| Blind
Faith
By John R. Engen
Credit scoring has revolutionized
lending, but critics worry institutions are pushing this
technology beyond its limits.
Credit scoring has transformed lending
in ways that were unimaginable 40 years ago. Back then,
most loans were originated on the basis of the "three
Cs" character, collateral and capacity all
with a large dose of subjective human underwriting.
Today, statistical models often have
the final say-so. That goes for most credit card, auto,
home mortgage, home equity and small business loans. Lenders
simply plug in the variables and let the computer do the
work.
The benefits of this revolution are
undeniable. Credit scoring helps lenders make decisions
more quickly and cheaply, compared with old-style judgmental
underwriting, and also more accurately and consistently.
It gives a profound boost to the loan-backed securities
market, moreover, equipping investors with objective measurements
for analyzing loan pools.
But is this technology getting out of
hand? That's the crux of the debate that now swirls around
credit scoring. There's no denying the massive shift away
from old-fashioned due diligence and expert personal judgment
to what is, in essence, a system based on playing the
odds. As with any quantitative model, credit scoring is
only useful if its limitations are properly understood.
Some experts fear that bankers have
become overly reliant on this "black box" approach to
loan decisions and are pushing the system beyond its natural
capabilities. There's a tendency to move "up market" to
bigger loans, for example. But in areas such as large
corporate credits, neither the seasoning of the data upon
which scores are based nor the well of experience may
justify such reliance. Another worry is that today's scoring
models, grounded in a decade of strong economic growth,
may be ill-prepared to predict borrower performance in
recessionary conditions.
The advent of the Internet intensifies
the gravity of this issue. The speed mandates of the Web,
combined with the desire of lenders everywhere to grow
portfolios and control costs, is accelerating banking's
usage of scoring. "That's where the true danger lies,"
says David Zhai, a vice president and senior analyst in
the structured finance group at Moody's Investors Service,
New York. "There's an increasing tendency for lenders
to sacrifice underwriting quality for speed, volume and
cost savings."
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While the effects on loan quality remain
murky, the evidence of acceleration is crystal clear.
In May, for example, Fair, Isaac and Co. Inc. began offering
Internet delivery of credit scores based on models and
data stored on the company's own server. The new setup
allows the San Rafael, Calif.-based company provider
of an estimated 70% of all scores to update its
technology more quickly, and it eases pressures on banks
to update software and expand individual server capacity.
Meanwhile, the three major credit bureaus
Equifax Inc., Experian Information Solutions, Inc.
and Trans Union LLC are all touting better, faster
scoring models of their own. So too are many smaller vendors,
such as Baker Hill Corp., Carmel, Indiana, which markets
a scorecard for small-business loans aimed at community
banks.
Amid this rush to automation, the challenge
for bank officers is to strike a proper balance
to capture the immense benefits of scoring without overly
exposing their institutions to the potential downside.
Properly used, scoring can facilitate loan growth and
minimize delinquencies. But a little knowledge can be
a dangerous thing. The vast majority of scorecards used
by bankers are generic, and built on information known
only to the vendor.
Top executives are well advised to gain
at least a basic grasp of how their institutions use scores.
And they should avoid blind reliance on vendor tools,
even if it means bringing in a third party to review that
usage. "Senior bankers tend to say, "We buy these
models from reputable vendors, so there's no problem because
they pass the market test,'" says Jeffrey Brown, director
of risk analysis for the Office of the Comptroller of
the Currency. "But scoring models are power tools. They
can get you into trouble quickly. Someone you trust should
be watching how they are used."
To be truly effective, experts say,
scoring models must work in concert with a full menu of
internal controls as part of a cohesive business strategy.
The models must be constantly validated and documented,
and managed by people who understand their strengths and
limitations.
The
Scoring Lift
Credit scoring dates back to 1956, when
William Fair and Earl Isaac founded their namesake firm
to apply computer-aided statistical methodology to consumer
credit. Initially met with skepticism, scoring soon changed
the way lenders assessed risk, and it fueled the rise
of credit cards and other forms of unsecured lending.
Lenders used an estimated 10 billion scores last year,
about half in the hyper-competitive credit card area.
Scores are now so fundamental to the
consumer lending process that one is pulled as a matter
of course with each application. Fair, Isaac estimates
about one billion scores were applied directly to originations
last year. The information primarily is used to assess
the credit worthiness of potential borrowers. Many banks
also consider it crucial in determining a rate offer that
matches the risk so-called risk-based pricing.
"I can't imagine what the industry
would do without scoring," says Dan Ray, Columbus, Ohio-based
chief credit officer for consumer lending at Bank One
Corp. His secured lending unit originates about $24 billion
in loans annually, pulling three million scores in the
process. Having to do without that information, he says,
"would be a dramatic shock."
In recent years, scoring has also become
integral to small-business lending. The theory is that
the small-business owner's personal score is a good predictor
of how his or her firm will repay its loan. The small
business services unit of Cleveland-based KeyCorp has
been using Fair, Isaac scorecards to originate small-business
loans for the last two years. The unit "auto-decisions"
about 4,000 loans per month, or about 65% of its under-$100,000
credits, with no human intervention.
Many of those loans are approved in
fewer than 10 minutes an enticing carrot that the
bank markets heavily at only $19 a crack. That
leaves KeyCorp's underwriters free to devote their costlier
human scrutiny to more complex credits. Perhaps best of
all, the models appear to be working to perfection in
helping to predict delinquency rates on a growing portfolio.
Vice chairman Michael Butler, who runs KeyCorp's small
business unit, says the company soon will lift the ceiling
on automated loans to $150,000. "Scoring has given our
business a tremendous lift," he says.
When a lender gets a credit report from
one or more of the big three reporting agencies, it typically
uses the information to generate a Fair, Isaac score.
The raw data from those bureau reports including
payment history, credit outstanding and the number of
recent credit inquiries is run through a Fair,
Isaac algorithm to generate a score ranging between 300
and 800. The higher that score, the more credit-worthy
a potential borrower is thought to be. About 85% of scores
fall between 600 and 800.
Numerous other vendor-designed scoring
algorithms are in use, and most large banks make liberal
use of proprietary scorecards. It is now considered industry
gospel that the probability of repayment can be reliably
predicted by comparing a loan applicant's credit profile
with those of millions of other people. Indeed, scorecard
vendors claim that an almost blind faith in their tools
is justified.
At a spring conference in San Francisco,
for instance, Fair, Isaac representatives touted their
generic small- business scoring model. They said this
model, based on data from 25 lending institutions around
the country, is able to give an instant yes or no on an
astounding 80% of all applicants, leaving just 20% in
the "gray area" that requires underwriter attention.
Executive vice president Robert Heller
says a recent study by his firm found that default rates
on credit cards issued purely on the basis of scoring
were 30% lower than those where judgmental criteria were
used to override scoring decisions. "The human mind can
only hold so many variables, while a computer can hold
a very large number of variables," Heller says.
Science
and Art
Even as they enjoy the technology's
benefits, however, bankers need to maintain their sense
of perspective. Credit scoring is good at predicting the
probability of default, but not the magnitude of potential
losses. Furthermore, a scoring model that's good at gauging
risks in an overall market segment might fail miserably
with a specific bank's customer base.
Complexity explains some of this imprecision.
A good credit score contains about 20 determining characteristics,
built on analyses of "thousands of variables and permutations
of variables," says Fair, Isaac's Heller. While lenders
know the general ingredients in generic scores, they aren't
privy to the details. Banks using scoring with an incomplete
understanding of how the tools are made and should be
used can unintentionally expose themselves to risks.
If scoring itself is a science, the
way it is employed is more of an art. Each institution
weights scores differently in its decision process, picks
when and where in the lending process to inject them,
and sets cutoffs that match its own risk appetite. The
judgmental criteria can vary widely from bank to bank.
"With scoring," Heller says, "the difference between a
good bank and a bad one is in the management."
Bank One, for example, pulls custom
and FICO scores for every consumer credit applicant, using
this data to "frame" how the underwriter looks at the
deal. But it also weighs myriad other factors, including
the types of collateral offered, debt-to-income ratios
and the lessons the bank itself has learned about borrowers
in certain income or job history categories. "The score
paints 60% of the picture," says Ray, who notes that credit
scoring can't tell an underwriter what caused a bankruptcy
or interpret what the level of credit utilization reflected
in a score really says about a borrower.
Ultimately, lenders need a complete
set of strong policies and procedures to fully leverage
the technology's power. Tiers of borrowers with similar
characteristics must be established to effectively use
scoring as a pricing tool, for instance. And discipline
must be maintained in implementing a pricing strategy.
When rates don't accurately reflect risk, the institution
stands to lose money.
Once the scoring plunge is taken, bankers
agree, it's usually a mistake to try to override automated
decisions. Like playing blackjack, scoring is about odds
and temptations. "Once you approve a credit that fails
to meet your scoring threshold, then you've broken your
odds," Butler says. "You need the discipline to reject
a score that's below the cutoff, even if it feels right."
Can bankers maintain the necessary discipline?
There may be cause for concern. Zhai, the Moody's analyst,
believes some lenders don't understand proper usage of
the scores and aren't taking the basic steps required
to minimize the risk of default. He says some lenders
are inappropriately reducing the level of documentation
required for loans and skipping basics such as collateral
appraisals.
