I understand that PyTorch's LogSoftmax function is basically just a more numerically stable way to compute `Log(Softmax(x))`

. Softmax lets you convert the output from a Linear layer into a categorical probability distribution.

The pytorch documentation says that CrossEntropyLoss combines `nn.LogSoftmax()`

and `nn.NLLLoss()`

in one single class.

Looking at `NLLLoss`

, I'm still confused...Are there 2 logs being used? I think of negative log as information content of an event. (As in entropy)

After a bit more looking, I think that `NLLLoss`

assumes that you're actually passing in log probabilities instead of just probabilities. Is this correct? It's kind of weird if so...