📚 node [[co adaptation|co adaptation]]
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⥅ related node [[co adaptation]]
⥅ node [[co-adaptation]] pulled by Agora

co-adaptation

Go back to the [[AI Glossary]]

When neurons predict patterns in training data by relying almost exclusively on outputs of specific other neurons instead of relying on the network's behavior as a whole. When the patterns that cause co-adaption are not present in validation data, then co-adaptation causes overfitting. Dropout regularization reduces co-adaptation because dropout ensures neurons cannot rely solely on specific other neurons.

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