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sidenav header background金融计量——2015年春季学期双学位课程介绍
发布日期:2015-03-03 09:41 来源:北京大学国家发展研究院
Financial Econometrics: Time Series Models Spring 2015
NSD, PKU
Course Requirements:
A midterm (40%), three homework (20%) and a term paper (40%).
Useful textbook
Brook, Chris (2008): Introductory Econometrics for Finance. Cambridge University Press. Geanger, C. and P. Newbold (1977): Forecasting economic time series. Academic Press (New York)
Software knowledge: STATA or EVIEW
Course Outline
PART 0 Review: Principle of Maximum likelihood.
Likelihood function Large sample theory of MLE Some examples.PART I: Modeling the Mean Equation
Basic time series models Trend, Seasonality and Stationary fluctuations White noise and Autocorrelations; Weak Stationatiry. AR(p), MA(q) and ARMA(p,q); stationarity and invertibility. Integrated Time series and Unit root tests I(1) Series, Unit root process ADF and PP Tests for a unit root. Nonstationarity due to BreakC. Time Series Regression
1 Conditional mean and OLS
2 OLS, t and F statistics
3 Traps in Nonstationary time series regression: Spurious Regression vs cointegration regression.
4 Diagnostics: Serial correlation and DW statistics
5 A Useful linear model: ADL regression
References:
§Poterba, J. and L. Summers (1988): “Mean Reversion in Stock Prices: Evidence and Implications,” Journal of Financial Economics 22, 27-50.
§Hasbrouck, J. and T. Ho (1987): “Order Arrival, Quote Behavior and the Return-Generating Process,” The Journal of Finance 42, 1035-1048.§Balvers, R., T. Cosimano and B. McDonald (1990): “Predicting Stock Returns in an Efficient Market”, Journal of Finance XLV, 1109-1127.
§Fama, E and K. French (1989): “Business Conditions and Expected Returns on Stock and Bonds”, Journal of Financial Economics 25, 23-49.
§Breen, W., L.Glosten and R. Jagannathan (1989): “Economic Significance of Predictable Variations in Stock Index Returns,” Journal of Finance XLIV, 1177-1189.
PART II Modeling Volatility-GARCH Models
1 Autoregressive Conditional Heteroskedasticity/ARCH
2 Generalized ARCH/GARCH
3 Integrated GARCH and Break
4 Extensions: Asymmetric GARCH, EGARCH
References:
§Akgiray,V. (1989): “Conditional Heteroscedasticity in Time Series of Stock Returns: Evidence and Forecasts,” The Journal of Business 62, 55-80.
§Berkowitz, J. and J. O’Brien (2002): “How Accurate Are Value-at-Risk Models at Commercial Banks?” The Journal of Finance 57, 1093-1111.
§Whitelaw, R. (1994): “Time Variations and Covariations in the Expectation and Volatility of Stock Market Returns,” Journal of Finance XLIX, 515-541.
§Christopher G. Lamoureux and William D. Lastrapes (1990): “Heteroskedasticity in Stock Return Data: Volume versus GARCH Effects,” Journal of Finance 45, 221-229.
PART III Multivariate Models
A Multivariate Regression:
1. Seemingly Unrelated Regression /SUR
2 SEM and its Reduced form
3 VAR: Stationarity condition, Estimation and Causality
4 VAR: Impulse Response.
5 Cointegration and ECM.
B Multivariate GARCH
1. VEC and DVEC
2. BEKK and DBEKK
3. Dynamic Conditional Correlation (DCC)
References:
Sundaram Janakiramanan, Asjeet S. Lamba (1998): “An empirical examination of linkages between Pacific-Basin stock markets,” Journal of International Financial Markets,
Institutions and Money 8, 155–173.
Gong-meng Chen, Michael Firth and Oliver Meng Rui (2002): “Stock market linkages: Evidence from Latin America,” Journal of Banking & Finance 26, 1113–1141.