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Seasonal adjustment (re: both Multimon and additmon point here)
Regular
seasonal patterns appear in most business data. The
weather affects the sales of everything from bikinis to
snowmobiles. Around holiday periods, we see
increases in the number of retail sales,
long‑distance telephone calls, and gasoline
consumption. Business
policy can cause seasonal patterns in sales. Many
companies run annual dealer promotions which cause peaks
in sales. Other companies depress sales temporarily
by shutting down plants for annual vacation periods.
Usually
seasonality is obvious but there are times when it is
not. Two questions should be asked when there is
doubt about seasonality. First, are the peaks and
troughs consistent? That is, do the high and low
points of the pattern occur in about the same periods
(week, month, or quarter) each year? Second, is
there an explanation for the seasonal pattern?
The most common reasons for seasonality are weather
and holidays, although company policy such as annual sales
promotions may be a factor. If the answer to either
of these questions is no, seasonality should not be used
in the forecasts.
Our
approach to forecasting seasonal data is based on the
classical decomposition method developed by economists in
the nineteenth century. Decomposition means
separation of the time series into its component
parts. A complete decomposition separates the time
series into four components: seasonality, trend,
cycle, and randomness. The cycle is a
long‑range pattern related to the growth and decline
of industries or the economy as a whole.
Two worksheets are available for seasonal
adjustment. MULTIMON
uses the ratio-to-moving average method to adjust monthly
data. ADDITMON
uses a similar method called
the difference-to-moving average method to adjust
monthly data. It
may be necessary to test both of these worksheets before
choosing a seasonal pattern. |