Hardcover: 576 pages  
Publisher: Wiley (December 11, 2006)  
Language: English  
Book Description 
A comprehensive guide to financial econometrics  
Financial econometrics is a quest for models that describe financial time series such as prices, returns, interest rates, and exchange rates. In Financial Econometrics, readers will be introduced to this growing discipline and the concepts and theories associated with it, including background material on probability theory and statistics. The experienced author team uses real-world data where possible and brings in the results of published research provided by investment banking firms and journals. Financial Econometrics clearly explains the techniques presented and provides illustrative examples for the topics discussed. 
Svetlozar T. Rachev, PhD (Karlsruhe, Germany) is currently Chair-Professor at the University of Karlsruhe. Stefan Mittnik, PhD (Munich, Germany) is Professor of Financial Econometrics at the University of Munich. Frank J. Fabozzi, PhD, CFA, CFP (New Hope, PA) is an adjunct professor of Finance at Yale University’s School of Management. Sergio M. Focardi (Paris, France) is a founding partner of the Paris-based consulting firm The Intertek Group. Teo Jasic, PhD, (Frankfurt, Germany) is a senior manager with a leading international management consultancy firm in Frankfurt. 
From the Back Cover 
Financial econometrics combines mathematical and statistical theory and techniques to understand and solve problems in financial economics. Modeling and forecasting financial time series, such as prices, returns, interest rates, financial ratios, and defaults, are important parts of this field. 
In Financial Econometrics, you'll be introduced to this growing discipline and the concepts associated with it—from background material on probability theory and statistics to information regarding the properties of specific models and their estimation procedures. 
With this book as your guide, you'll become familiar with: 
Autoregressive conditional heteroskedasticity (ARCH) and GARCH modeling  
Principal components analysis (PCA) and factor analysis  
Stable processes and ARMA and GARCH models with fat-tailed errors  
Robust estimation methods  
Vector autoregressive and cointegrated processes, including advanced estimation methods for cointegrated systems  
And much more  
The experienced author team of Svetlozar Rachev, Stefan Mittnik, Frank Fabozzi, Sergio Focardi, and Teo Jasic not only presents you with an abundant amount of information on financial econometrics, but they also walk you through a wide array of examples to solidify your understanding of the issues discussed. 
Filled with in-depth insights and expert advice, Financial Econometrics provides comprehensive coverage of this discipline and clear explanations of how the models associated with it fit into today's investment management process. 
  
 
Contents 
Preface xi 
Abbreviations and Acronyms xv 
About the Authors xix 
CHAPTER 1 
Financial Econometrics: Scope and Methods 1 
The Data Generating Process 3 
Financial Econometrics at Work 7 
Time Horizon of Models 10 
Applications 12 
Appendix: Investment Management Process 16 
Concepts Explained in this Chapter (in order of presentation) 22 
CHAPTER 2 
Review of Probability and Statistics 25 
Concepts of Probability 25 
Principles of Estimation 58 
Bayesian Modeling 69 
Appendix A: Information Structures 72 
Appendix B: Filtration 74 
Concepts Explained in this Chapter (in order of presentation) 75 
CHAPTER 3 
Regression Analysis: Theory and Estimation 79 
The Concept of Dependence 79 
Regressions and Linear Models 85 
Estimation of Linear Regressions 90 
Sampling Distributions of Regressions 96 
Determining the Explanatory Power of a Regression 97 
Using Regression Analysis in Finance 99 
Stepwise Regression 114 
Nonnormality and Autocorrelation of the Residuals 121 
Pitfalls of Regressions 123 
Concepts Explained in this Chapter (in order of presentation) 125 
