Train one model to predict each step of the forecasting horizonBy default mlforecast uses the recursive strategy, i.e. a model is trained to predict the next value and if we’re predicting several values we do it one at a time and then use the model’s predictions as the new target, recompute the features and predict the next step. There’s another approach where if we want to predict 10 steps ahead we train 10 different models, where each model is trained to predict the value at each specific step, i.e. one model predicts the next value, another one predicts the value two steps ahead and so on. This can be very time consuming but can also provide better results. If you want to use this approach you can specify
max_horizon
in MLForecast.fit
,
which will train that many models and each model will predict its
corresponding horizon when you call MLForecast.predict
.
individual | recursive | |
---|---|---|
unique_id | ||
H196 | 0.3% | 0.3% |
H256 | 0.4% | 0.3% |
H381 | 20.9% | 9.5% |
H413 | 11.9% | 13.6% |