Prepayment Modeling

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Prepayment Modeling

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It is impossible to project prepayments, since future mortgage rates are not known. ... relationship between projected mortgage rates and resulting prepayment ... – PowerPoint PPT presentation

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Title: Prepayment Modeling


1
Prepayment Modeling
  • Michael Bykhovsky
  • Chief Executive Officer
  • Applied Financial Technology

2
Applied Financial Technology Who We Are
  • Since 1996, Applied Financial Technology
    has delivered high-quality risk analytics to the
    mortgage industry via the company's cutting edge
    quantitative methods.
  • The AFT library offers prepayment models for
    fixed, adjustable, prime and sub-prime mortgages,
    home equity loans and home equity lines of
    credit.
  • AFT counts leading broker/dealers, institutional
    investors and mortgage banks as clients,
    including the five largest U.S. banks.
  • The AFT library also houses interest rate
    processes and option-adjusted valuation and risk
    management tools for MBS, ABS, and CMOs.
  • The AFT library is integrated with all major
    analytics systems and every day hundreds of users
    depend on AFT prepayment analysis distributed on
    Bloomberg. 
  • The company houses decades of Wall Street and
    mortgage banking experience in its offices in San
    Francisco, Boston and New York.  Learn more about
    the company at www.aftgo.com.

3
AFT Philosophy
  • In recent years, some new approaches have been
    developed in modeling the refinancing behavior of
    mortgage loans. What makes these new approaches
    work is the focus on modeling borrower behavior
    and the reasons for changes in that behavior,
    instead of focusing on the model's tenability
    within existing statistical machinery.
  • Statistical analysis generates both "signals"
    (the effect you're measuring) and "noise" (random
    events that have nothing to do with what you're
    measuring but may affect your measurement
    results). The idea behind statistical
    significance is that the information you want is
    obscured by other information you do not care
    about. By finding confidence levels, you are
    hoping to determine what effects from your data
    are significant and what are not. The problem
    with using statistical analysis on a large pool
    of loans is that every effect is a signal. There
    is no noise in your measurements. Any effect
    large enough to register is significant. When you
    analyze a large pool of loans and get noise or
    errors, it is reflective of mistakes in the
    statistical model. Moreover, when you run r2
    minimizations on signals, you are attempting to
    minimize mistakes, not noise or errors.
  • Prediction is a very difficult art, especially
    with respect to the future. --Mark Twain
  • The purpose of constructing a prepayment model
    is not to project prepayments. It is impossible
    to project prepayments, since future mortgage
    rates are not known. The purpose of a model is to
    define a relationship between projected mortgage
    rates and the resulting rates of prepayment
    activity, given all available information
    regarding the mortgage, the mortgage holder, the
    current state of the economy, etc. If this
    relationship is well modeled, it will in turn
    allow one to answer all of the questions that one
    may ask as a participant in the mortgage market.
    Questions like the value of the option to
    refinance, the average advantage of owning a
    mortgage vs. owning other instruments, how one
    can compare a mortgage to a collection of bonds
    and short positions in interest rate derivatives,
    etc. Therefore, a well-constructed model should
    incorporate all known factors that effect a
    mortgage holder's inclination to move or to
    refinance, as well as the overall state of the US
    housing market.

4
AFT Philosophy
  • Modeling Approaches
  • OLD
  • Parsimonious
  • Statistically-fit
  • Poor performance
  • Unstable
  • Requires frequent recalibration
  • NEW
  • Behavior-based
  • Well-modeled relationship between projected
    mortgage rates and resulting prepayment behavior
  • Proven performance in volatile markets
  • Seldom requires recalibration

5
AFT Philosophy
  • Prepayment models do not PREDICT prepayments
  • Predicting future rates is impossible
  • AFT models the interest rate/borrower behavior
    relationship based on
  • Loan characteristics
  • Borrower characteristics
  • Interest rate

6
Modern Model Construction
  • Two contributors to mortgage prepayments
  • Housing turnover
  • Refinancing
  • Major contributor to the cost of the prepayment
    option

7
Housing Turnover Component
  • Step 1 Projecting existing home sales index
  • Change in interest rates
  • Rates increase/home sales slow down
  • Rates decrease/home sales speed up
  • Mean-revert over time to a normal level
  • Seasonality
  • Peak in late summer
  • Trough in January and February

8
Projecting Existing Home Sales
The fit is based on pre 1977 data - note
seasonality.
9
Housing Turnover Component
  • Mortgage age
  • A borrower with a newly purchased home is less
    likely to move
  • Lock-in effect
  • If prevailing rates are higher than current rate
    being paid, the incentive to move decreases
  • Self-selection
  • Excess points paid discount origination
  • No points/no fees - premium origination

10
Housing Turnover Component of Prepayments
11
Borrower Refinance Activity
  • Contributes the most to the prepayment option
  • Most volatile
  • Most challenging component to model
  • Successful models
  • Complete and accurate modeling of underlying
    phenomenon

Accurate models do not change frequently because
human behavior does not change frequently.
12
Borrower Refinance Activity
  • Refinancing Incentive
  • Ratio of WAC to effective mortgage rates
  • Burnout
  • Pool is not homogeneous
  • There are sub-pools of fast, medium and slow
    refinancers
  • As the ratio of sub-pools changes the response to
    refinancing incentive changes

