| Customer
Profitability:
Irrelevant for Decisions?
By Peter Carroll and Madhu Tadikonda
Historical customer profitability
reports offer scant help in making crucial sales, cross-sell
and service decisions. Better tools focus on the expected
values of key decisions for each individual customer.
One
of the most influential retail banking metrics to emerge
in recent years is customer profitability. Melding
new financial methodologies and technology, bankers are
calculating the net contribution of each customer relationship
and they are continually amazed by the radical
profitability skews surfacing in the data. In a typical
retail portfolio, 20% of accounts contribute profits
equaling 200% of the overall return, while up to half
of the accounts generate losses.
Swept up by the
power of these findings, bankers are revolutionizing the
way they make decisions. At the structural
level, they are weaving customer profitability considerations
into long-term decisions about market positioning and
major customer groups. To lift unprofitable relationships,
for example, they are ushering people into service packages
containing price incentives for using automated teller
machines and other low-cost channels. At the operational
or day-to-day level, banks are basing
marketing solicitations on customer value data, selectively
offering fee waivers and rate breaks to retain high-value
clients, and varying service responses based on customer
profitability profiles.
Clearly, the most
promising growth and profitability payoffs from sophisticated
customer information spring from improved operational
decision-making about sales, cross-selling and service.
Yet, this is also where the use of historical customer
profitability numbers is potentially dangerous. Many retail
banks take it for granted that such data provide strong
guidance for daily decisions. But historical profitability
profiles may not signal how customers will behave in the
future even with currently held products, never
mind for new ones being offered. In fact, customer profitability
statistics are of limited usefulness in decision support.
A far better approach
is to support operational decisions with a suite of determinative
tools crafted to handle individual customers and situations.
This capitalizes on customer information but avoids the
trap of regarding last year's profit as the most important
predictor of next year's behaviors in a different context.
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Here, the emphasis
is on the expected long-term values of an array of key
decisions for each individual customer. Account-level
data is used to forecast customer behaviors, such as purchase
propensity, service needs and repayment patterns. These
projections are then coupled with bank-specific cost data
to calculate the net present value of the lifetime cash-flow
consequences of a particular decision, such as attempting
to cross-sell a given product.
Such refinements
are essential if companies are to make productive use
of expanded customer data. The key question for the decision-maker
is: "If I take this action, what will be the outcomes,
expressed in terms of growth or erosion of shareholder
value?" The historical profitability of a customer,
perhaps surprisingly, provides very little in the way
of an answer and that can spell trouble for institutions
that rely unduly on this type of information.
Missing
the Mark
Consider a decision
on whether to cross-sell a home equity line of credit
to two checking account customers, Mrs. Smith and Mr.
Jones. On a rolling 12-month basis, each may each have
generated a $55 profit for the bank. A simple profitability-based
decision framework would suggest that these customers
be treated identically on potential home equity loan solicitations,
though perhaps differently from other customers in distinctly
higher or lower profit deciles.
However, this framework
ignores the numerous ways to generate $55 in profit on
most standard checking accounts. The $55 profit from Smith
may stem from the interest income earned on her high average
account balance, partially offset by the costs associated
with the large number of checks she writes per month and
her frequent balance inquiries. The $55 profit from Jones
may be driven by his perennially low account balance,
high incidence of returned checks and corresponding payment
of overdraft fees.
In this case, the
identical $55 profit figure obscures important behavioral
differences that may have a substantial impact on the
relative attractiveness of these customers for a loan
solicitation. The details of how each $55 return was generated
may suggest vast differences between Smith and Jones
in their relative propensities to respond an offer, draw
down a credit line, or default on a loan. All of these
factors can dramatically affect the merit of making the
loan solicitation, but they are lost in the summary characterizations
of both Smith and Jones as "$55 profit customers."
This narrative suggests the serious
limitations of a profitability-based decision-making framework.
In fact, three drawbacks undercut the utility of customer
profitability data for operational decision-making:
Descriptive,
not predictive. Profitability
figures broadly indicate which customers have been economically
valuable over a given period. As suggested by the Smith
and Jones narrative, however, such data does not necessarily
provide good guidance for cross-sell and service decisions
for a specific customer. It may not suggest how that customer
will behave in the future, especially in the context of
the sales/service action under consideration.
Myopic.
Virtually all retail financial services products have
a specific life cycle. With certain types of loans, for
example, customers may have a negative profit contribution
in the early years and become more profitable later on.
As a result, profitability recorded in a given performance
period may incompletely describe the value of a particular
relationship.
Retrospective.
Historical profit data is a lagging metric. It does not
adequately reflect anticipated changes in customer holdings
or changes in usage patterns. Furthermore, a retrospective
metric may incorporate specific market conditions (e.g.
interest rate environment, competitive intensity) which
no longer exist.
Putting
Decisions First
Senior managers
should review how they themselves use measurement tools
at the structural level when considering how to construct
the ideal operational decision support that answers the
question "If I do this, what happens, and does it
add value?" When making structural decisions, managers
first carefully articulate the main options at hand and
then build customized analyses to support their deliberations.
Typically, specific business plans and budgets are generated
for each strategic option. The models define what is to
be done and handicap the outcomes. They incorporate all
of the relevant investments, expenses, revenues, risks
and hurdle rates associated with a specific decision.
Once these elements have been quantified, the business
plan cash flows are discounted to yield the action's absolute
and proportionate returns.
Tellingly, strategists
marshal a broad range of information to generate the economic
projections underpinning the business plan.
For example, a
bank may decide to redesign checking account packages
to address a sharp profitability skew in the customer
portfolio. First, checking account customer behavior records
(transaction volume, balance levels, automated teller
machine usage, etc.) are used to define a set of behavioral
segments. Then, customer profitability information is
used to compute the average profit per accountholder in
each segment under current terms and conditions. Based
on this aggregate information, managers make choices about
target segments and the design of product/service/price
combinations to be positioned against those segments.
