Comments (2)
I have the same confusion
from pytorch-ewc.
You may refer to this NIPS workshop paper: Three scenarios for continual learning (https://arxiv.org/abs/1904.07734)
My interpretation is that this paper was written long before strict definitions of continual learning scenarios are shared among researchers, which is why there is no specific discussion on the EWC paper as well.
In perspective of the aforementioned paper, which is cited by many cl papers when defining certain cl scenarios, this repo sets CL2 scenario, where the network is not obligated to infer the task number but still needs to find an appropriate class (and every task happens to have 10 classes in our example). Your interpretation of scenario is more close to CL3, where the network is obligated to make inference on both task and class (e.g inferencing label 11 is equivalent to inferencing label 1 AND the fact that the label belongs to the second task).
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