Learn the basic steps to perform time series analysis with KNIME and the Time Series Components.
The data used for this example is the well-known air passenger dataset from the book "Time Series Analysis" by Box, Jenkins, and Reinsel.
The data set contains the number of monthly airline passengers in thousands from 1949 to 1960.
The prediction is made by decomposing the time series in a trend and a seasonal component.
URL: Time Series Analysis with KNIME - an introduction https://medium.com/@deganza11/time-series-analysis-with-knime-an-introduction-7ce01a7ce055
To use this workflow in KNIME, download it from the below URL and open it in KNIME:
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