In transfer learning, a model trained on a large dataset is used as a starting point, and the knowledge gained is transferred to a new, _______ task.

  • Similar
  • Completely unrelated
  • Smaller
  • Pretrained
In transfer learning, a model trained on a large dataset is used as a starting point to leverage the knowledge gained in a similar task. By fine-tuning the pretrained model on a related task, you can often achieve better results with less training data and computational resources. This approach is particularly useful when the target task is similar to the source task, as it allows the model to transfer useful feature representations and patterns.
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