Session 026 IF - Model Risk Management - Member | SOA

2017 SOA Annual Meeting & Exhibit ... Annual Default Study: Corporate Default and Recovery Rates, ... Session 026 IF - Model Risk Management...

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Session 026 IF - Model Risk Management Moderator: Yimin Yang Presenters: George Alvites Charlie Anderson, Ph.D. Gang Ma, FSA

SOA Antitrust Compliance Guidelines SOA Presentation Disclaimer

Model Risk Management Insurance Practices Presented by: George Alvites

Agenda 1. Audience Profile 2. Enterprise View to Model Risk 3. Focus of Insurance Practices: - Assumptions - Documentation - Independent Validation This is a journey, not a race

Enterprise View to Model Risk Model Risk Framework Governance

Examples of Key Processes Risk Management

Design, Development, Implementation, Use

Identification Inventory

I. Methodology Design

II. Assumptions

Risk Assessment

III. Development Life Cycle

IV. Documentation

Independent Validation

V. Ongoing Monitoring

VI. Change Management

Policy and Procedures

Roles & Responsibilities

Awareness (Training)

Project Management

Oversight & Reporting

Huge effort, big reward, long journey

Assumptions Practices Identification & Processes

Risk Management

- Assumptions link to Model Inventory & Purpose

- Effective oversight and challenge

- Key data elements (sound research; methodology rationalization)

- Outcome analysis – reperformance; benchmarking; analytics

- centralization of common assumptions - Challenge forum: independent team or formal oversight committees

Risk Assessment - Uncertainty: relevance of data vs. judgment - Sensitivity analysis and impact assessment

- Change management

- Long term – enterprise sensitivity analysis

Challenges - Interconnectedness: other assumptions: economic, investment, consistency of forecasting - Strategic: enterprise view of key data elements (consistency, accuracy, timeliness) - Operational: implementation practices

Strategic Risk - Decision making facilitated by Assumption Management

Documentation Practices Key Elements

Objectives

Inputs, Assumptions, Calculation, Output

- Sufficient content for model functionality

- Intended use; model methodologies

- Risk based commensurate with inherent risk and model risk profile

- Model testing, uncertainties; limitations - Conservatism: compensating controls - Controls to assess sensitivity analysis; - Interconnectedness risk – upstream and downstream. - Output review controls (backtesting, benchmarking, overrides management) - Model findings – risk ranked and materiality assessment

- Replicability principle Challenges - Version control – model code - Consistency – standardized documentation - Independent challenge review - Cost vs. benefit: implementation effort

Documentation creates an environment of sustainability

Independent Validation Practices Structure

Challenges

- Independent reviewers – SR 11-7 also requires competence and incentives

- SR 11-7 expertise is limited in Insurance industry.

- Evaluation of conceptual soundness and implementation testing

- Competition for talent within regulated entities (Limited PhDs and FSAs)

- Ongoing monitoring plan – detective vs. preventative (change management, changes in products, adjustments, redevelopment, benchmarking, override management)

- Cost vs. benefits: Cost to maintain effective independent program. Benefits seen over time.

- Outcome analysis (comparison of outputs to expected outcomes or range or outcomes; statistical tests or quantitative measures, expert judgement/overrides testing, assumption sensitivity testing)

- Timing of compliance with requirements. - Cultural shift from traditional collaborative review to independent risk. - Risk profile and learning curves are steep

Validation Processes Creates Effective ERM over time

Model Risk Management in Insurance Investment Management 2017 SOA Annual Meeting & Exhibit

Session 26: Model Risk Management

Gang Ma, PhD, FSA, CFA, FRM VP, Investment Risk Management and Quantitative Analysis RGA Reinsurance Company/St. Louis/Investments Oct 16, 2017

Overview of Investment Models

Models for Insurance Investment Management Functions

Models

Inputs/Assumptions

General Management

Investment planning

A/L cash flow projections, expected trading activities, yield forecast, FX forecast

Cash flow projection

Vary by assets

Asset allocation

Returns or yields, risks, correlations, constraints such as duration, convexity, capital

Total return

CFA Institute's GIPS methodologies

Total return attribution

Methodologies to attribute excess return over benchmark to asset allocation/trading and relative risk positioning (e.g. duration)

