The Corporate Household
A. Blanton Godfrey
agodfrey@qualitydigest.com
Last fall I participated in
the seventh annual Conference on Data Quality at MIT. It
had been some time since I'd thought seriously about the
many ramifications of data and information quality. As I
struggled to put my thoughts on paper, especially tying
the past eight years of working in Six Sigma quality to
data quality issues, I experienced several blinding flashes
of understanding. The first, and perhaps most obvious, was
that the structure of problem solving used widely in Six
Sigma (i.e., define, measure, analyze, improve, control)
fits data quality issues perfectly.
One of the subsequent flashes concerned the old axiom,
"Defining the problem is half the solution." This
was clearly demonstrated at the conference during both the
opening talk and the lunchtime keynote address. The opening
speaker noted that many of the previous years' papers and
research had focused on defining the problems of data and
information quality. He challenged this year's speakers,
and all of us engaged in research in this area, to start
presenting--or at least exploring--solutions to the problems
already defined. Although many of the presentations continued
in the simple problem-definition vein, others described
organizations' actual efforts to define data and information
quality issues before--or at least while--they implemented
enterprise resource planning systems.
The most stimulating talk for me was the keynote address,
"Defining Corporate Households," by Stuart Madnick,
a professor at MIT. Using as his analogy the U.S. Census
Bureau's difficulty in defining a household, he expanded
on this problem in terms of corporations and other organizations.
He used IBM and MIT as examples and challenged us to answer
the questions, "How much did IBM sell to MIT last year,"
or conversely, "How much did MIT buy from IBM?"
First, we must define MIT. Does it include Lincoln Labs?
Do we mean simply the university or all the students as
well? Does this include part-time students, adjunct faculty,
visiting faculty and others? He pointed out the numerous
definitions of MIT as they appeared in published reports.
Then he demonstrated how many different answers we might
get if we searched IBM's sales databases, or any other supplier
to MIT, depending on the way we searched. He cited more
than 20 ways MIT might appear in the sales database (e.g.,
MIT, M.I.T., Massachusetts Institute of Technology, Mass.
Inst. Tech.). Of course, sales records might also list purchases
from individuals, labs and centers that were sent to offices
or home addresses without any mention of MIT. So, related
questions are: Which databases do we actually search? Do
we search only IBM's databases for MIT sales? Do we also
include third parties such as stores and distributors that
sold IBM equipment to MIT? If an MIT faculty member buys
an IBM laptop from a computer store, does that count as
an IBM sale to MIT?
We must also look at the IBM side of this interesting
problem. What is IBM? Do we count all IBMs? What about recent
acquisitions? Do we count only the corporation's sales after
these companies were acquired? What about companies only
partially owned by IBM, or those that are joint ventures?
Do we weigh their sales by fraction ownership? Is our original
question simply about products sold to MIT by IBM, or are
we also counting service sales?
During his presentation, Madnick asked us to think about
our own problems in defining corporate households and asked
for examples. I realized this was an issue I'd been addressing
for years without labeling it. Since I've been appointed
dean of the College of Textiles at North Carolina State
University, I've struggled with the question, "What
are textiles?" Weekly, sometimes daily, different articles
appear in newspapers, business magazines and trade journals
discussing international competition, job losses, growth
or decline of manufacturing in the United States, sales
growth or decline in different market segments, trade surpluses
or deficits, and other issues. Why are the numbers so different,
depending on the source? The naive answer is that the different
trade organizations have their own reasons to present numbers
in the way that makes their points.
These difficulties in defining the corporate household
help explain why we so often disagree about numbers. What
do we really mean when we talk of sales? How much of a company's
revenues come from a certain product? How much of the profits
come from other product lines? How much is exported and
imported?
Years ago I served on a National Academy of Science panel
on international trade statistics. I chaired the committee's
quality subgroup. We were trying to define the quality of
U.S. trade statistics. The real questions were, "How
big is our trade deficit?" and "Do we even have
a deficit?" The truth was, we didn't know. The data
were so bad, the definitions so flawed, the processes so
poorly defined and managed that we really didn't know how
big the deficit was for goods. We decided not to even try
to measure service trade or capital flows. And as far as
this column is concerned, that's a topic for another day.
A. Blanton Godfrey, Ph.D., is dean and Joseph D. Moore
professor at the College of Textiles, North Carolina State
University. He is the co-author of the recently published
Modern Methods for Quality Control and Improvement, Second
Edition (John Wiley & Sons, 2001). Letters to the editor
regarding this column can be sent to letters@qualitydigest.com.
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