1

I am working multi labeled image classification. This is my data frame:

[UPDATED] enter image description here

As you can see images labeled with 26 features. "1" means exist, "0" means not exist.

My problem is in many of label has imbalanced data. For example:

[1] train_df.value_counts('Eyeglasses')

Output:

Eyeglasses
0    54735
1     1265
dtype: int64

[2] train_df.value_counts('Double_Chin')

Output:
Double_Chin
0    55464
1      536
dtype: int64

How can I split it both of for training and validation data as a balanced?

[UPDATE]

I tried to

from imblearn.over_sampling import SMOTE
smote = SMOTE()
from sklearn.model_selection import train_test_split
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.3, 
                                                        random_state=42)

X_train_smote, y_train_smote = smote.fit_sample(X_train, y_train)

ValueError: Imbalanced-learn currently supports binary, multiclass and binarized encoded multiclasss targets. Multilabel and multioutput targets are not supported.

1 Answer 1

0

Your question mixes two concepts: splitting a multi-class, multi-label image dataset into subsets which have proportional representation, and resampling methods to deal with class imbalance. I am going to focus on just the splitting part of the problem, since that's what the title is about.

I would use a stratified-shuffle-split so to make sure that each subset has equal reprentation. Here's a handy visual for stratified sampling from Wikipedia:

Stratified Sampling example. Source: Wikipedia

For this I recommend skmultilearn's IterativeStratification method. It supports multi-label datasets.

    from skmultilearn.model_selection.iterative_stratification import IterativeStratification

    stratifier = IterativeStratification(
        n_splits=2, order=2, sample_distribution_per_fold=[1.0 - train_fraction, train_fraction],
    )
    # this class is a generator that produces k-folds. we just want to iterate it once to make a single static split
    # NOTE: needs to be computed on hard labels.
    train_indexes, everything_else_indexes = next(stratifier.split(X=img_urls, y=labels))

    # s3url array shape (N_samp,)
    x_train, x_else = img_urls[train_indexes], img_urls[everything_else_indexes]
    # labels array shape (N_samp, n_classes)
    Y_train, Y_else = labels[train_indexes, :], labels[everything_else_indexes, :]

I wrote a more complete solution, including unit tests, in a blog post.

One downside with skmultilearn is that it is not very well maintained and has some broken functionality. I documented a few of these sharp corners and gotchas in my blog post. Also note that this stratification procedure is painfully slow when you get to several million images because the stratifier only uses a single CPU.

7
  • I tried to your code, but it's cause to out of ram, even with shape of everything_else_indexes (500,26) and img_urls (500,). I updated my question which is you can see my dataframe. Also your visual explanation is not make sense because i can't split values, for example if x label is imbalanced and y label is balanced, i can't stratified them, because they are effect another labels. If i am wrong, pls correct me. Nov 23, 2020 at 0:32
  • @claymorehack I am not sure what it means to have balanced x labels but imbalanced y labels.
    – crypdick
    Nov 23, 2020 at 17:24
  • I have totaly 26 features. As you can see in df.png where in question, every image has these features, and i have totally 15000 images. In total, most of features are imbalenced, for example The "Big_Nose" feature has {0: 14234, 1: 766} also The "Doubly_Chin" feature has {0: 7800, 1: 7200}. The problem is every feature is related with each other, therefore it's not make sense stratified them. If i try to stratified the positive "Big_Nose" features, maybe i can now face up with the imbalenced "Doubly_Chin" . If i am wrong, pls correct me. Nov 23, 2020 at 18:06
  • So your x are the images themselves, and the y are the rest of the columns (your features). The problem you are describing with related features is a common situation in multi-label datasets, and using IterativeStratification with order=2 will take multiple labels into account while stratifying. There are more details and lecture videos in the skmultilearn docs: scikit.ml/api/…
    – crypdick
    Nov 23, 2020 at 18:33
  • Ok, i understand now, but tricky side is my ram (16GB) is not enough even if the small data. Nov 23, 2020 at 22:15

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.