Questions tagged [oversampling]

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1 answer
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Is my model classification overfitting?

Is this possible to be just a bad draw on the 20% or is it overfitting? I'd appreciate some tips on what's going on.
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1 answer
117 views

How to increase the Accuracy after Oversampling?

The Accuracy before ovesampling : On Training : 98,54% On Testing : 98,21% The Accuracy <...
1 vote
1 answer
21 views

Does synthetic data be over sampled as well?

I'm building a binary text classifier, the ratio between the positives and negatives is 1:100 (100 / 10000). By using back translation as an augmentation, I was able to get 400 more positives. Then I ...
0 votes
2 answers
808 views

Is it good practice to use SMOTE when you have a data set that has imbalanced classes when using BERT model for text classification?

I had a question related to SMOTE. If you have a data set that is imbalanced, is it correct to use SMOTE when you are using BERT? I believe I read somewhere that you do not need to do this since BERT ...
0 votes
1 answer
29 views

Explaining the logic behind the pipe_line method for cross-validation of imbalance datasets

Reading the following article: https://kiwidamien.github.io/how-to-do-cross-validation-when-upsampling-data.html There is an explanation of how to use ...
1 vote
0 answers
216 views

oversampling multivariate time series data

For some classification needs. I have multivariate time series data composed from 4 stelite images in form of (145521 pixels, 4 dates, 2 bands) I made a classification with tempCNN to classify the ...
0 votes
0 answers
191 views

How to use SMOTE to rebalance multiclass dataset when the target is one hot encoded with pd.get_dummies?

I'm using a multiclass dataset (cic-ids-2017), which is very imbalanced. I have already encoded the categorical feature (which is the target) using ...
1 vote
2 answers
152 views

How to properly use oversampling without inflating results?

I am using with a tiny private dataset (over 192 samples) with 4 classes. A preprocessing step is trivial in order to do any classification. Among feature selection and extraction techniques, i ...