Title: Funding Liquidity Risk
 1- Funding Liquidity Risk 
- Advanced Methods of Risk Management 
- Umberto Cherubini 
2Learning Objectives
- In this lecture you will learn 
- To evaluate and hedge funding liquidity risk 
- To understand concepts, measures and effects of 
 market liquidity risk.
3The credit crisis and liquidity risk
- If you do not trust your neighbour and do not 
 trust your assets, you are in liquidity trouble
- Funding liquidity risk you must come up with 
 funding for your assets, but the market is dry.
 Solutions i) chase retail investors ii) rely on
 quantitative easing (wont last long)
- Market liquidity risk you are forced to unwind 
 positions in periods of market stress, and you
 may not be able to find counterparts for the
 deal, unless at deep discount. Solution
 quantitative easing (place illiquid bonds as
 collateral)
4Classical immunization flows
- Maturity gap banks lending on different (longer) 
 repricing periods than liabilities are exposed to
 reduction of the spread earned when interest rate
 rises.
- Cash flow immunization would call for maturity 
 matching. Assets should be have the same
 repricing period of liability, or, deposits
 should be hedged by being rolled over at the
 short term rate.
5Classical immunization value
- Fisher  Weil close the duration gap 
- Immunization against parallel shifts 
- Zero-coupon liability 
- Reddington keep an eye on convexity 
- Immunization against parallel shifts 
- Convexity of liabilities lower than that of 
 assets
- Fong  Vasicek the kind of shift matters 
- Immunization against whatever shift 
- Lower bound to losses positive or negative given 
 convexity of the shift
6IRRM  ALM ? risk management
- Asset-Liability-Management is about sensitivity 
 of balance sheet income and value to changes in
 the economic scenario (ALM requires scenarios)
- Value-at-Risk is a matter of (i) time and (ii) 
 chance. It may be traced back to the system of
 margins in derivatives markets.
- Stress-testing is a matter of information. We 
 evaluate the effect of a set of scenarios on a
 portfolio and the amount of capital.
- Notice ALM and risk management have in common 
 scenarios. Integration of the two (that we call
 interest rate risk management requires to work on
 this intersection)
7Hedging by swaps
- Classical immunisation was non-stochastic and it 
 was not based on a model of the banking system.
- Jarrow and Van Deventer (1998) devised a model 
 with stochastic interest rates, market
 segmentation and limited competition among banks,
 so that the interest rate spread between the risk
 free rate and the rate of deposits was allowed to
 be positive.
- In this case the present value of the spread adds 
 to the value of deposits, and may be read as the
 net present value of a swap contract. In this
 case hedging would require shorting this swap,
 and perfect mathching would not work.
8Extensions
- Return from maturity transformation. Assume 
 deposits are invested in long term (risk free)
 assets. Then, the value of deposit would turn
 into a CMS and would exploit a convexity
 adjustment bonus.
- Swaptions. One could conceive contingent hedging, 
 triggered by market conditions, in which case one
 should resort to receiver swaptions (put options
 on swaps)
9Basis risk
- In the standard model, it is often assumed that 
 deposits are perfectly correlated with the risk
 free rate, so that the hedging resolves in a
 replication of a swap contract by positions in
 the risk-free bond market.
- Basis risk. An extension that seems mandatory in 
 face of the recent banking crisis is to allow for
 other elements determining the wedge between risk
 free rates and rates on deposits. Following the
 same line of Jarrow and Van Deventer model one
 should include other market variables, first of
 all an indicator of the credit worthiness of the
 banking system as a whole.
- A possible financial engineering could be buying 
 insurance against the increase in CDS spread in
 the banking system, or making the swap contract
 hybrid.
10Quantity risk
- What makes demand deposit hedging quite peculiar 
 is quantity risk. Since deposits can be withdrawn
 with no notice, returns on assets and liabilities
 may fluctuate not only because of changes in
 market rates, but also changes in the amount of
 deposits on which this spread is computed. For
 this reason the swap contract in the Jarrow-Van
 Deventer approach has a stochastic amortizing
 structure.
- The problem is to model i) the distribution of 
 demand deposit in each period of time ii) the
 dependence structure between the amount of
 deposits and interest rates.
- In a sense, it is the old problem of liquidity 
 trading vs informed trading.
11Modelling deposit demand
- Structural models these models should be based 
 on the micro-economic structure of demand
 deposits at the individual level, followed by
 aggregation at the industry level
- Reduced form models these models should be based 
 on statistical regularities observed on the
 distribution and the dynamics of the aggregate
 demand deposits.
