Comments (2)
Dear @pprp,
Thank you for your question. In response, I would like to clarify that when computing the NASWOT score, we do load pre-trained weights. However, in my experiments, I have found that there is very little difference in the NASWOT scores when using either pre-trained weights or randomly initialized weights (with a difference of less than 1). This suggests that the NASWOT score is more closely correlated with the network architecture itself rather than the weights.
This is an interesting and relatively unexplored phenomenon, and there may be mathematical properties of the NASWOT score that relate to coding theory. The score essentially measures the information capacity of a network, which can be expressed as the number of feature binary partitions (proportional to the power of entropy).
While I have not yet delved deeper into this phenomenon, I hope that my answer has addressed your question. If you are interested, you can replicate my experiments using my code, and I believe that you will observe similar results.
Best regards,
Xingyi Yang
from dery.
@Adamdad Thanks for you clarification, I will try it later.
from dery.
Related Issues (8)
- Unable to run the code by following the instruction HOT 1
- Unable to run the zeroshot_reassembly HOT 3
- Possible to re-assemble with models pretrained on different tasks? or same model on different datasets? HOT 2
- Unable to run the code by following the instruction HOT 5
- Run get_rep.py HOT 7
- ModuleNotFoundError: No module named 'matplotlib.blocking_input'
- AttributeError: 'NoneType' object has no attribute 'block_index'
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