20

The classifier script I wrote is working fine and recently added weight balancing to the fitting. Since I added the weight estimate function using 'sklearn' library I get the following error :

compute_class_weight() takes 1 positional argument but 3 were given

This error does not make sense per documentation. The script should have three inputs but not sure why it says expecting only one variable. Full error and code information is shown below. Apparently, this is failing only in VS code. I tested in the Jupyter notebook and working fine. So it seems an issue with VS code compiler. Any one notice? ( I am using Python 3.8 with other latest other libraries)

from sklearn.utils import compute_class_weight

train_classes = train_generator.classes

class_weights = compute_class_weight(
                                        "balanced",
                                        np.unique(train_classes),
                                        train_classes                                                    
                                    )
class_weights = dict(zip(np.unique(train_classes), class_weights)),
class_weights

In Jupyter Notebook,

enter image description here

enter image description here

4 Answers 4

63

After spending a lot of time, this is how I fixed it. I still don't know why but when the code is modified as follows, it works fine. I got the idea after seeing this solution for a similar but slightly different issue.

class_weights = compute_class_weight(
                                        class_weight = "balanced",
                                        classes = np.unique(train_classes),
                                        y = train_classes                                                    
                                    )
class_weights = dict(zip(np.unique(train_classes), class_weights))
class_weights
1
  • The reason is only class weight is a positional argument, Other two should have argument names ``` class_weights = compute_class_weight( "balanced", # positional argument classes = np.unique(train_classes), y = train_classes ) ```
    – venkhat
    Nov 8, 2022 at 23:38
3

I solved this problem with recode configuraiton.

from sklearn.utils.class_weight import compute_class_weight
class_weights = compute_class_weight(class_weight = "balanced", classes= np.unique(train_labels), y= train_labels)
0

You need to use older version of sklearn than you have. for me it works fine with scikit-learn version 0.24.2.

1
  • That is more of a workaround, and not an answer Jan 24, 2022 at 5:14
0

Just follow this: Why doesn't class_weight.compute_weight() work?

You just need to use class_weight, classes, y terms when you assign the related values.

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