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I was wondering if it is possible to use your model with a multivariate input while predicting a univariate variable. If not, do you know what code I should change to make it work? As you are using some of the code from Informer, I was thinking about using the 'MS' features parameter, but this gives the following error in the encoder on line 109:
level = level.view(b, t, self.c_out, 1)
RuntimeError: shape '[32, 192, 1, 1]' is invalid for input of size 36864
Now I could reshape this level variable so it would be consistent with my data, but I don't know if your model is capable of handling that. Please let me know what you think.
Thanks for your time and contribution,
Rico
The text was updated successfully, but these errors were encountered:
Hi, thanks for your interest in our work, one easy workaround to get univariate output variables will be to mask the unwanted dimensions in the output forecast.
Thanks for the response. This is indeed what I tried at first, but I suspected that it would make the training process a lot slower. However, if this is the only way then I will try it anyway with more computing time.
Hi,
I was wondering if it is possible to use your model with a multivariate input while predicting a univariate variable. If not, do you know what code I should change to make it work? As you are using some of the code from Informer, I was thinking about using the 'MS' features parameter, but this gives the following error in the encoder on line 109:
Now I could reshape this level variable so it would be consistent with my data, but I don't know if your model is capable of handling that. Please let me know what you think.
Thanks for your time and contribution,
Rico
The text was updated successfully, but these errors were encountered: