Vision 2014 driving-student-loan-rehab-collection-efforts-with-scorecards
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#vision2014
Driving student loan rehab collection efforts with scorecards
Christopher Magnotti Experian
Alex Siotos Experian

2 © 2014 Experian Information Solutions, Inc. All rights reserved. Experian Public.
Would your business be interested in knowing which student loans are likely to go on a repayment program?
Our session will focus on how predictive, for recovery, a collection scorecard is at determining a student loan account’s ability to go into a repayment program
We will focus on how predictive daily event based triggers are at determining a student loan account’s ability to go into a repayment program
We will also look at use cases for the collection treatment strategies
Objective / purpose

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Biographies
Chris Magnotti joined Experian in
2009. Chris’s experiences include
full life cycle risk management, P&L
forecasting, stress testing, portfolio
acquisition, international due
diligence, and staff management
and development. Chris has 18
years of experience in risk
management and related analytics.
Chris’s past experiences include
working for a Top-5 portfolio in each
of the following industries; bankcard,
subprime bankcard and private label.
Chris holds a Bachelor degree in
Environmental Science from the
University of Delaware.
Chris Magnotti
Experian
Consultant Lead
Alex Siotos
Experian
Consultancy Director
Alex Siotos is a Business Consultant
for Collections who works with clients
in the financial services industry to
integrate the right solution into their
collection process with the goal of
improving operational efficiency and
shortening collection time.
An expert in account segmentation,
contact strategy, analytics scoring and
operational efficiencies, Siotos has
been entrenched in the collections
market landscape for more than the
past 10 years.

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Quote for today
The growing number
of students who have
defaulted on their federal
student loans is troubling.
The Department will
continue to work with
institutions and borrowers
to ensure that student
debt is affordable.
“
” – Arne Duncan
Secretary of Education

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Headline news stories
Student loans continue to be a ticking time bomb
NEXT BAILOUT: Student loans?
The number of borrowers defaulting two years into repayment has increased six years in a row

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What are the students saying?

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Nearly 20 million Americans attend college each year
60% of them borrow annually
There are 37 million student loan borrowers with student loan balances
There is somewhere between $902 billion and $1.2 trillion in outstanding loans
► $864 billion is federal student loan debt
► $150 billion is in private student loans
Student loan statistics

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Average loan balance is $24,301
► 10% owe more than $54,000
► 3% owe more than $100,000
Approximately 5 million federal loan borrowers are in default
Approximately 850,000 private loans are in default
► The price tag – $67 billion
Student loan statistics

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Student loan balances by age and delinquencies
Age group Loan balance Delinquencies
Under 30 33.9% 25.0%
30-39 32.8% 34.2%
40-49 16.4% 23.1%
50-59 11.3% 12.1%
60+ 4.2% 4.8%
Not Known 1.4% 0.8%

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Lowest Delinquency Rates
► Utah
► North Dakota
► Minnesota
► Iowa
► Pennsylvania
Highest Delinquency Rates
► Nevada
► New Mexico
► Oklahoma
► Texas
► South Carolina
► Mississippi
► Florida
What states are best and worst?
Unemployment is lower than national average (< -10%)
Unemployment is higher than national average (> 10%)
Unemployment by State as of Decemeber-2013
Highest/Lowest Student Loan Delinquencies by State
Lowest Delinquency Rates
Highest Delinquency Rates

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Comparing delinquency rates
0%
2%
4%
6%
8%% of loan balances that are 90+ days delinquent
Auto Loan & Lease Bank Card Mortgage Student Loan
Student loan delinquencies are up 30% from 2006
Other loan delinquencies are down from 2006

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Student loan analytics
Christopher Magnotti

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Background Analysis design and timing
Starting population – all placements for eight monthly snap shots
Aug 2012 /
Sep 2012 /
Oct 2012
Three-month performance windows
Nov 2012
to Jan 2013
Feb 2013
to Mar 2013
Apr 2013
to Jun 2013
Performance periods
Nov 2012 /
Dec 2012
Jan 2013 /
Feb 2013 /
Mar 2013
Sep 2012 Credit archive
Nov 2012 Credit archive
Feb 2013 Credit archive
Performance
definitions:
Non-Recovered Account did not enter a
repayment program
Recovered Account did enter a repayment
program

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Performance measured over three-month measurement window
Captures attribute at two different time frames and compares to impute a trigger
Background Analysis design and timing
3-month measurement window
June 2013
March 2013
Triggers
calculated

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Scorecard models
Christopher Magnotti

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The majority of payments are collected from a relatively small percentage of consumers
Know which consumers have the ability
to pay before applying collection strategies

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Too many consumers, limited collection resources
Working every account the same … is not efficient!

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38.3%
13.7%
0.0%
10.0%
20.0%
30.0%
40.0%
PriorityScore Traditional Recovery Score
KS
%
Score Card
KS Values
KS values
180% lift

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99.3%
89.8%
70%
80%
90%
100%
PriorityScore Traditional Recovery Score
% S
core
ab
le
Score Card
% Scoreable Records
Scoreable percentage
10% more
scoreable accounts

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0%
20%
40%
60%
80%
100%
Cu
mu
lati
ve
% o
f A
cco
un
ts E
nte
rin
g R
ep
ay
me
nt
Cumulative % of Accounts
Cumulative % of Accounts Entering Repayment Program
PriorityScore Traditional Recovery Score
Cumulative recovery rate
Top 50%, 81% repayments captured
30% lift Top 50%, 63% repayments captured

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0%
10%
20%
30%
40%
50%
60%
70%
Cu
mu
lati
ve %
of
Acc
ou
nts
En
teri
ng
Re
pa
ym
en
t
Cumulative % of Accounts
Best Scoring - % of Accounts Entering Repayment Program
PriorityScore Traditional Recovery Score
Best scoring capture rates
Note: It is preferred to have more #s
recovered in the best scoring populations
94% lift in accounts entering into a repayment program
baseline
baseline
baseline

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0%
10%
20%
30%
Cu
mu
lati
ve %
of
Acc
ou
nts
En
teri
ng
Re
pa
yme
nt
Cumulative % of Accounts
Worst Scoring - % of Accounts Entering Repayment Program
PriorityScore Traditional Recovery Score
Worst scoring capture rates
Note: It is preferred to have fewer #s
recovered in the worst scoring populations
baseline
baseline
baseline 8% of the accounts entering into a repayment program are left

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0%
4%
8%
12%
16%
20%
% o
f A
cco
un
ts E
nte
rin
g R
ep
ay
me
nt
Twentiles (Score Intervals)
Interval % of Accounts Entering Repayment Program
PriorityScore Traditional Recovery Score
Interval recovery rate
110% lift in accounts entering repayment

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$0
$5,000
$10,000
$15,000
$20,000
$25,000
$30,000
Ba
lan
ce
Twentiles (Score Intervals)
Average Balance on Accounts Entering Repayment Program
PriorityScore Traditional Recovery Score
Average balance
$25,986 average
$972 average

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0%
20%
40%
60%
80%
100%
Cu
mu
lati
ve %
of
Re
ven
ue
Do
lla
rs
Cumulative % of Accounts
Cumulative % of Revenue $ Dollars (revenue = (rehab balance * 70%) * 11%)
PriorityScore Traditional Recovery Score
Cumulative revenue rate
92% revenue dollars captured
68% revenue dollars captured
% of repayments that complete the 9 month payment program
% of repayments balances that turns into client revenue
35% lift in revenue captured

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0%
8%
16%
24%
32%
% o
f R
ev
en
ue
Do
lla
rs
Twentiles (Score Intervals)
Interval % of Revenue $ Dollars (revenue = (rehab balance * 70%) * 11%)
PriorityScore Traditional Recovery Score
Interval revenue rate
183% lift in revenue at top 5%

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Daily event-based triggers
Christopher Magnotti

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Background Consumer’s life cycle
No ability to pay
Diminishing ability to pay Full capacity to pay
A consumer’s cycle of delinquency
Consumer
Overextended
Health issues
Job loss Bankruptcy Employment
Paying off
debts
Shopping for
credit
New
credit line
Be notified of these events and then
determine the right time to collect

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Daily event-based triggers
7.3%
11.8%
15.1%
0.0%
4.0%
8.0%
12.0%
16.0%
Total Population Total Trigger Population Top Triggers
% Accounts Entering Repayment Program
107% lift in account recovery
10% of total
population 3% of total
population

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Daily event-based triggers Top selected triggers
13.7%
12.9%
14.3%
13.7%
18.8%
7.3%
0.0% 4.0% 8.0% 12.0% 16.0% 20.0%
Credit Available
Inquiry
Lien/Civil Action
New Trade
Positive Improvement
Total Population
Avg % Accounts Entering Repayment by Trigger Group for Top Triggers
157% lift
87% lift

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Daily event-based triggers Top selected triggers
Trigger Group – Trigger Description Account Entering Repayment %
Positive improvement – current was foreclosure 40.0%
Positive improvement – current was 120 30.3%
Positive improvement – paid was 120 25.0%
Inquiry – business loan inquiry 23.1%
Positive improvement – paid charge-off 22.2%
Positive improvement – current was 90 21.9%
Positive improvement – current was 150 21.2%
Positive improvement – settled dispute 20.5%
Positive improvement – paid was 180 20.0%
Positive improvement – paid was 90 20.0%
Lien / civil action – civil action: satisfied, suit dismissed,
wage released or vacated 20.0%
Positive improvement – paid recreational merchandise 20.0%
Positive improvement – current 30 was 120-180 20.0%
Positive improvement – current was 180 19.8%
Positive improvement – current was 60 16.9%

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Conclusion
Christopher Magnotti

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Our analysis shows that the scorecard PriorityScoreSM and daily event based triggers are both very predictive in determining which student loan accounts will enter a repayment program
Scorecards alone cannot achieve the highest levels of recovery, incorporating daily event based triggers in with your collection strategies would make recovery more effective and valuable
These are tools that can be used for any student loans types like department of education, private, or state issued loans
Conclusion
If you are looking for 100+% lift in top-performing accounts
entering a repayment program, then PriorityScoreSM and
Collections TriggersSM are the tools you need to consider
for your collection strategies

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For additional information, please contact:
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in the Daily Roundup:
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@ExperianVision | #vision2014
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