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Financial econometric modeling / Stan Hurn, Vance L. Martin, Peter C.B. Phillips, and Jun Yu.

By: Hurn, Stan [author.].
Material type: materialTypeLabelBookPublisher: New York, NY : Oxford University Press, [2021]Description: xvii, 614 p. : ill. ; 24 cm.Content type: text Media type: unmediated Carrier type: volumeISBN: 9780190857066; 9780190857127.Subject(s): Finance -- Econometric modelsDDC classification: 332.015195 Online resources: Publisher Description and Content Page
Contents:
I: Fundamentals 1. Prices and Returns 1.1 What is Financial Econometrics? 1.2 Financial Assets 1.3 Equity Prices and Returns 1.4 Stock Market Indices 1.5 Bond Yields 1.6 Exercises 2. Financial Data 2.1irst Look at the Data 2.2 Summary Statistics 2.3 Percentiles and Value at Risk 2.4 The Efficient Market Hypothesis 2.5 Exercises 3. Linear Regression 3.1 The Capital Asset Pricing Model 3.2 Multi-factor CAPM 3.3 Properties of Ordinary Least Squares 3.4 Diagnostics 3.5 Measuring Portfolio Performance 3.6 Minimum Variance Portfolios 3.7 Event Analysis 3.8 Exercises 4. Stationary Dynamics 4.1 Stationarity 4.2 Univariate Time Series Models 4.3 Autocorrelation and Partial Autocorrelations 4.4 Mean Aversion and Reversion in Returns 4.5 Vector Autoregressive Models 4.6 Analysing VARs 4.7 Diebold-Yilmaz Spillover Index 4.8 Exercises 5. Nonstationarity 5.1 The RandomWalk with Drift 5.2 Characteristics of Financial Data 5.3 Dickey-Fuller Methods and Unit Root Testing 5.4 Beyond the Simple Unit Root Framework 5.5 Asset Price Bubbles 5.6 Exercises 6. Cointegration 6.1 The Present Value Model and Cointegration 6.2 Vector Error Correction Models 6.3 Estimation 6.4 Cointegration Testing 6.5 Parameter Testing 6.6 Cointegration and the Gordon Model 6.7 Cointegration and the Yield Curve 6.8 Exercises 7. Forecasting 7.1 Types of Forecasts 7.2 Forecasting Univariate Time Series Models 7.3 Forecasting Multivariate Time Series Models 7.4 Combining Forecasts. 7.5 Forecast Evaluation Statistics 7.6 Evaluating the Density of Forecast Errors 7.7 Regression Model Forecasts 7.8 Predicting the Equity Premium 7.9 Stochastic Simulation of Value at Risk 7.10 Exercises II. Methods 8. Instrumental Variables 8.1 The Exogeneity Assumption 8.2 Estimating the Risk-Return Tradeoff 8.3 The General Instrumental Variables Estimator 8.4 Testing for Endogeneity 8.5 Weak Instruments 8.6 Consumption CAPM 8.7 Endogeneity and Corporate Finance 8.8 Exercises 9. Generalised Method of Moments 9.1 Single Parameter Models 9.2 Multiple Parameter Models 9.3 Over-Identified Models 9.4 Estimation 9.5 Properties of the GMM Estimator 9.6 Testing 9.7 Consumption CAPM Revisited 9.8 The CKLS Model of Interest Rates 9.9 Exercises 10. Maximum Likelihood 10.1 Distributions in Finance 10.2 Estimation by Maximum Likelihood 10.3 Applications 10.4 Numerical Methods 10.5 Properties 10.6 Quasi Maximum Likelihood Estimation 10.7 Testing 10.8 Exercises 11. Panel