Principles and risks
of forecasting (pdf)
Famous forecasting
quotes
How to move data around
Get to know your
data
Inflation adjustment (deflation)
Seasonal adjustment
Stationarity and differencing
The logarithm transformation
Data sources and units: Before you even begin to analyze your data, you should ask:
Later, when you write up the results
of your analysis, the variables in your data set should be clearly annotated to
indicate their sources, units of measurement, and any problems or peculiarities
you are aware of.
The bad news
here is that assembling, cleaning, adjusting, and documenting the units of the
data is often the most tedious step of forecasting, and failure to attend to
these mundane details may lead to egregious errors of modeling. Fortunes may be
lost and heads may roll. The good news is that you often learn a good deal in
the process, gaining insight into the nature and logical relationships of the
variables you wish to predict.
You may also
find that the most important management benefit of your forecasting project is
to identify ways in which your organization's data can be better collected,
better organized, better integrated, and better summarized for purposes of
decision-making.
Draw
the #!*$ picture: Before you crunch a single number,
you should graph your data to get a feel for its qualitative properties.
For example, suppose you are studying the history of economic growth in the
U.S. over the period from 1992 to the present. Here's a time series plot of one
very important measure, total retail sales:
Note that
data are in millions of dollars, not adjusted for inflation and not seasonally
adjusted ("NSA"). The chart and data were obtained from http://economagic.com/, a highly recommended
source for economic data.
What
qualitative features are evident on this graph? You might notice some of the
following:
A
forecasting model for this time series must accommodate all these qualitative
features, and ideally it should shed light on their underlying causes. To study
these features of the time series in more depth, and to help determine which
kind of forecasting model is most appropriate, we should next plot some transformations of the
original data.
Go on to next topic: Inflation
adjustment (deflation)