Investment income attribution

Lack commonly accepted methodology

Portfolio Management

Investment Performance

Trading

Security valuation (Bloomberg, Security attributes, secondary models broker, proprietary valuation models)

Lending

Underwriting, return/risk analysis

Attributes of the borrower or the investment opportunity

Credit rating

Quantitative/qualitative analyses of the issuer or the borrower

WARF

Ratings along with a mapping methodology

C1 capital (credit risk)

Prescribed factors or company's own models

Credit VaR, Conditional Credit VaR

Credit loss distributions, correlations

Market/credit sensitivities

Security valuation models

Liquidity

Estimates of liquidity demand and supply

Stress testing

Scenarios, market shocks, correlations

Asset valuation

Mark to model based on the observable market price of comparable (Level 2); No observable market prices (Level 3)

Investment income

Accounting principles

Investment Risk Management

Investment Accounting

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Nature and Challenges of Investment Models Nature of Investment Models

Challenges

Most investment models are external

External models may lack transparency and end-user control. Access to external models may be limited due to license cost

One model may depend on one or several other models

Complex modeling structure, ripple effect

Investment models could be highly technical

Modeling results could be misinterpreted or misused if not carefully communicated or fully understood

Investment decisions based on modeling results could have an immediate financial impact

Some investments require long-term commitment. The long-term financial impact of an investment may not be fully known in the near term

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Examples of Investment Model Risks

Ratings of New Bonds Do Not Vary With Maturities1 Sector AUTO AUTO ENERGY ENERGY P&C P&C RETAIL RETAIL RETAIL RETAIL TECHNOLOGY TECHNOLOGY

Company GM GM BP CAPITAL BP CAPITAL ALLSTATE ALLSTATE AMAZON AMAZON COSTCO COSTCO APPLE APPLE

Rank Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured Sr Unsecured

Coupon 4.20 5.40 1.77 3.28 3.28 4.20 1.90 4.05 2.30 3.00 1.50 3.75

Issuance Date 08/02/2017 08/02/2017 09/14/2017 09/14/2017 12/01/2016 12/01/2016 08/15/2017 08/15/2017 05/09/2017 05/09/2017 09/05/2017 09/05/2017

Maturity Date 10/01/2027 04/01/2048 09/19/2019 09/19/2027 12/15/2026 12/15/2046 08/21/2020 08/22/2047 05/18/2022 05/18/2027 09/12/2019 09/12/2047

Year to Maturity 10 30 2 10 10 30 3 30 5 10 2 30

Moody's Rating at S&P Rating Issuance at Issuance Baa3 BBB Baa3 BBB A1 AA1 AA3 AA3 ABaa1 AABaa1 AAA1 A+ A1 A+ Aa1 AA+ Aa1 AA+

 Same credit rating for shorter- and longer-term corporate bonds at issuance because of the comparable expected credit losses modeled  A longer-term credit outlook is inherently less certain, in particular for the fast evolving sectors. To what extent do the ratings reflect this? 1. Data from Bloomberg

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Credit Loss Charges vs. Actual Impairments  Insurance companies use credit loss charges for various applications including cash flow testing, asset adequacy analysis, investment relative value analysis, and deal pricing  Insurance companies may assess credit loss charges based on rating migration, default, and recovery data1  How do your company’s credit loss charges compare with the actual impairments?

Annual Impairment of Bonds (bps) Year 2007 2008 2009 2010 2011 2012 2013 2014 2015 2016 Average 2007-2016 Volatility 2007-2016 Average 2010-2016 Volatility 2010-2016

Median of Sample Insurance Companies* 13 130 95 30 22 14 6 2 6 7 36 46 13 11

* Data based on companies' 10K

1. Annual Default Study: Corporate Default and Recovery Rates, 1920-2016, Moody’s, 15 February 2017

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Forward Swap Rates Tend to Overestimate Spot Swap Rates of the Same Future Date