Two Major Aspects of Refinancing Modeling
13
Borrower Refinance Activity ? Modeling Burnout
14
Borrower Refinance Activity ? Publicity
  • Publicity
  • Overlooked by many models
  • Historic lows cause dramatic change in refinance
    pattern
  • Pools considered burned out start to refinance
  • Loans begin to refinance for a lower incentive
  • Overall sensitivity increases

15
Borrower Refinance Activity ? Historically Low
Rates Drive Publicity Effect
16
Borrower Refinance Activity
  • High premium-originated loans
  • Generally slower than current-coupon originated
    loans
  • Credit quality
  • Loan size

Additional Drivers of Refinancing
17
Accuracy and Stability
Accurate forecasts over time are critical.
Five Years
Your model should be accurate over long periods
of time and through rate changes.
18
Accuracy and Stability
Stability Matters..a lot How can a model that
changes every few months based on recent model
inaccuracy be used to model prepayments over
several years?
19
Accuracy and Stability
  • Major parameters set in 1996
  • Did not over project 1996-1997 refinancing
  • Did not under project high levels of 1998-2001
    refinancing
  • Excellent fit to history

Stability and Accuracy are the hallmarks of the
AFT model.
20
Model accuracy One Example
How Would These Errors Effect YOU?
21
AFT Model accuracy Comparison
Model users must understand the risk inherent in
model error.
22
Model Risk ?Buying Mortgage Servicing Rights
  • Assume
  • You are given the task of pricing the acquisition
    of 1 billion of mortgage servicing rights.
  • You rely on a prepayment model to tell you the
    prepayment vectors associated with various
    changes in interest rates and you use these to
    price the MSRs.
  • Your are responsible for any write downs in the
    value of the MSRs that are caused by unexpected
    (improperly modeled) prepayments.
  • You are not responsible for hedging expected
    changes in value caused by changes in interest
    rates.
  • Your prepayment model has a 30 error (you trust
    it to be correct).
  • How good or bad could life be a year from now?

23
Prepayment Model Risk
How good or bad could life be a year from now?
  • Goal? Buy mortgage servicing rights with a
    1 billion c.p.b. that will generate an OAS of 50
    basis points.
  • Use model prepayments and IRP to calculate the
    value of 25 bps of IO to be 68.8bps.
  • Use this price to calculate a servicing value of
    1 of 1 billion or 10 million.
  • Actual prepayments are 30 greater than forecast
    for actual changes in rates.
  • Correct value of the IO was 59.4 bps or 15.7
    less than you calculated using your prepayment
    model.
  • The 15.7 overpayment resulted in a write down of
    1.57 million.

Loss of 1.5 million
24
Model Risk ?Hedging Mortgage Servicing Rights
  • Assume
  • You are long a 10 billion c.p.b. servicing
    rights portfolio valued at 150 million.
  • Your job is to hedge your MSR portfolio value
    exposure to a one year, one sigma change in
    interest rates which is or 60 basis points
    today.
  • You rely on a prepayment model to tell you the
    effective duration of your servicing rights.
  • Your prepayment model has a 30 error (you trust
    it to be correct).
  • How good or bad could life be a year from now?

Accuracy has significant value. How accurate is
your current model?
25
Prepayment Model Risk
How good or bad could life be a year from now?
Plan MSR Hedge Model
duration -43.3 43.3 Change in
rates -.60
-.60 Change in value - 25
25 change in value -37.5
million 37.5 million
Actual MSR Hedge Actual
duration -54.4 43.3 Change in
rates -.60
-.60 Change in value - 32.5
25 change in value -48
million 37.5 million
Loss of 10.5 million
26
Opportunity Better understanding prepayments at
the loan level
These loans have 7.5 coupons and were originated
in August 1999 Todays prepayment analytics see
them as identical.
How likely is each loan to prepay in the next
three months? Do they all have the same servicing
value? Should you offer to refinance?
27
Actual Prepayments for a portfolio of loans over
42 months? Same WAC/WAM
28
AFTs prepayment model does a great job of
predicting average speeds
Inputs to the model ? WAC, WAM, Loan Type
29
Some loans with the same WAC,WAM and Loan Type
always prepay faster than others..
How can we know this and why does it matter?
30
AFT has used this insight to develop a score for
prepayment propensity
Adding more data provides more insight into each
loans prepayment behavior
All loans have the same coupon, age and loan
type.
.but different relative prepayment propensities.
31
Loan Level Prepayments
How good is your intuition?
32
Prepayment Scoring- Why it matters
Mortgage values are a function of prepayments,
which are a function of rates and other
variables..
33
Prepayment Scoring- Why it matters
3.2 billion pool. Average value is 97 bps. 32
million investment that will evaporate over
time. Scoring allows a closer look at value.
34
Prepayment Scoring- Why it matters
3.2 billion pool. Average value is 97 bps, but
modifying prepayments as a function of the score
uncovers significant economic value relative to
the market.
35
Prepayment Scoring- Why it matters
The relative values in each of the 12 largest
pools.looks pretty consistent. The relative
value range in a pool can be significant32 basis
points in this example.
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