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[ENHANCEMENT] Make fitting with exogenous variables more relaible #10
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I can work on that. For my undergraduate dissertation, I will use M5 data for Walmart sales up to department level (item is too much and involves intermittent demand that is another problem) and I will compare usage of classical models and ML ones with and without exogenous variables. |
Any update on this? I was looking for a way to use external regressors in hierarchical Prophet models |
@rohan-gt I'll try getting to this in the next week or 2 |
Hey @carlomazzaferro |
Help is definitely wanted. If you want to take a stab, please go ahead. I'm a bit backlogged but very much willing to coordinate with you As you can tell, my initial timeline got sidetracked. Let me know if you plan on working on this to avoid double work. |
I can provide you with a test case based on Kaggle's store item demand challenge. You can grab the data here. In this example, we only have 4 nodes (2 stores and 2 items) for which I end up with either negative values or off the scale ones. |
Any updates? |
Is your proposed enhancement related to a problem? Please describe.
Fitting with exogenous variables has no testing of any kind, and is likely broken for some of the models
Describe the solution you'd like
Test cases for fitting with exogenous variables for each of the models
Describe alternatives you've considered
N/A.
Additional context
N/A
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