Data Models 11.1 Types of Panel Data 11.2 Reasons for Using Panel Data 11.3 Two Introductory Panel Models 11.4 Fixed and Random Effects Panel Models 11.5 Dynamic Panel Models 11.6 Nonstationary Panel Models 11.7 Exercises 12. Latent Factor Models 12.1 Motivation 12.2 Principal Components 12.3atent Factor CAPM 12.4 Dynamic Factor Models: the Kalman Filter 12.5arametric Approach to Factors 12.6 Stochastic Volatility 12.7 Exercises III: Topics 13. Univariate GARCH Models 13.1 Volatility Clustering. 13.2 The GARCH Model 13.3 Asymmetric Volatility Effects 13.4 Forecasting 13.5 The Risk-Return Tradeoff. 13.6 Heatwaves and Meteor Showers 13.7 Exercises 14. Multivariate GARCH Models 14.1 Motivation 14.2 Early Covariance Estimators 14.3 The BEKK Model 14.4 The DCC Model 14.5 Optimal Hedge Ratios 14.6 Capital Ratios and Financial Crises 14.7 Exercises 15. Realised Variance and Covariance 15.1 High Frequency Data 15.2 Realised Variance 15.3 Integrated Variance 15.4 Microstructure Noise 15.5 Bipower Variation and Jumps 15.6 Forecasting 15.7 The Realised GARCH Model 15.8 Realised Covariance 15.9 Exercises 16. Microstructure Models 16.1 Characteristics of High Frequency Data 16.2 Limit Order Book 16.3 Bid Ask Bounce 16.4 Information Content of Trades 16.5 Modelling Price Movements in Trades 16.6 Modelling Durations 16.7 Modelling Volatility in Transactions Time 16.8 Exercises 17. Options 17.1 Option Pricing Basics. 17.2 The Black-Scholes Option Price Model 17.3irst Look at Options Data 17.4 Estimating the Black-Scholes Model 17.5 Testing the Black-Scholes Model 17.6 Option Pricing and GARCH Volatility 17.7 The Melick-Thomas Option Price Model 17.8 Nonlinear Option Pricing. 17.9 Using Options to Estimate GARCH Models 17.10 Exercises 18. Extreme Values and Copulas 18.1 Motivation. 18.2 Evidence of Heavy Tails 18.3 Extreme Value Theory 18.4 Modelling Dependence using Copulas 18.5 Properties of Copulas 18.6 Estimating Copula Models 18.7 MGARCH Model Using Copulas 18.8 Exercises 19. Concluding Remarks A. Mathematical Preliminaries A.1 Summation Notation A.2 Expectations Operator A.3 Differentiation A.4 Taylor Series Expansions A.5 Matrix Algebra A.6 Transposition ofatrix A.7 Symmetric Matrix B. Properties of Estimators B.1 Finite Sample Properties B.2 Asymptotic Properties C. Linear Regression Model in Matrix Notation D. Numerical Optimisation E. Simulating Copulas Author index Subject index
Summary: "An introduction to the field of financial econometrics, focusing on providing an introduction for undergraduate and postgraduate students whose math skills may not be at the most advanced level, but who need this material to pursue careers in research and the financial industry"-- Provided by publisher.
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Item type Current location Call number Copy number Status Date due
Monograph Monograph Indian Institute of Management Udaipur
A5/1
332.015195 HS (Browse shelf) 1 Checked out 06/16/2024