- Notice. This distinction is new, but is motivated 
 by the similarity between quantity risk and
 credit risk
12Structural models Example from the literature
- A structural model coming from the academia is 
 Nystrom (2008).
- Each individual demands transaction balances and 
 demand deposits as a function of
- i) income dynamics 
- ii) a target deposits/income ratio 
- The key point is that the target ratio is a 
 function of the difference between the deposit
 rate and a reservation (strike) price.
- Aggregation is obtained by averaging income 
 dynamics and dispersion around average behavior
 is modelled by selecting a distribution function
 of the strikes.
13Structural models Example from the industry
- A major Italian bank is pursuing a policy of 
 buying and selling its bonds at the same credit
 spread as the placement day. This way, the bonds
 issued by the bank are substitute of deposits
 from the point of view of customers.
- In the evaluation of this policy, the bank relies 
 on a behavioral model according to which
-  the customer decision to sell and buy the bond 
 is triggered by the difference between the
 current spreads prevailing on the banking system
 and the original spread (a real option model,
 like that of Nystrom)
- customers are assumed to be sluggish to move in 
 and out, because of irrational exercize behavior
 or monitoring costs. This is modelled by
 multiplying the spread difference times a
 participation rate lower than one.
14Reduced form models
- Specification of deposits demand is based on 
 statistical/econometric analysis.
- Typical specification 
- Linear/log-linear relationship with the interest 
 rate dynamics
- Autoregressive dynamics 
- What is missing would be interesting to include 
 a liquidity crisis scenario using the same
 technology applied by Cetin, Jarrow Protter
 (2004) to market liquidity risk.
15A copula based proposal
- A natural idea stemming from the similarity 
 between the demand deposit problem and large
 credit portfolio models is to resort to copulas.
- Copula functions could provide 
- Flexible specification of the marginal 
 distributions of deposits and interest rates
- Flexible representation of the dependence 
 structure between deposits demand and interest
 rates
- Flexible representation of deposits dynamics
16A copula-based structural model
- Assume a homogeneous model in which all agents 
 have the same deposit income ratio and same
 correlation with an unobserved common factor.
- Possible specifications are Vasicek model 
 (gaussian dependence) or Schonbucher (Archimedean
 dependence)
- These specifications would yield the probability 
 law of the deposit income ratio that could be
 used as the marginal distribution for deposits.
- The dynamics would be finally recovered by 
 applying the dynamics of income to the ratio.
- Notice this is conjecture. Everything should be 
 proved in a model built on micro-foundations, and
 probably different specifications would come out
17A copula based algorithm
- Estimate the dependence structure between deposit 
 volumes and interest rates (moment matching, IFM,
 canonical ML) and select the best fit copula
- Notice. The conditional distribution of deposit 
 volumes is the partial derivative of the copula
 function.
- Specify the marginal distribution of deposit 
 volumes (the structural model above or a non
 parametric representation).
- Specify the marginal distribution of interest 
 rates the distribution may be defined on the
 basis of historical data and/or scenarios (we
 suggest a bayesian approach).
18A liquidity model
- Assume that an obligor issues a long term bond 
 for an amount D0. The bond expires in N periods.
- The curve of the obligor is v(t0,ti) 
- In every period, the obligors receives net cash 
 flows Si, and it pays interest rates on debt Ri
 1/v(ti,ti1)  1.
- The difference between Ri Di 1 and Si increases 
 or decreases the amount of debt Di.
19Market liquidity
- Market liquidity impact on prices 
- Difficult to compare prices on different markets 
 (best execution)
- Illiquid markets reduce transparency of prices 
- Illiquid markets ? Noisy information
20Market liquidity measures
Risk Measure Dimension
Breadth Bid-ask spread Price
Depth Slippage Quantity
Resiliency Autocorrelation Time 
 21Market liquidity measures
- Bid-ask spread difference btw the price at which 
 it is possible to buy or sell a security (does
 not take into account the dimension of
 transaction)
- Slippage difference btw execution cost of a deal 
 and bid-ask average (mid price). Takes into
 account dimension. Bigger orders eat a bigger
 share of the order book.
- Resiliency time needed to reconstruct the book 
 once that a big order has eaten part of it
22Slippage example 
 23Prudent valuation and AVA
- The most recent regulatory innovation is the 
 conservative analysis of pricing.
- Under the new accounting standard, banks are 
 required to evaluate at fair value the trading
 book. So every time that losses are
 marked-to-market, they are deducted from the
 economic balance.
- The new regulation requires that capital is 
 allocated against wrong valuation of the trading
 book. The difference between fair value and
 conservative valuation is called AVA (additional
 valuation adjustment) and capital is allocated to
 hedge this evaluation risk.