A Course on Statistics for Finance
Taking a data-driven approach, A Course on Statistics for Finance
presents statistical methods for financial investment analysis. The author introduces
regression analysis, time series analysis, and multivariate analysis step by step using
models and methods from finance. The book begins with a review of basic statistics,
including descriptive statistics, kinds of variables, and types of data sets. It then
discusses regression analysis in general terms and in terms of financial investment
models, such as the capital asset pricing model and the Fama/French model. It also
describes mean-variance portfolio analysis and concludes with a focus on time series
analysis. Providing the connection between elementary statistics courses and quantitative
finance courses, this text helps both existing and future quants improve their data
analysis skills and better understand the modeling process.
INTRODUCTORY CONCEPTS AND DEFINITIONS Review of Basic Statistics What Is Statistics?
Characterizing Data Measures of Central Tendency Measures of Variability Higher Moments
Summarizing Distributions Bivariate Data Three Variables Two-Way Tables Stock Price Series
and Rates of Return Introduction Sharpe Ratio Value-at-Risk Distributions for RORs Several
Stocks and Their Rates of Return Introduction Review of Covariance and Correlation Two
Stocks Three Stocks m Stocks REGRESSION Simple Linear Regression; CAPM and Beta
Introduction Simple Linear Regression Estimation Inference Concerning the Slope Testing
Equality of Slopes of Two Lines through the Origin Linear Parametric Functions Variances
Dependent upon X A Financial Application: CAPM and "Beta" Slope and Intercept
Multiple Regression and Market Models Multiple Regression Models Market Models Models with
Both Numerical and Dummy Explanatory Variables Model Building PORTFOLIO ANALYSIS
Mean-Variance Portfolio Analysis Introduction Two Stocks Three Stocks m Stocks m Stocks
and a Risk-Free Asset Value-at-Risk Selling Short Market Models and Beta Utility-Based
Portfolio Analysis Introduction Single-Criterion Analysis TIME SERIES ANALYSIS
Introduction to Time Series Analysis Introduction Control Charts Moving Averages Need for
Modeling Trend, Seasonality, and Randomness Models with Lagged Variables Moving-Average
Models Identification of ARIMA Models Seasonal Data Dynamic Regression Models Simultaneous
Equations Models Regime Switching Models Introduction Bull and Bear Markets
Appendix A: Vectors and Matrices
Appendix B: Normal Distributions
Appendix C: Lagrange Multipliers
Appendix D: Abbreviations and Symbols Index A Summary, Exercises, and Bibliography
appear at the end of each chapter.
269 pages, Hardcover