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Building a Customer Value Model
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Building a Customer Value Model
by David M. Raab
DM Review
October, 2005
Last month's column discussed the advantages of customer value models
as tools for making business decisions. The basic point was that
such models calculate the full impact of a decision by tracing
its impact on the customer's subsequent behavior. Thus a company
can avoid decisions that look good in the short run but
ultimately decrease the value of the customer relationship.
In other words, a customer value model is a tool for
estimating customer lifetime value, which is defined as the net
present value of future cash flows associated with a customer.
Some readers may be disappointed by this clarification. After
all, the concept of customer lifetime value has been around for
a long time and received quite a bit of recent attention. If
"customer value model" were really the same thing, there
wouldn't be much new to say.
But although customer value models and customer lifetime
value are related, they are not identical. Important aspects of
customer value models are not covered in typical discussions of
customer lifetime value.
Discussions of customer lifetime value tend to focus on how
and why to use it. The details of how to calculate it are
usually ignored or relegated to an appendix. The few discussions
that do take place often focus on shortcuts to provide a
reasonable estimate with a minimum of work and data. This is
because a key objection to customer lifetime value is the
difficulty of calculating it correctly.
By contrast, calculating lifetime value is a primary purpose
of a customer value model. How to do it is therefore a central
topic of discussion. And although some shortcuts may be
appropriate, it's generally true that the more detailed and
precise a customer value model is, the better.
So what does a customer value model actually look like?
Simply put, it is a simulation of the interactions between a
customer and an enterprise. Like any simulation model--think
traditional business process modeling--the customer value model
uses a simplified representation of the activities it describes.
This distinguishes the customer value model from other methods
of estimating lifetime value, which include
statistically-derived predictive equations or simple
mathematical formulas using a few key variables (typically
acquisition cost, profit per year, attrition rate, and discount
rate).
Customer value models are built from events. Each event has
at least two attributes: a financial value and a relative time.
The financial value is used to calculate cash flow. The time
value is needed to convert cash flow to net present value and to
locate the event in the sequence of the customer's experience.
This sequence is an essential feature of a customer value model,
providing insights that a predictive equation or mathematical
formula cannot.
In a highly simplified customer value model, one event might
combine many separate interactions (offer, response, purchase,
product delivery, collection, payment, service, etc.) into a
single transaction. A more detailed model would treat each of
these interactions as a separate event. Either way, events can
be linked to other events. This linkage might be implicit, by
simply including both events in the model. The financial value
attached to each event would reflect both the profit or cost of
the event and the number of customers expected to participate.
Or the linkage might be explicit, meaning the events are
logically linked, with a time lag and conversion ratio, so the
system can itself calculate when and how many customers who
participate in the first event will also participate in the
second event. For example, the model might link a purchase event
to a renewal event, with a fraction indicating that 80% of
purchasers will renewal one year later.
Event linkage is a critical feature of customer value models.
It is what allows the model to trace the ramifications of an
event through the balance of the customer relationship.
Isolating the impact of an event is typically done by running a
scenarios of the model with and without the event in place, and
then comparing the differences in the results. This resembles
conventional test vs. control studies, except that it relies on
simulated rather than actual results.
Because the customer value model is a simulation, users must
bear in mind the distinction between precision and accuracy.
Results of a customer value model are quite precise, meaning
that small changes produce consistent, measurable differences.
They may or may not also be accurate, in the sense of matching
the real-world results. In fact, because the model is predicting
future events which are subject to many external influences,
complete accuracy is impossible. But the model is still useful
so long as users accept its outputs as meaningful. In
particular, they must accept that the differences between
scenario results accurately reflect the impact of the changes in
the scenarios themselves.
More detailed models are more work to build, but they also
allow more precise simulations. Thus, assuming actual data or
credible estimates are available, a detailed model can calculate
the effects of slight changes in customer treatments. This makes
the customer value model a tool for tactical decision-making, in
addition to broader strategic analysis.
The customer value model has other tactical uses as well. The
value attribute can be broken into revenue and cost components
for detailed financial analysis. Current-period quantities can
be assigned to each event at the start of the model, thereby
producing forecasts of future quantities by period. Additional
attributes can forecast quantities such as inventory
requirements, call center volume, and renewal contacts.
Operational managers can evaluate the impacts that changes
within their departments have on the rest of the company. These
impacts can be financial (reducing customer service might save
money but result in lower future sales) and operational (more
accurate order entry could reduce the number of returns
processed at the warehouse). This is important because decisions
that make sense for one department often have negative impacts
elsewhere. Without a customer value model, it is difficult for
department managers to see the full picture.
Customer value models can also serve a still larger role as
marketing planning and management tools. Models inherently
create an inventory of the interactions between a company and
its customers, so they can provide a central platform to review,
document and modify business rules associated with those
interactions. The time element of the model means it also
provides a framework to organize the list of planned promotions
with their expected results. If the model is used for
forecasting, some of the promotion plans must be captured
anyway. Similarly, actual results, which are posted to a model
to check its accuracy, can also be used to generate marketing
performance reports.
These more advanced functions are not necessarily present in
today's customer value modeling software. In fact, much customer
value modeling is done on ad hoc spreadsheets. Sophisticated
customer value modeling systems have long been available for
specialized applications including magazine circulation and
catalog modeling. Some modeling features are available in
marketing management systems and optimization software.
Otherwise, customer value models must be built using general
purpose business process modeling and simulation systems.
This can be expected to change as the increasing interest in
customer lifetime value leads companies to demand more precise
calculations and increases their willingness to pay for them.
Marketing management software vendors will expand their modeling
capabilities and process modeling vendors will add specialized
customer value modeling features. Dedicated customer value
modeling systems will likely appear as well. This is good news
for companies in search of solutions, although it will be some
time before standard solutions appear. Interesting times are
ahead.
David M. Raab is president of ClientXClient, a consulting
and software firm specializing in customer value optimization.
He can be reached at
draab@clientxclient.com.
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