What does domain adaptation fine-tuning achieve when applied to a pre-trained model?

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When domain adaptation fine-tuning is applied to a pre-trained model, it specifically customizes the model for task or domain-specific information. This process involves taking a model that has already been trained on a broad dataset and then refining it using a smaller, more focused dataset relevant to a specific task or field.

The rationale for this approach is that a pre-trained model generally contains valuable learned features and representations, which can be beneficial when applied to a more specific context. By fine-tuning, the model adjusts its weights and biases based on the new data, allowing it to perform better on the tasks within that domain. This adaptation process leads to improved accuracy and relevance of the model's predictions when operating in the targeted area.

This fine-tuning is particularly useful in situations where collecting a large dataset is challenging or impractical, as the model can leverage its prior training to perform well even with limited domain-specific data.

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