This is a brief summary of paper for me to note it, How transferable are features in deep neural networks? (Yosinski et al., NIPS 2014)

They show the feature transferability with empirical experiment.

They said first-layer features, they called general, is independent of teh exact cost function and natural dataset.

However, the last-layer features, they called specific, is greatly dependent on the chosen dataset and task.

Let’s see the figure they demonstrated :

Yosinski et al., NIPS 2014

Reference