You use the Streaming Time Series node to build and score time
series models in one step. A separate time series model is built for each target field, however
model nuggets are not added to the generated models palette and the model information cannot be
browsed.
Methods for modeling time series data require a uniform interval between each
measurement, with any missing values indicated by empty rows. If your data does not already meet
this requirement, you need to transform values as needed.
Other points of interest regarding Time Series nodes:
Fields must be numeric.
Date fields cannot be used as inputs.
Partitions are ignored.
The Streaming Time Series node estimates exponential smoothing, univariate
Autoregressive Integrated Moving Average (ARIMA), and multivariate ARIMA (or transfer function)
models for time series and produces forecasts based on the time series data. Also available is an
Expert Modeler, which attempts to automatically identify and estimate the best-fitting ARIMA or
exponential smoothing model for one or more target fields.
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