Discarding the tried-and-true fundamentals
of the lending process in favor of scoring damages the
integrity of underwriting systems, Zhai argues, and could
open the door to fraud. "It's the user's obligation to
understand scoring's proper place and integrate it with
a comprehensive risk-management program."
Despite their appreciation of scoring's
power, most bankers interviewed for this article concede
that misuse is a problem in the industry. Bank One's Ray
says the danger of fraud looms larger as banks rely more
on scoring for large consumer credits. "If you're depending
totally on a model and never even looking at the borrower,
the risk of identity fraud, or of false statements about
income, increases exponentially," he says.
Michael James is a group executive for
small business and consumer lending at Wells Fargo & Co.
He says his bank employs a staff of about 40 statisticians
who are constantly retooling the inner workings of scores
and how they're applied to the lending process. In contrast,
many smaller banks "may either not understand or are not
being as disciplined as they need to be" when using scoring,
James says. "This is pretty sophisticated stuff, and I
wonder if some companies have the expertise to manage
it all."
Verify,
Verify, Verify
Even when used properly, the effectiveness
of scores can be constrained by various factors such as
changing economic conditions and data quality. "Generic
scores based on a broad population often aren't representative
of a particular lender's strategy or customer base," says
Yasmine Anavi, director of risk management for North America
at Citigroup's credit card unit.
In the course of reviewing small bank-card
portfolios that Citi considered acquiring during the last
few years, Anavi says she witnessed first-hand "how over-reliance
on generic models can make a portfolio stray by causing
it to grow so quickly that it outstrips a bank's risk-management
capabilities."
Some bankers fret that overconfidence
may be leading some peers to move "up-market" with scores
using them, for instance, to auto-decision small-business
loans as large as $250,000, or to gauge the risks of even
larger corporate credits. Many major banks use software
produced by San Francisco-based KMV Corp. and other firms
to assess default probabilities for corporate borrowers.
While no one has apparently experienced
serious difficulties doing this, scoring, by its very
nature, works better with consumer businesses such as
credit cards, where there is a wide and deep well of experience
to draw upon. "The dependability of these models has a
strong negative correlation to the size of the loan being
considered," says the OCC's Brown. "The bigger the credit,
the more traditional analysis is required."
For now, Brown says he's generally satisfied
that no institution is "betting the bank" by relying too
heavily on scoring. But since scoring is becoming ever
more prevalent in the industry, bankers still need to
guard against its potential perils.
Top executives should take the time
to understand the basics how the models are being
used and how they interface with lending policies and
procedures. And managers of specific lending units should
be held accountable. Division heads should be able to
explain their loss rates and pricing strategies, and show
how scoring relates to the institution's overall business
strategy. Line managers also need to monitor scoring's
effect on portfolio performance.
This last recommendation falls under
the broad banner of validation. Statisticians build scoring
models, but someone else must examine the model-builder's
work and check its accuracy in daily usage. Smart banks
make this an ongoing process. They use an independent
reviewer to monitor loan performance and ensure that the
score is accurately differentiating different degrees
of risk. This person can be either an impartial third-party
or someone from a different part of the bank.
Ideally, such validation begins well
before scoring tools are implemented. Prior to launching
a formal program for auto-decisioning consumer loans in
1996, for example, KeyCorp spent several years as what
Butler calls a "scoring shop in disguise." A traditional
system based on standard judgmental criteria kept the
underwriting wheels turning. Meanwhile, a shadow system
based on credit scores was put in place and refined to
the point that bank officers felt comfortable in letting
it take over. Though time-consuming, this thorough process
helped KeyCorp officials place the scores in the right
context for daily usage.
Effective validation is not accidental.
Rather, it's the result of carefully constructed policies
and procedures meant to ensure that scoring models are
being used correctly. It also includes ongoing monitoring
efforts to assure that the scores are generating the intended
kinds of credits.
In Wells Fargo's small-business unit,
that means breaking down the portfolio into about 100
large cells and then tracking the performance of each
cell in myriad ways. "You have to constantly evaluate
your applicants, know whom you're targeting and who's
applying, and assess how well your models are doing at
generating the right business and predicting its performance,"
James says.
Banks should put their validation policies
in writing, and hold one person accountable for ensuring
they are followed. They should also require documentation
for every step of a scoring model's construction. Should
a designer leave, people not privy to the details would
then still possess a roadmap to follow. Documentation
also makes regulatory exams easier. "When I show up,"
says the OCC's Brown, "I like the bank's officers to hand
over a big, thick binder that walks me through everything
they did to build the model."
Boiled down to its essence, the lesson
is simple: if you use credit scoring, first understand
how it works. Then, supplement its usage with other, more
traditional underwriting tools. And verify, verify, verify.
Mr. Engen is a freelance
writer based in Minneapolis.
Copyright © 2003 by Banking
Strategies, published by BAI.
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