Some Basics About Variation
Dr. Yonatan Reshef
School of Business
University of Alberta
The following is an excerpt from:
VARIATION, MANAGEMENT AND W. EDWARDS
DEMING
Brian L. Joiner Marie A. Gaudard
The article was first published in Quality Progress, December 1990, pp.
29-37.
Variation is not a new concept. Statisticians and scientists have studied it
for decades. What's new is that their awareness of variation and how it affects
everyday activities is infiltrating the workplace. There are seven concepts
about variation that everyone should know:
1. All variation is caused. There are
specific reasons why your weight fluctuates every day, why sales go up, and why
Maria performs better than Robert.
2. There are four main types of causes:
Common
causes are the myriad of ever-present factors (e.g., process inputs
or conditions) that contribute in varying degrees to relatively small,
apparently random shifts in outcomes day after day, week after week, month after
month. The collective effect of all common causes is often referred to as system
variation because it defines the amount of variation inherent in the system.
Special causes are factors that
sporadically induce variation over and above that inherent in the system.
Frequently, special cause variation appears as an extreme point or some
specific, identifiable pattern in data. Special causes are often referred to as
assignable causes because the variation they produce can be tracked down and
assigned to an identifiable source. (In contrast, it is usually difficult, if
not impossible, to link common cause variation to any particular source.)
Tampering is additional variation caused
by unnecessary adjustments made in an attempt to compensate for common cause
variation.
Structural variation is regular,
systematic changes in output. Typical examples include seasonal patterns and
long-term trends.
3. Distinguishing between the four types
of causes is critical because the appropriate managerial actions are quite
different for each. Without this distinction, management will never be able to
tell real improvement from mere adjustment of the process or tampering. In
practice, the most important difference to grasp first is the difference between
special cause variation and common cause variation.
4. The strategy for special causes is
simple: get timely data. Investigate immediately when the data signal a special
cause was present. Find out what was different or special about that point. Seek
to prevent bad causes from recurring. Seek to keep good causes happening.
5. The strategy for improving a common
cause system is more subtle. In a common cause situation, all the data are
relevant, not just the most recent or offending figure. If you have data each
month for the past two years, you will need to look at all 24 of these points.
In-depth knowledge of the process or system being improved is absolutely
essential when only common causes are present. This knowledge can come from
basic statistical tools, such as flowcharts, cause-and-effect diagrams,
stratification analysis (used for measurement data such as process cycle time),
and Pareto analysis (used for count data such as number of accidents). These and
other tools can help identify fundamental changes to the system, but they should
be tried on a small scale first to see whether results improve. Statistically
designed experiments might also be helpful in identifying system innovations.
6. When all variation in a system is due
to common causes, the result is a stable system said to be in statistical
control. The practical value of having a stable system is that the process
output is predictable within a range or band. For example, if a stable order
entry system handles 30 to 60 orders a day, it will rarely slip to fewer than 30
or rise to more than 60.
If some variation is due to special causes, the system is said to be unstable
since you cannot predict when the next special cause will strike and, therefore,
cannot predict the range of variation. If the order entry system just described
were unstable and subject to special cause variation, its capability might
sporadically (and unpredictably) drop sharply below or rise sharply above the 30
to 60 range.
7. How much system variation is present
can be determined by performing statistical calculations on process data. Thus
control limits can be set. Control limits describe the range of variation that
is to be expected in the process due to the aggregate effect of the common
causes. Calculating these limits lets managers predict the future performance of
a process with some confidence.
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