Comments (3)
Hello @sataksipagat13 !
At the moment we dont offer time varying coefficients out of the box, but it is something we have in mind for the mid-term. So you would have to make quite a few changes to the code for it in order to work. From the modelling point of view is not much, but most plots/insights functions would need to deal with an extra dimension on those parameters.
Essentially it would require the main points:
- Adding an extra dimension to the media parameters when sampling them.
- Then you would have to adapt the plots and insights functions to deal with that extra dimension.
Hope it helps!
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Thank you so much. I will try to implement it and let you know !
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Hi I am following up on this closed ticket. I am wondering if:
- @sataksipagat13 has experimented with updating the package to leverage time varying coefficients. If so what was the result
- @pabloduque0 has any further details about including this officially into the package. Something like a rough timeline would be helpful
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