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The importance of measuring credit risk Beroepsvereniging van Beleggingsprofessionals 21 april 2008 T om van Zalen
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2 2 Agenda What is credit risk? The importance of credit risk Modeling credit risk A link to the recent credit crunch Credit Risk
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3 3 Agenda What is credit risk? –Definition –Credit risk drivers –Systematic versus non-systematic risk The importance of credit risk Modeling credit risk A link to the recent credit crunch Credit Risk
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4 4 What is credit risk? Credit risk, a definition: Credit risk is the risk of loss due to a debtor's non-payment of a loan or other line of credit (either the principal or interest (coupon) or both). But also: The risk of value losses following from a change in external credit factors. Credit Risk
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5 5 What is credit risk? External credit factors: –Micro Individual risk single debt instrument = status quo firm reflected in rating (and thus the credit spread) –Macro Collective risk fixed income portfolio = status quo economy reflected in business cycle Credit Risk
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6 6 What is credit risk? Micro: determinants rating: –Liability risk ~ volume debt versus equity –Asset risk ~ volume tangible or intangible –Cash flow risk ~ e.g. profitability, sales, repayment capacity Macro: determinants business cycle: –Inflation and economic growth: Y = C + I + G + T Market risk is aggregated liquidity and credit risk Market risk is systematic or not diversifiable Credit Risk
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7 7 What is credit risk? Credit Risk
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8 8 What is credit risk? Yield spreads largely depend upon rating, as a proxy for credit risk –Lower ratings face higher yield spreads Convex relation: lower ratings face relative higher spreads –Systematic market risk is significant Lower ratings face relative higher non-systematic credit risk Cyclical behaviour credit risk (credit cycles) Counter cyclical dependence (higher correlation during crashes) Credit Risk
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9 9 Agenda What is credit risk? The importance of credit risk –Credit risk in the Euro-area –Market participants Modeling credit risk A link to the recent credit crunch Credit Risk
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10 Credit risk in the Euro-area Market funding offsets bank lending –Monetary integration = Euro ~ Liquidity Deregulated capital of institutional investors goes Europe Sovereigns face lower deficits due to disciplinary rules Brussels Corporate entities go public more easy –Des-intermediation bank ~ Credit risk Financial regulation encourages credit risk management –Central banking = Basel II / Solvency II –Accounting = IFRS Credit Risk
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11 Credit risk in the Euro-area Conclusion: Bank-orientated economy with a small financial market focused on sovereigns … becomes market-orientated economy with a large financial market focused on corporate entities. Credit Risk
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12 Credit risk in the Euro-area Conclusion: Introduction Euro eliminates foreign exchange risk, which has caused intensified focus upon credit risk. Diversification over rating classes has improved, although the average rating decreased and may explain higher price volatility. Credit Risk
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13 Market participants Banks (traditionally) –Pricers of risk (loan originations) –Sellers of risk (securitization = credit risk transfer of higher rated bonds) High-rated homogeneous asset-backed securities (e.g. mortgages) Medium-rated heterogeneous collateralized debt obligations (=tranching & structured) Asset managers –Traders of risk –Buyers of risk (investment management) Credit Risk
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14 Market participants Hedge funds –Traders of risk (zero-position = arbitrage = long/short strategies) –Sellers & buyers of risk Private equity –Pricers of risk –Sellers of risk (funding using lower-rated by issuing high- yield bonds) Credit Risk
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15 Market participants Credit Risk
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16 Agenda What is credit risk? The importance of credit risk Modeling credit risk –Expected loss –Unexpected loss A link to the recent credit crunch Credit Risk
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17 Modeling credit risk Credit risk is the probability of default (PD) of a loss given default (LGD) due to changes in external credit factors Follows from credit loss distribution Measured by: –Expected loss (μ) –Unexpected loss (σ) Credit Risk
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18 Modeling credit risk- Expected loss Credit Risk Credit loss distribution function Credit Risk
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19 Modeling credit risk- Expected loss Expected loss –Measures the expected loss on a (portfolio of) loans given the characteristics of the counterparty and the loan conditions and the presence of collateral. –Is the μ of the credit loss distribution. Expected loss = probability of default x loss given default E[L] = PD x LGD = % x % = % –Credit spread = E[L] + liquidity spread Credit Risk
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20 Modeling credit risk – Expected loss Probability of default –Probability that a firm will default on its payment obligations (e.g. coupon payments, principal repayment) within one year. –Often follows from rating Credit Risk
