Yes, it does. When modeling with multivariate time series time series of interest is a target while the other time series will be used to make predictions. Data format looks exactly like in this example (not specific to Driverless AI) or see H2O.ai docs for concrete time series example where target time series is
Weekly_Sales and other time series variables are
There is a couple of settings relevant to multivariate time series setup:
- Unavailable at Prediction Time: specify the other time series columns (besides target column) that will only have lag-related features created with it.
- Probability to Create Non-Target Lag Features: specify a probability value for creating non-target lag features (any value between 0 and 1). With multivariate time series this value may go as high as 0.9 or even 1 if no target lag should be used for predictions.
In the spirit of the question Multivariate vs Multiple time series adding more information on modeling time series with Driverless AI. It also supports multiple time series (vs. multivariate time series above) using time groups columns (TGC). In fact, any time series dataset is automatically parsed to identify such groups (alternatively, TGC are specified explicitly by user). Treating TGC as categorical Driverless AI constructs multiple time series - one for each unique combination of values in TGC.
The following settings let user refine how time series model utilizes TGC:
TGC feature operates in combination with multivariate time series, so for each group Driverless AI maintains multivariate times series functionality as described above.