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FinancialRiskManagementHaibinXieSchoolofBankingandFinance,UniversityofInternationalBusinessandEconomicsOffice:Boxue708TelxtremeValueTheoryEVTandVaR1BaselRulesforBacktesting2ExtremeValueTheoryandVaRBaselRulesforBacktestingTheBaselCommitteeputinplaceaframeworkbasedonthedailybacktestingofVaR.Havinguptofourexceptionsisacceptable,whichdefinesagreenzone.Ifthenumberofexceptionsisfiveormore,thebankfallsintoayelloworredzoneandincursaprogressivepenalty,whichisenforcedwithahighercapitalcharge.Roughly,thecapitalchargeisexpressedasamultiplierofthe10-dayVaRatthe99%levelofconfidence.Thenormalmultiplierkis3.Afteranincursionintotheyellowzone,themultiplicativefactor,k,isincreasedfrom3to4,orplusfactordescribedintheTableinthenextslideTheBaselPenaltyZonesAppendix1WhynormalmultiplierK=3ByChebyshevinequality:P(|x-μ|>λσ)≤1/λ2.Supposesymmetricdistribution,wegetP(x-μ<-λσ)≤1/2λ2,whichdeterminestheMaxofVaR,VaRmx=λσ.Lettheconfidencelevelbe0.99,weget1/2λ2=0.01,fromwhich,wegetλ=7.071.SupposetheusualVaRiscalculatedundertheassumptionofnormaldistribution,wegetVaRN=2.326σ.Thus,weneedamultiplierifnormaldistributionisnotsatisfied.Themultiplier,K=λσ/2.36σ=3.03Appendix2VaRParameters:TomeasuretheVaR,wefirstneedtodefinetwoquantitativeparameters:theconfidencelevelandthehorizonConfidenceLevel:Thehighertheconfidencelevel,thegreatertheVaRmeasure!Itisnotclear,however,atwhatconfidencelevelshouldonestopHorizon:Thelongerthehorizon,thegreatertheVaRmeasure.Itisnotclear,however,atwhathorizonshouldonestop.VaRParameters:SomerulesforconfidencelevelandhorizonselectionThechoiceoftheconfidencelevelandhorizondependontheintendedusefortheriskmeasures.Forbacktestingpurposes,alowconfidencelevelandashorthorizonisnecessary;forcapitaladequacypurposes,ahighconfidencelevelandalonghorizonarerequired.Inpractice,theseconflictingobjectivescanbeaccommodatedbyacomplexrule,asisthecasefortheBaselmarketriskchargeExtremeValueTheoryVaRisallaboutthetailbehavioroflossdistribution,A.K.A,weareonlyinterestedinsomeextremevalueofadistribution.D.V.GnedenkoandEVT7Бори́сВлади́мировичГнеде́нко;January1,1912–December27,1995GeneralizedParetoDistributionThishastwoparametersx(theshapeparameter)andb(thescaleparameter)Bydefinition,weexpectbtobepositive.ThecumulativedistributionisGeneralizedParetoDistributionWhenunderlingdistributionofvisnormal,wehave.increasesasthetailofvgetsheavierFormostfinancialdata,in[0.1,0.4]Thek-thmomentofunderlingr.v.isfiniteifMaximumLikelihoodEstimatorTheobservations,xi,aresortedindescendingorder.SupposethattherearenuobservationsgreaterthanuWechoosexandbtomaximizeMaximumLikelihoodEstimatorConstraintsxandbaresupposedtobepositive,althoughxnotrequiredtobepositivebythedefinitionofGPD.Negativexindicates:LightertailoftheunderlingdistributioncomparedwithnormalInappropriatevalueofuischosenFromparameterstotailofvBydefinition:ThereforeAgainsemi-parametricWhypowerlaw?ExtremeValueTheory——VaR

ExpectedShortFallBlockMaximaModelsDistributionofthelargestvariableAsngoestoinfinity,andthesupportofris[-inf,inf]WeneedtoblowupthevariablewithanormalizationThelimitingdistributionisGeneralizedExtremeValueDistributionBlockMaximaModelsGeneralizedExtremeValueDistributionVaRunderGEVdistributionAnythingwrong?BlockMaximaModelsisthedistributionofthelargestvariablenotthevariableitself.The(1-q)thquantileofrisequivalentto(1-q)^nthquantileofr(n)ThecorrectVaRis18BlockMaximaModelsEstimationBydefinitionofF*,weonlyhaveONEobservationtoestimatethreeparametersWay-outApplyGEVdistributiontomaximumreturnswithineachblockMLESelectionofnGEVisalimitproperty,naslargeaspossibleForgivenT,g=T/nwheregistheeffectivenumberofobservationsforparameterestimationBalance19MultipleperiodVaRUnderEVTthemultipleperiodVaRisnotjustsquarerootoftimehorizon.Whysquarerootoftimehorizon?Underpowerlaw Fellershowsthattailriskisapproximatelyadditive,therefore:Itiseasytoseethat 20CoherentRiskMeasures1Monotonicity:ifX1<X2,2Translationinvariance:3Homogeneity:4Subadditivity:ExerciseBasedona90%confidencelevel,howmanyexceptionsinbacktestingaVaRwouldbeexpectedovera250-daytradingyear?a.10b.15c.25d.50Alarge,internationalbankhasatradingbookwhosesizedependsontheopportunitiesperceivedbyitstraders.Themarketriskmanagerestimatestheone-dayVaR,atthe95%confidencelevel,tobe$50million.Youareaskedtobeevaluatehowgoodajobthemanagerisdoinginestimatingtheone-dayVaR.Whichofthefollowingwouldbethemostconvincingevidencethatthemanagerisdoingapoorjob,assumingthatthelossesareidenticalandindependentlydistributed(i.i.d)?a.Overthepast250days,thereareeightexceptionsb.Overthepast250days,thelargestlossis$500millionc.Overthepast250days,themeanlossis$60milliond.Overthepast250days,thereisnoexceptionWhichofthefollowingproceduresisessentialinvalidatingtheVaRestimates?a.stress-testingb.scenarioanalysisc.backtestingd.Onceapprovedbyregulators,nofurthervalidationisrequiredTheMarketRiskAmendmenttotheBaselCapitalAccorddefinestheyellowzoneasthefollowingrangeofexceptionsoutof250observationsa.3to7b.5to9c.6to9d.6to10Extremevaluetheoryprovidesvaluableinsightaboutthetailsofreturndistributions.WhichofthefollowingstatementsaboutEVTanditsapplicationsisincorrect?a.Thepeaksoverthreshold,whichthendeterminesthenumberofobservedexceedances;thethresholdmustbesufficientlyhightoapplythetheory,butsufficientlylowsothatthenumberofobservedexceedancesisareliableestimate.b.EVThighlightsthatdistributionsjustifiedbycentrallimittheoremcanbeusedforextremevalueestimationc.EVTestimatesaresubjecttoconsiderablemodelrisk,andEVTresultsareofenverysensitivetothepreciseassumptionsmaded.Becauseobserveddatainthetailsofdistributionislimited,EVestimatescanbeverysensitivetosmallsampleeffectsandotherbiasesWhichofthefollowingstatementsregardingextremevaluetheoryisincorrect?a.IncontrasttoconventionalapproachesforestimatingVaR,EVTconsidersonlythetailbehaviorofthedistributionb.ConversationalapproachesforestimatingVaRthatassumethatthedistributionofretur

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