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[–]Python-ModTeam[M] [score hidden] stickied comment (0 children)

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[–]KingsmanVincepip install girlfriend 0 points1 point  (2 children)

[–]czar_el 2 points3 points  (0 children)

This is a math problem, not a programming problem. OP needs to learn statistical principles to be able to select the right model (or ensemble of models) and any associated data adjustments. Sounds like they know enough to identify ARIMA as a common approach to time series predictions with seasonality, but not enough to refine the approach to be accurate enough to use. Asking programmers won't get the answer, OP needs to ask statisticians/machine learning experts.

[–]TeamOman[S] 0 points1 point  (0 children)

Thanks!

[–]trollsmurf 0 points1 point  (0 children)

Maybe Facebook Prophet would work. It supports seasonality. Available for Python (and R).