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21 Modeling credit risk – Expected loss Number of defaults varies over time; Number of defaults depends on the state of the economy. Credit Risk
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22 Modeling credit risk – Expected loss Loss given default –The fraction of the outstanding loan that will not be recovered once default occurred. –Influenced by: Collateral Guarantees Value of collateral may be correlated with the occurrence of default: –Example: commercial real estate mortgages –“Haircuts” provide a correction for this issue Credit Risk
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23 Modeling credit risk – Unexpected loss Unexpected loss –If the realized credit loss would always equal its expected value, then there would be no risk. –In practice however, the credit loss is stochastic in nature and thus risk arises. –The possible deviation from the expectation is risk and is measured by the standard deviation of the loss distribution. –Unexpected loss is the σ of the credit loss distribution Credit Risk
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24 Modeling credit risk – Unexpected loss Default occurrence –Occurrence of default follows a binomial distribution: With probability PD a default will occur With probability 1 – PD no default will occur –For a portfolio with n loans, all having the same PD, the total number of defaults is distributed as follows: # defaults ~ Binomial(n, PD): µ = n x PD σ 2 = n x PD x (1 – PD) Credit Risk
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25 Modeling credit risk – Unexpected loss Binomial distribution for different values of n: According to the central limit theorem, for large n, the binomial distribution will converge to a normal distribution. Credit Risk
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26 Modeling credit risk – Unexpected loss Loss given default: –For a long time assumed constant due to: Complexity reasons Little effect to loss distribution compared to uncertainty in the default event. –Random variable with values: 0% < LGD < 100% Is modeled using a Beta distribution: –Distribution can be bound between two points –Distribution can have a wide range of shapes Credit Risk
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27 Modeling credit risk – Unexpected loss Beta distribution: –Two shape parameters: α and β –B(α,β) Credit Risk
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28 Modeling credit risk – Unexpected loss Credit loss distribution: from a single loan to a portfolio of loans. –E[L] is additive –U[L] is not! Correlations need to be taken into account. –Consider a portfolio that contains two loans, x & y with corresponding portfolio weights w x and w y : Credit Risk
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29 Agenda What is credit risk? The importance of credit risk Modeling credit risk A link to the recent credit crunch –Structured finance –Correlations Credit Risk
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30 A link to the recent credit crunch Structured finance –Pooling of assets and the subsequent sale to investors of tranched claims on the cash flows backed by these pools. –Characterized by: Pooling of assets De-linking of credit risk Tranching of liabilities –Key aspect of tranching: Create one or more classes of securities whose rating is higher than the average rating of the underlying asset pool. Credit Risk
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31 A link to the recent credit crunch A structured finance transaction in figure: The original credit risk is distributed in the economy and crops up everywhere. Credit Risk
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32 A link to the recent credit crunch Tranching is made possible by imperfect correlation between the assets in the original asset pool. A diversified pool of risky assets is expected to have a relatively predictable return pattern. Tranched pool is structured in such a way that: –E[L] of original asset pool = E[L] of total tranched pool –U[L] of original asset pool = U[L] of total tranched pool E[L] and U[L] are portioned and attributed to the different classes in the tranched pool. Credit Risk
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33 A link to the recent credit crunch Credit Risk
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34 A link to the recent credit crunch It’s all about correlations!! I Credit Risk
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35 A link to the recent credit crunch Yield spreads (Jan ‘04 – Jan ‘08): Credit Risk Madrid bombings Credit crunch
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36 A link to the recent credit crunch Yield return correlations: Credit Risk
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37 A link to the recent credit crunch What happened? –US economy tightened and housing prices declined –Correlation between high rating yield returns and the market volatility is always close to one ~ AAA/AA can serve as a proxy for the riskiness of the market. –Correlation between high rated (= market) and lower rated was low but started to increase. –Correlation between individual loans must then also increase. –Credit risk in pool based on assumed low correlations ~ credit risk is underestimated! Credit Risk
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38 A link to the recent credit crunch Could the recent credit crunch have been prevented with adequate credit risk management? Lessons learned: –Don’t trust on historical correlations only –Use dynamic / stress correlations Credit Risk
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