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How would you include exogenous variables (covariates)? #22
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Hi @srggrs, currently this is not possible out of the box: Chronos models only makes predictions based on historical data of the target series. This is definitely something to add in future work. I think the major difficulty in dealing with exogenous variables in a pre-trained manner is finding good data in large amounts. Definitely something that requires deeper research. |
yeah makes sense! Thanks! |
What are the possible ways to add covariates to the model? Now it seems that the input of Chronos, like the language model, is a single word, while covariates and target variables are generally not on the same scale and are not suitable for inclusion in the same vocabulary. |
Me too. Have anyone tried to add them into input. For example, If I have X[i:i + H] historical data, I want to predict X[i + H +1: i + H + N], and I concatenate Y[i:i + H] exogenous variable data(i can use different scaling for them). Would it work? Have anyone tried something like that? |
@grishazohrab this will not work, see my answer: the models were trained for univariate forecasting tasks without any covariate information as input, but only contextual data from the target time series. |
I was wondering if it is possible to add exogenous variables as extra features to use in the model. Cheers
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