000 04226cam a2200373 i 4500
020 _a9781119313564
_q(electronic book)
020 _a1119313562
_q(electronic book)
020 _a9781119313489
_q(electronic book)
020 _a1119313481
_q(electronic book)
020 _a9781119313472
_q(electronic book)
020 _a1119313473
_q(electronic book)
020 _z9781119313571
_q(hardcover)
040 _cCUS
072 7 _aBUS
_x027000
_2bisacsh
100 1 _aFrancq, Christian,
_eauthor.
240 1 0 _aModèles GARCH.
_lEnglish
245 1 0 _aGARCH models :
_bstructure, statistical inference and financial applications /
_cChristian Francq, Jean-Michel Zakoian.
260 _aSecond edition.
260 1 _aHoboken, NJ :
_bJohn Wiley & Sons,
_c2019.
260 4 _c©2019
300 _a1 online resource (xvi, 487 pages)
505 0 _aCover; Title Page; Copyright; Contents; Chapter 1 Classical Time Series Models and Financial Series; 1.1 Stationary Processes; 1.2 ARMA and ARIMA Models; 1.3 Financial Series; 1.4 Random Variance Models; 1.5 Bibliographical Notes; 1.6 Exercises; Part I Univariate GARCH Models; Chapter 2 GARCH(p, q) Processes; 2.1 Definitions and Representations; 2.2 Stationarity Study; 2.2.1 The GARCH(1,1) Case; 2.2.2 The General Case; 2.3 ARCH(∞) Representation*; 2.3.1 Existence Conditions; 2.3.2 ARCH(∞) Representation of a GARCH; 2.3.3 Long-Memory ARCH; 2.4 Properties of the Marginal Distribution
505 8 _a2.4.1 Even-Order Moments2.4.2 Kurtosis; 2.5 Autocovariances of the Squares of a GARCH; 2.5.1 Positivity of the Autocovariances; 2.5.2 The Autocovariances Do Not Always Decrease; 2.5.3 Explicit Computation of the Autocovariances of the Squares; 2.6 Theoretical Predictions; 2.7 Bibliographical Notes; 2.8 Exercises; Chapter 3 Mixing*; 3.1 Markov Chains with Continuous State Space; 3.2 Mixing Properties of GARCH Processes; 3.3 Bibliographical Notes; 3.4 Exercises; Chapter 4 Alternative Models for the Conditional Variance; 4.1 Stochastic Recurrence Equation (SRE); 4.2 Exponential GARCH Model
505 8 _a4.3 Log-GARCH Model4.3.1 Stationarity of the Extended Log-GARCH Model; 4.3.2 Existence of Moments and Log-Moments; 4.3.3 Relations with the EGARCH Model; 4.4 Threshold GARCH Model; 4.5 Asymmetric Power GARCH Model; 4.6 Other Asymmetric GARCH Models; 4.7 A GARCH Model with Contemporaneous Conditional Asymmetry; 4.8 Empirical Comparisons of Asymmetric GARCH Formulations; 4.9 Models Incorporating External Information; 4.10 Models Based on the Score: GAS and Beta-t-(E)GARCH; 4.11 GARCH-type Models for Observations Other Than Returns; 4.12 Complementary Bibliographical Notes; 4.13 Exercises
505 8 _aPart II Statistical InferenceChapter 5 Identification; 5.1 Autocorrelation Check for White Noise; 5.1.1 Behaviour of the Sample Autocorrelations of a GARCH Process; 5.1.2 Portmanteau Tests; 5.1.3 Sample Partial Autocorrelations of a GARCH; 5.1.4 Numerical Illustrations; 5.2 Identifying the ARMA Orders of an ARMA-GARCH; 5.2.1 Sample Autocorrelations of an ARMA-GARCH; 5.2.2 Sample Autocorrelations of an ARMA-GARCH Process When the Noise is Not Symmetrically Distributed; 5.2.3 Identifying the Orders (P, Q); 5.3 Identifying the GARCH Orders of an ARMA-GARCH Model
505 8 _a5.3.1 Corner Method in the GARCH Case5.3.2 Applications; 5.4 Lagrange Multiplier Test for Conditional Homoscedasticity; 5.4.1 General Form of the LM Test; 5.4.2 LM Test for Conditional Homoscedasticity; 5.5 Application to Real Series; 5.6 Bibliographical Notes; 5.7 Exercises; Chapter 6 Estimating ARCH Models by Least Squares; 6.1 Estimation of ARCH(q) models by Ordinary Least Squares; 6.2 Estimation of ARCH(q) Models by Feasible Generalised Least Squares; 6.3 Estimation by Constrained Ordinary Least Squares; 6.3.1 Properties of the Constrained OLS Estimator
650 0 _aFinance
_xMathematical models.
650 0 _aInvestments
_xMathematical models.
650 7 _aBUSINESS & ECONOMICS
_xFinance.
_2bisacsh
650 7 _aFinance
_xMathematical models.
_2fast
_0(OCoLC)fst00924398
650 7 _aInvestments
_xMathematical models.
_2fast
_0(OCoLC)fst00978277
700 1 _aZakoian, Jean-Michel,
_eauthor.
856 4 0 _uhttps://doi.org/10.1002/9781119313472
_zWiley Online Library
942 _cEBK
999 _c208837
_d208837