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mlforecast currently allows for recursive single-model forecasts, or direct multi-model forecasts where a single model is trained to predict a particular data point in the horizon.
A third option here is a middle ground between recursive and direct. In this option, multiple models can be trained but each is responsible for predicting a "batch" of the forecast horizon recursively. This is useful for long forecasting horizons with high resolution data.
Use case
Consider the case were I wish to predict the next 13 weeks of sales at a daily resolution. My options here are to have either 1 recursive model, which will have degrading performance with increasing horizon due to compounded error, or 91 individual forecasting models where each model trains a particular day ahead. Neither of these are ideal.
I can aggregate to weekly level, but I lose the daily resolution which is important for tracking the impact of things like promotions and daily events.
An alternative model that I have used in the past would be to have 13 models, where each model predicts a sequence of 7 steps (1 week).
The text was updated successfully, but these errors were encountered:
Hey @gofford, thanks for the suggestion. Just to be clear, what you'd like to have is train model1 to predict 1 step ahead and use it to predict the first seven steps ahead, train model2 to predict 8 steps ahead and use it to predict the next seven steps ahead and so on?
Hey @jmoralez, pretty much! Although I'm not 100% sure that it's only a 1-step ahead forecast. When I've built similar (tree-based) forecasters manually I've trained and validated against the fit to the week as a whole, rather than a single point. I think we're talking about the same thing though.
Description
mlforecast
currently allows for recursive single-model forecasts, or direct multi-model forecasts where a single model is trained to predict a particular data point in the horizon.A third option here is a middle ground between recursive and direct. In this option, multiple models can be trained but each is responsible for predicting a "batch" of the forecast horizon recursively. This is useful for long forecasting horizons with high resolution data.
Use case
Consider the case were I wish to predict the next 13 weeks of sales at a daily resolution. My options here are to have either 1 recursive model, which will have degrading performance with increasing horizon due to compounded error, or 91 individual forecasting models where each model trains a particular day ahead. Neither of these are ideal.
I can aggregate to weekly level, but I lose the daily resolution which is important for tracking the impact of things like promotions and daily events.
An alternative model that I have used in the past would be to have 13 models, where each model predicts a sequence of 7 steps (1 week).
The text was updated successfully, but these errors were encountered: