maximum number of iteration to 400 LogisticRegression(solver='lbfgs', max_iter=400) and this has resolved the warning. Thank you for the explanation.
    – sums22
    Jul 1, 2020 at 9:37
  • 3
    Going back to this question, any tips on other things I can try to help the algorithm converge?
    – sums22
    Aug 20, 2020 at 11:54
  • 3
    I increased the max iterations to 1000 to get it to work. Oct 7, 2020 at 13:36
45

If you are getting the following error for any machine learning algorithm,

ConvergenceWarning:

lbfgs failed to converge (status=1):
STOP: TOTAL NO. of ITERATIONS REACHED LIMIT.

increase the number of iterations (max_iter) or scale the data as shown in 6.3. Preprocessing data

Please also refer to the documentation for alternative solver options: LogisticRegression()

Then in that case you use an algorithm like

from sklearn.linear_model import LogisticRegression
log_model = LogisticRegression(solver='lbfgs', max_iter=1000)

because sometimes it will happen due to iteration.

9
  • 137
    This answer has been mentioned in the recent Stack Overflow blog post and, as a result, quickly gained a few upvotes today. Apr 19, 2021 at 18:11
  • 62
    Yes, and it's still a bad answer. "because sometimes it will happen due to iteration." is a fairly meaningless response...
    – jms
    Apr 20, 2021 at 0:34
  • 32
    Quote from the blog post: "most copied downvoted answer" Apr 21, 2021 at 16:32
  • 23
    The blog post seems to be surprised that this answer is coped more than the accepted answer - there's nothing to copy in the accepted answer!
    – Phil
    Sep 30, 2021 at 1:00
  • 12
    I came here, because it was mentioned in how often do people actually copy and paste (2021-12-30)
    – Betlista
    Dec 30, 2021 at 22:31
4

to fix Convergence warning specify max_iter in the LogisticRegression to a higer value:

from sklearn.linear_model import LogisticRegression
model=LogisticRegression(max_iter=3000)
model.fit(X_train,y_train)

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