overfit model
avoid overfitting
overfitting data
overfitted features
prevent overfitting
checking for overfitting
easily overfit
overfitting risk
model overfits
overfit prevention
the model started to overfit the training data, losing its ability to generalize.
we need to prevent the neural network from overfitting by using regularization techniques.
overfitting is a common problem when training complex machine learning models.
to avoid overfitting, we split the data into training, validation, and testing sets.
the decision tree overfit the data, creating a very complex and specific structure.
cross-validation helps identify if a model is likely to overfit the data.
early stopping is a technique used to prevent overfitting during training.
regularization can help reduce the risk of overfitting in linear regression models.
the model's performance on the test set was significantly worse, indicating overfitting.
we used dropout layers to mitigate the risk of overfitting in our deep learning model.
careful feature selection can help prevent the model from overfitting.
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