Such choices are guided by the needs and economics of
each customer group and often aug- mented by external
market research on these customers.
Strategic analyses
also may require customized inputs from several bank departments.
Operations, for example, may supply actual operating costs
and potential adjustments for different product configurations;
marketing may supply insight on product design.
Customer
Context
The decision-making
principles exercised at the structural level can be applied
at the operational level. The key is to assemble an array
of information relevant to each important tactical decision
and tools translating that data into concrete decision
support. In this approach, micro-business plans are created
for specific operational decisions for each customer.
In other words, the capital budgeting logic of a major
structural decision is applied to a customer-level action
(see chart below).
For every decision
or action, the likely ensuing pattern of customer behavior
and attendant cash flow and risk outcomes can be anticipated.
For example, an effective decision-support tool for cross-sell
solicitation includes estimates of all cash flows associated
with the decision. Expenses would include up-front booking
outlays, ongoing account maintenance and servicing, and
potential credit losses. Revenues would include ongoing
fee and spread income.
The decision-support
tool will explicitly estimate the differences in these
costs and revenues by predicting the key behaviors of
Smith and Jones not just in general but in
the context of specific situations.
As such, the micro-business plan integrates all of a customer's
expected cash flows. These anticipated cash flows may
then be discounted and summed to quantify the prospective
value generated by a specific operational decision.
Continuing with
the cross-sell solicitation example, the decision-support
tool would estimate the cash flow consequences of soliciting
Mrs. Smith and Mr. Jones for a home equity line of credit.
Soliciting prospect Smith, based on specific response,
utilization, attrition and default behaviors, may net
$75. By contrast, Jones may pose a $20 net loss. And they
had the same profitability last year! In each case, the
integrated estimate of lifetime value can serve as the
primary basis for selecting among possible actions.
This approach is
vital for a typical retail bank, and it is markedly different
from the subjective classification-and-treatment frameworks
used by many managers (see sidebar).
Front-line personnel
face many core decisions. Should they solicit a prospect
for a credit card? Cross-sell a home equity line of credit
to a demand deposit account customer? How should they
handle a customer's complaint about a late fee? And what
product should be pitched to a customer the next time
he enters the branch? No single scheme can accurately
characterize customers in all these contexts and
customer profitability, as we have seen, is singularly
unable to do so.
Clearly, a decision
tool is only as powerful as its estimates of customer
cash flows. These cash flows are based on two discrete
sets of information: 1) customer-level behavioral predictions,
and 2) bank-specific financial inputs.
Individual behavioral
predictions include factors such as response, utilization,
attrition, default, transaction volume and channel usage
patterns. Each behavioral prediction functions in roughly
the same manner as a credit score that is, account-level
attributes are used to anticipate the outcomes of decisions
based on past empirical data. For sales decisions, prospect
attributes gleaned from credit bureaus and other external
databases are used to predict behaviors. Such attributes
may include external credit scores, total number of credit
products held, and home and car ownership. For a cross-sell
or service delivery decision, internal data about account
balances, transactions and payment patterns may also be
used.
These behavioral
observations and predictions are then coupled with financial
parameters such as funding costs and detailed servicing
and operations costs to generate expected net cash flows.
An effective decision
tool models the economic outcomes of a particular action.
"If I offer this credit card, what is my best prediction
of the resulting cash flows given my current knowledge
of this customer and is the value of these cash
flows high enough, both absolutely and in relation to
alternatives, to justify going ahead?" This is akin
to applying a capital budgeting method to expense-related
decisions in the tactical/operational domain.
Salvaging
Profitability Information
Fortunately, adopting
a decision framework based on value models does not mean
expensive investments in customer profitability reporting
systems must be scuttled. For one thing, systematically
tracking customer profitability is a useful way to monitor
overall results. From a decision support perspective,
however, banks will need to reorient and extend systems
that merely produce customer profitability reports.
Discrete decision
tools use many of the data feeds and analytical processes
that underpin profitability reporting. For example, value
models make extensive use of the same time-series data
archives which support customer-level profit reporting
and include detailed account behavior and transaction
pattern information although value models benefit
from more extensive time-series information. Furthermore,
value models rely on the same methodologies for activity-based
costing, transfer pricing and risk-adjustment used in
customer profitability computation.
What about the
customer profitability metric itself? For less important
operational decisions, that is, for choices that occur
less frequently and/or have a lesser impact on customer
value, customer profitability can serve as one of a small
number of simple parameters used for decision support.
Consider a branch
officer's decision on how to handle a bounced check. The
decision on whether or not to waive a bounced-check fee
for an individual customer could be supported by a full-fledged
model that predicts the likely impact of the decision
on customer behavior and value. However, the stakes and
frequency of this particular decision may not be high
enough to warrant the creation of such a model. In such
instances, a simple rule built around customer profitability
may suffice. For example, waive the fee if the customer's
demand deposit account balance exceeds $2,500 and his
12-month profit exceeds $75.
The development
of customer profitability data has by no means been a
fool's errand. The only danger lies in simplistic reliance
on such data for decision support. A far better approach
is to: 1) make structural decisions by performing focused
ad hoc analyses, which may include data on customer behavior
as well as customer profitability information, and 2)
support operational decisions with a suite of determinative
tools crafted to handle individual customers and situations.
By shifting to this two-pronged framework, and by building
appropriate applications, the work that went into the
customer profitability system will be put to good use.
Mr. Carroll is
a managing director and Mr. Tadikonda a senior manager
at Oliver, Wyman & Co., New York.
Copyright © 2003 by Banking
Strategies, published by BAI.
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