Includes bibliographical references (ppages 593-605) and indexes.

I: Fundamentals
1. Prices and Returns
1.1 What is Financial Econometrics?
1.2 Financial Assets
1.3 Equity Prices and Returns
1.4 Stock Market Indices
1.5 Bond Yields
1.6 Exercises
2. Financial Data
2.1irst Look at the Data
2.2 Summary Statistics
2.3 Percentiles and Value at Risk
2.4 The Efficient Market Hypothesis
2.5 Exercises
3. Linear Regression
3.1 The Capital Asset Pricing Model
3.2 Multi-factor CAPM
3.3 Properties of Ordinary Least Squares
3.4 Diagnostics
3.5 Measuring Portfolio Performance
3.6 Minimum Variance Portfolios
3.7 Event Analysis
3.8 Exercises
4. Stationary Dynamics
4.1 Stationarity
4.2 Univariate Time Series Models
4.3 Autocorrelation and Partial Autocorrelations
4.4 Mean Aversion and Reversion in Returns
4.5 Vector Autoregressive Models
4.6 Analysing VARs
4.7 Diebold-Yilmaz Spillover Index
4.8 Exercises
5. Nonstationarity
5.1 The RandomWalk with Drift
5.2 Characteristics of Financial Data
5.3 Dickey-Fuller Methods and Unit Root Testing
5.4 Beyond the Simple Unit Root Framework
5.5 Asset Price Bubbles
5.6 Exercises
6. Cointegration
6.1 The Present Value Model and Cointegration
6.2 Vector Error Correction Models
6.3 Estimation
6.4 Cointegration Testing
6.5 Parameter Testing
6.6 Cointegration and the Gordon Model
6.7 Cointegration and the Yield Curve
6.8 Exercises
7. Forecasting
7.1 Types of Forecasts
7.2 Forecasting Univariate Time Series Models
7.3 Forecasting Multivariate Time Series Models
7.4 Combining Forecasts.
7.5 Forecast Evaluation Statistics
7.6 Evaluating the Density of Forecast Errors
7.7 Regression Model Forecasts
7.8 Predicting the Equity Premium
7.9 Stochastic Simulation of Value at Risk
7.10 Exercises
II. Methods
8. Instrumental Variables
8.1 The Exogeneity Assumption
8.2 Estimating the Risk-Return Tradeoff
8.3 The General Instrumental Variables Estimator
8.4 Testing for Endogeneity
8.5 Weak Instruments
8.6 Consumption CAPM
8.7 Endogeneity and Corporate Finance
8.8 Exercises
9. Generalised Method of Moments
9.1 Single Parameter Models
9.2 Multiple Parameter Models
9.3 Over-Identified Models
9.4 Estimation
9.5 Properties of the GMM Estimator
9.6 Testing
9.7 Consumption CAPM Revisited
9.8 The CKLS Model of Interest Rates
9.9 Exercises
10. Maximum Likelihood
10.1 Distributions in Finance
10.2 Estimation by Maximum Likelihood
10.3 Applications
10.4 Numerical Methods
10.5 Properties
10.6 Quasi Maximum Likelihood Estimation
10.7 Testing
10.8 Exercises
11. Panel Data Models
11.1 Types of Panel Data
11.2 Reasons for Using Panel Data
11.3 Two Introductory Panel Models
11.4 Fixed and Random Effects Panel Models
11.5 Dynamic Panel Models
11.6 Nonstationary Panel Models
11.7 Exercises
12. Latent Factor Models
12.1 Motivation
12.2 Principal Components
12.3atent Factor CAPM
12.4 Dynamic Factor Models: the Kalman Filter
12.5arametric Approach to Factors
12.6 Stochastic Volatility
12.7 Exercises
III: Topics
13. Univariate GARCH Models
13.1 Volatility Clustering.
13.2 The GARCH Model
13.3 Asymmetric Volatility Effects
13.4 Forecasting
13.5 The Risk-Return Tradeoff.
13.6 Heatwaves and Meteor Showers
13.7 Exercises
14. Multivariate GARCH Models
14.1 Motivation
14.2 Early Covariance Estimators
14.3 The BEKK Model
14.4 The DCC Model
14.5 Optimal Hedge Ratios
14.6 Capital Ratios and Financial Crises
14.7 Exercises
15. Realised Variance and Covariance
15.1 High Frequency Data
15.2 Realised Variance
15.3 Integrated Variance
15.4 Microstructure Noise
15.5 Bipower Variation and Jumps
15.6 Forecasting
15.7 The Realised GARCH Model
15.8 Realised Covariance
15.9 Exercises
16. Microstructure Models
16.1 Characteristics of High Frequency Data
16.2 Limit Order Book
16.3 Bid Ask Bounce
16.4 Information Content of Trades
16.5 Modelling Price Movements in Trades
16.6 Modelling Durations
16.7 Modelling Volatility in Transactions Time
16.8 Exercises
17. Options
17.1 Option Pricing Basics.
17.2 The Black-Scholes Option Price Model
17.3irst Look at Options Data
17.4 Estimating the Black-Scholes Model
17.5 Testing the Black-Scholes Model
17.6 Option Pricing and GARCH Volatility
17.7 The Melick-Thomas Option Price Model
17.8 Nonlinear Option Pricing.
17.9 Using Options to Estimate GARCH Models
17.10 Exercises
18. Extreme Values and Copulas
18.1 Motivation.
18.2 Evidence of Heavy Tails
18.3 Extreme Value Theory
18.4 Modelling Dependence using Copulas
18.5 Properties of Copulas
18.6 Estimating Copula Models
18.7 MGARCH Model Using Copulas
18.8 Exercises
19. Concluding Remarks
A. Mathematical Preliminaries
A.1 Summation Notation
A.2 Expectations Operator
A.3 Differentiation
A.4 Taylor Series Expansions
A.5 Matrix Algebra
A.6 Transposition ofatrix
A.7 Symmetric Matrix
B. Properties of Estimators
B.1 Finite Sample Properties
B.2 Asymptotic Properties
C. Linear Regression Model in Matrix Notation
D. Numerical Optimisation
E. Simulating Copulas
Author index
Subject index

"An introduction to the field of financial econometrics, focusing on providing an introduction for undergraduate and postgraduate students whose math skills may not be at the most advanced level, but who need this material to pursue careers in research and the financial industry"-- Provided by publisher.

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