CHAPTER 4 
Selected Topics in Regression Analysis 127 
Categorical and Dummy Variables in Regression Models 127 
Constrained Least Squares 151 
The Method of Moments and its Generalizations 163 
Concepts Explained in this Chapter (in order of presentation) 167 
CHAPTER 5 
Regression Applications in Finance 169 
Applications to the Investment Management Process 169 
A Test of Strong-Form Pricing Efficiency 174 
Tests of the CAPM 175 
Using the CAPM to Evaluate Manager Performance: The Jensen Measure 179 
Evidence for Multifactor Models 180 
Benchmark Selection: Sharpe Benchmarks 184 
Return-Based Style Analysis for Hedge Funds 186 
Hedge Fund Survival 191 
Bond Portfolio Applications 192 
Concepts Explained in this Chapter (in order of presentation) 199 
CHAPTER 6 
Modeling Univariate Time Series 201 
Difference Equations 201 
Terminology and Definitions 207 
Stationarity and Invertibility of ARMA Processes 214 
Linear Processes 219 
Identification Tools 223 
Concepts Explained in this Chapter (in order of presentation) 239 
CHAPTER 7 
Approaches to ARIMA Modeling and Forecasting 241 
Overview of Box-Jenkins Procedure 242 
Identification of Degree of Differencing 244 
Identification of Lag Orders 250 
Model Estimation 253 
Diagnostic Checking 262 
Forecasting 271 
Concepts Explained in this Chapter (in order of presentation) 277 
CHAPTER 8 
Autoregressive Conditional Heteroskedastic Models 279 
ARCH Process 280 
GARCH Process 284 
Estimation of the GARCH Models 289 
Stationary ARMA-GARCH Models 293 
Lagrange Multiplier Test 294 
Variants of the GARCH Model 298 
GARCH Model with Student’s 
t-Distributed Innovations 299 
Multivariate GARCH Formulations 314 
Appendix: Analysis of the Properties of the GARCH(1,1) Model 316 
Concepts Explained in this Chapter (in order of presentation) 319 
CHAPTER 9 
Vector Autoregressive Models I 321 
VAR Models Defined 321 
Stationary Autoregressive Distributed Lag Models 334 
Vector Autoregressive Moving Average Models 335 
Forecasting with VAR Models 338 
Appendix: Eigenvectors and Eigenvalues 339 
Concepts Explained in this Chapter (in order of presentation) 341 
CHAPTER 10 
Vector Autoregressive Models II 343 
Estimation of Stable VAR Models 343 
Estimating the Number of Lags 357 
Autocorrelation and Distributional Properties of Residuals 359 
VAR Illustration 360 
Concepts Explained in this Chapter (in order of presentation) 372 
CHAPTER 11 
Cointegration and State Space Models 373 
Cointegration 373 
Error Correction Models 381 
Theory and Methods of Estimation of Nonstationary VAR Models 385 
State-Space Models 398 
Concepts Explained in this Chapter (in order of presentation) 404 
CHAPTER 12 
Robust Estimation 407 
Robust Statistics 407 
Robust Estimators of Regressions 417 
Illustration: Robustness of the Corporate Bond Yield Spread Model 421 
Concepts Explained in this Chapter (in order of presentation) 428 
CHAPTER 13 
Principal Components Analysis and Factor Analysis 429 
Factor Models 429 
Principal Components Analysis 436 
Factor Analysis 450 
PCA and Factor Analysis Compared 461 
Concepts Explained in this Chapter (in order of presentation) 464 
CHAPTER 14 
Heavy-Tailed and Stable Distributions in Financial Econometrics 465 
Basic Facts and Definitions of Stable Distributions 468 
Properties of Stable Distributions 475 
Estimation of the Parameters of the Stable Distribution 479 
Applications to German Stock Data 485 
Appendix: Comparing Probability Distributions 487 
Concepts Explained in this Chapter (in order of presentation) 494 
CHAPTER 15 
ARMA and ARCH Models with Infinite-Variance Innovations 495 
Infinite Variance Autoregressive Processes 495 
Stable GARCH Models 501 
Estimation for the Stable GARCH Model 507 
Prediction of Conditional Densities 513 
Concepts Explained in this Chapter (in order of presentation) 516 
APPENDIX 
Monthly Returns for 20 Stocks: December 2000–November 2005 517 
INDEX 525 
   |