Diff

3Mo Fwd

Spot Rate

Diff

6Mo Fwd

3/6/17

3/6/16

3/6/15

3/6/14

3/6/13

3/6/12

3/6/11

3/6/10

3/6/09

3/6/08

3/6/07

3/6/06

3/6/05

3/6/04

3/6/03

3/6/02

3/6/01

3/6/00

350 300 250 200 150 100 50 0 -50 -100 -150 -200

3/6/99

9 8 7 6 5 4 3 2 1 0

3/6/98

12/8/16

12/8/15

12/8/14

12/8/13

12/8/12

12/8/11

12/8/10

12/8/09

12/8/08

12/8/07

12/8/06

12/8/05

12/8/04

12/8/03

12/8/02

12/8/01

12/8/00

12/8/99

12/8/98

250 200 150 100 50 0 -50 -100 -150 -200

12/8/97

9 8 7 6 5 4 3 2 1 0

Diff (bps)

5Yr Swap Rates - 6Mo Fwd vs. Spot of the Same Future Date

Rates (%)

5Yr Swap Rates - 3Mo Fwd vs. Spot of the Same Future Date

Diff (bps)

 Forward swap rates appear to be a poor estimator of the actual spot rates of the same future date  How much may be influenced by the central banks’ monetary policies and market liquidity?

Rates (%)

Difference (Forward Swap Rate - Spot Swap Rate) 3Mo 6Mo 1Yr Average difference (bps) 16 32 65 Average difference (%) 7.8% 15.9% 32.6% Volatility of difference (bps) 49 71 98 Freq of positive difference 65% 68% 74% Freq of negative difference 35% 32% 26% Avg given positive difference (bps) 43 69 109 Avg given negative difference (bps) -34 -45 -62

Spot Rate

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Forward FX Rates May Be Better Estimator of Spot FX Rates of the Same Future Date Difference (Forward FX Rate - Spot FX Rate) CAD/USD GBP/USD Average difference ($) $0.00 $0.01 Average difference (%) -0.25% 1.10% Volatility of difference ($) $0.07 $0.15 Freq of positive difference 48% 53% Freq of negative difference 52% 47% Avg given positive difference ($) $0.05 $0.12 Avg given negative difference ($) -$0.06 -$0.12

 Certain forward FX rates outperform forward swap rates as an estimator of the respective spot rates of the same future date  Better market liquidity and less central banks’ intervention?

Diff

1Yr Fwd

Spot Rate

Diff

1Yr Fwd

9/8/17

9/8/16

9/8/15

9/8/14

9/8/13

9/8/12

9/8/11

9/8/10

9/8/09

9/8/08

9/8/07

9/8/06

9/8/05

9/8/04

9/8/03

9/8/02

9/8/01

9/8/00

9/8/99

-$0.40 9/8/98

$1.00

$ Per £1

-$0.30

Diff ($)

$0.60 9/8/17

-$0.20

9/8/16

$1.30

9/8/15

-$0.20 9/8/14

$0.70 9/8/13

$0.00

9/8/12

$1.60

9/8/11

-$0.10

9/8/10

$0.80

9/8/09

$0.20

$0.00

9/8/08

$1.90

$0.90

9/8/07

$0.10

9/8/06

$1.00

9/8/05

$0.40

9/8/04

$2.20

9/8/03

$0.20

9/8/02

$1.10

9/8/01

$0.60

9/8/00

$2.50

9/8/99

$0.30

9/8/98

$ Per £1

$1.20

Diff ($)

GBP/USD FX Rate - 1Y Fwd vs. Spot of the Same Future Date

CAD/USD FX Rate - 1Y Fwd vs. Spot of the Same Future Date

Spot Rate

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Other Examples of Investment Model Challenges  Forecast of inflation • TIPS implied vs. Econometric models

 Models involving human behavior • mortgage and credit card prepayment models used for RMBS and ABS

 Correlation of asset returns • may vary by the collective risk appetite of investors

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Investment Model Risk Management

Ways to Manage and Mitigate Investment Model Risk         

Inventory models Rank models based on potential financial impact Ensure to have adequate model accesses and modeling expertise Be knowledgeable about the models, modeling process, assumptions, inputs, constraints and limitations For external models that require user inputs, establish robust processes and procedures to ensure that the inputs are up-to-date and provided according to the procedure When making investment decisions based on modeling results, look at a range of possible results instead of a single point Couple modeling results with sound judgment and experiences Conduct periodical review and validation of critical models Disclose and communicate model constraints and limitations clearly

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