Intro to Time Series
An additive model is a statistical representation where the overall time series is expressed as the sum of its individual components, including trend, seasonal, and irregular factors. This model assumes that these components combine linearly, allowing for easier interpretation and forecasting of data patterns over time. Understanding this concept is essential for effectively applying methods such as Holt-Winters' seasonal method and analyzing cyclical and irregular components.
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