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Inferences for Heteroscedastic Location-Scale Time Series Models with Application to VaR and ES Estimation : 이분산성 Location-Scale 시계열 모형에서의 추론과 VaR와 ES 추정을 위한 응용

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dc.contributor.advisor이상열-
dc.contributor.authorMinjo Kim-
dc.date.accessioned2017-07-14T00:32:00Z-
dc.date.available2017-07-14T00:32:00Z-
dc.date.issued2016-08-
dc.identifier.other000000136647-
dc.identifier.urihttps://hdl.handle.net/10371/121162-
dc.description학위논문 (박사)-- 서울대학교 대학원 : 통계학과, 2016. 8. 이상열.-
dc.description.abstractThis thesis first considers nonlinear expectile regression models to estimate conditional expected shortfall (ES) and value-at-risk (VaR). In the literature, the asymmetric least squares (ALS) regression method has been widely used
to estimate expectile regression models. However, no literatures rigorously investigated the asymptotic properties of the ALS estimates in nonlinear models with heteroscadasticity. Motivated by this aspect, this thesis studies the consistency and asymptotic normality of the ALS estimates and conditional VaR and ES in those models. To illustrate, a simulation study and real data analysis are conducted. Secondly, this thesis studies the asymptotic properties of a class of conditionally heteroscedastic location-scale time series
models with innovations following a generalized asymmetric Student-t distribution (ASTD) or asymmetric exponential power distribution (AEPD). We
show the consistency and asymptotic normality of the conditional maximum likelihood estimator (MLE) of model parameters under certain regularity conditions, and then, based on the MLE, we estimate the conditional VaR
and ES using their closed forms induced from the model. Their performance is compared with that of conditional autoregressive value-at-risk (CAViaR) and expectile (CARE) methods. Meanwhile, one should be convinced of the model adequacy in advance of the VaR and ES calculation. For this task, we develop an entropy-based goodness of fit test based on residuals and a
residual-based cumulative sum (CUSUM) test to conduct a parameter change test. To handle the former, we also investigate the asymptotic behavior of the residual empirical process. For illustration, a simulation study and real data analysis are provided.
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dc.description.tableofcontentsChapter 1 Introduction 1

Chapter 2 Reviews 8
2.1 Maximum entropy test 8
2.2 Cusum test 10

Chapter 3 Nonlinear Expectile Regression with Application to Valueat- Risk and Expected Shortfall Estimation 13
3.1 Asymptotic properties of ALS estimates 13
3.2 Simulation Study and Real Data Analysis 23
3.2.1 Simulation Study 23
3.2.2 Real Data Analysis 26
3.3 Proofs 31

Chapter 4 VaR and ES estimation using asymmetric Students distribution (ASTD) and asymmetric error power distribution (AEPD) 53
4.1 Asymptotic properties of MLE 53
4.1.1 ASTD 54
4.1.2 AEPD 61
4.2 VaR and ES estimation 65
4.3 Test for model adequacy 67
4.3.1 Model check test for location-scale models 68
4.3.2 Change point test 72
4.4 Simulation and real data analysis 74
4.4.1 Simulation 74
4.4.2 Real data analysis 76
4.5 Proofs 79

Bibliography 149

Abstract (in Korean) 158
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dc.formatapplication/pdf-
dc.format.extent1287836 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjectExpectile regression-
dc.subjectexpected shortfall (ES)-
dc.subjectvalue-at-risk (VaR)-
dc.subjectasymmetric least squares regression-
dc.subjectconsistency-
dc.subjectasymptotic normality-
dc.subjectconditionally heteroscedastic location-scale time series models-
dc.subjectasymmetric Student-t distribution (ASTD)-
dc.subjectasymmetric exponential power distribution (AEPD)-
dc.subjectCAViaR and CARE methods-
dc.subjectgoodness of fit test-
dc.subjectentropy-based test-
dc.subjectresidual empirical process-
dc.subjectparameter change test-
dc.subjectresidual-based CUSUM test.-
dc.subject.ddc519-
dc.titleInferences for Heteroscedastic Location-Scale Time Series Models with Application to VaR and ES Estimation-
dc.title.alternative이분산성 Location-Scale 시계열 모형에서의 추론과 VaR와 ES 추정을 위한 응용-
dc.typeThesis-
dc.contributor.AlternativeAuthor김민조-
dc.description.degreeDoctor-
dc.citation.pages159-
dc.contributor.affiliation자연과학대학 통계학과-
dc.date.awarded2016-08-
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