In: Statistics and Probability
“The recognition that forecasting techniques operate on the data generated by historical events leads to the identification of five steps in the forecasting process” (Hanke & Wichern 2009) List the five steps of the forecasting process:
forecasting process usually involves five basic steps.
Step 1: Problem definition.
Often this is the most difficult part of forecasting. Defining the
problem carefully requires an understanding of the way the
forecasts will be used, who requires the forecasts, and how the
forecasting function fits within the organisation requiring the
forecasts. A forecaster needs to spend time talking to everyone who
will be involved in collecting data, maintaining databases, and
using the forecasts for future planning.
Step 2: Gathering information.
There are always at least two kinds of information required: (a)
statistical data, and (b) the accumulated expertise of the people
who collect the data and use the forecasts. Often, it will be
difficult to obtain enough historical data to be able to fit a good
statistical model. Occasionally, old data will be less useful due
to structural changes in the system being forecast; then we may
choose to use only the most recent data. However, remember that
good statistical models will handle evolutionary changes in the
system; don’t throw away good data unnecessarily.
Step 3: Preliminary (exploratory) analysis.
Always start by graphing the data. Are there consistent patterns?
Is there a significant trend? Is seasonality important? Is there
evidence of the presence of business cycles? Are there any outliers
in the data that need to be explained by those with expert
knowledge? How strong are the relationships among the variables
available for analysis? Various tools have been developed to help
with this analysis.
Step 4: Choosing and fitting models.
The best model to use depends on the availability of historical
data, the strength of relationships between the forecast variable
and any explanatory variables, and the way in which the forecasts
are to be used. It is common to compare two or three potential
models. Each model is itself an artificial construct that is based
on a set of assumptions (explicit and implicit) and usually
involves one or more parameters which must be estimated using the
known historical data.
Step 5: Using and evaluating a forecasting model.
Once a model has been selected and its parameters estimated, the
model is used to make forecasts. The performance of the model can
only be properly evaluated after the data for the forecast period
have become available. A number of methods have been developed to
help in assessing the accuracy of forecasts. There are also
organisational issues in using and acting on the forecasts. When
using a forecasting model in practice, numerous practical issues
arise such as how to handle missing values and outliers, or how to
deal with short time series.