Title: Financial Econometrics and Statistics: Past, Present, and Future
1Financial Econometrics and Statistics Past,
Present, and Future
- By
- Dr. Cheng-Few Lee
- Distinguished Professor of Finance, Rutgers
University, USA - Editor, Review of Quantitative Finance and
Accounting - Editor, Review of Pacific Basin Financial Markets
and Policies
To be presented at the The 4th NCTU
International Finance Conference on January 7,
2011.
2Outline
- 1. Introduction
- 2. Single equation regression methods
- 3. Simultaneous equation models
- 4. Panel data analysis
- 5. Alternative methods to deal with measurement
error - 6. Time series analysis
- 7. Spectral Analysis
- 8. Statistical distributions
- 9. Principle components and factor analyses
- 10. Non-parametric, Semi-parametric, and GMM
analyses - 11. Path analysis
- 12. Cluster analysis
- 13. Summary and concluding remarks
31. Introduction
- Financial econometrics and statistics
have become more important for empirical research
in both finance and accounting. Asset pricing and
corporate finance research have used both
econometrics and statistics, such as single
equation multiple regression, simultaneous
regression, panel data analysis. Portfolio theory
and management have used different statistics
distributions, such as normal distribution,
stable distribution, and log normal distribution.
Options and futures have used binomial
distribution, log normal distribution,
non-central chi square distribution, and so on.
Auditing has used sampling technique to determine
the sampling error for auditing. The main purpose
of this handbook is to review financial
econometrics and statistics used in the research
of finance and accounting for last five decades.
Some suggestions to apply these techniques in
future research are also recommended. - The second section of this paper will
discuss alternative single equation regression
estimation methods. Section 3 will discuss
simultaneous equation models. Section 4 will
discuss panel data analysis. Section 5 will
discuss alternative methods to deal with
measurement error. Section 6 will discuss time
series analysis. Section 7 will discuss spectral
Analysis. Section 8 will discuss statistical
distribution. Section 9 will discuss principle
components and factor analyses. Section 10 will
discuss non-parametric, semi-parametric, and GMM
analyses. Section 11 will discuss path analysis.
Section 12 will discuss cluster analysis.
Finally, section 13 will summarize the paper.
42. Single equation regression methods
- In this section, we will discuss important issues
related to single equation regression estimation
method. They are (a) heteroskedasticity, (b)
specification error, (c) measurement error, (d)
quantile regression, and (e) testing structural
change. - a. Heteroskedasticity
- - White method
- - Newey-West method
- b. Specification error
- - Thursby, JASA (1985)
- - Alternative Specifications and Estimation
Methods for Determining Random Beta Coefficients
Comparison and Extensions, (with Robert C.R.
Rkok and David C. Cheng), Journal of Financial
Studies, October 1996 - - Power of Alternative Specification Errors
Tests in Identifying Misspecified Market Models,
(with David C. Cheng), The Quarterly Review of
Economics and Business, Fall, 1986. - - Cheng and Lee, QREB (1986)
- - Maddala et al., Handbook of Statistics 14
Statistics Methods in Finance (1996)
52. Single equation regression methods
- c. Measurement error
- - Lee and Jen, JFQA (1978)
- - Kim, JF (1995)
- - Kim, Handbook of Quantitative Finance and Risk
Management (2010) - - Miller and Modigliani, AER (1966)
- d. Quantile regression
- e. Nonlinear regression
- Box-Cox transformation
- - Lee JF (1976)
- - Lee JFQA (1977)
- - Lee JFQA ()
- - Generalized Financial Ratio Adjustment
Processes and Their Implications, (with Thomas
J. Frecka), Journal of Accounting Research,
Spring, 1983. - - A Generalized Functional Form Approach to
Investigate the Density Gradient and the Price
Elasticity of Demand for Housing, (with James B.
Kau), Urban Studies, April, 1976. - - Liu (2005)
- - Kau, Lee, and Sirmans. Urban Econometrics
Model developments and empirical results (1986)
62. Single equation regression methods
- f. Testing structural change
- - Yang (1989)
- - Lee et al. (2010) Optimal payout ratio under
- - Lee et al. (2010) Threshold..
- - Chow test and moving chow test
- (Chow, Econometrica, 1960)
- (Strucchange An R Package for Testing for
Structural Change in Lineaer Regression Models,
Journal of Statistical Software, 2002) - - Threshold regression
- (Hansen, Journal of Business Economic
Statistics, 1997) - (Hansen, Econometrica, 1996, 2000)
- (Journal of Econometrics, 1999, 2000).
- - Generalize fluctuation test
- (Juan and Hornik, Eonometric Reviews, 1995)
- g. Probit and Logit regression for credit risk
analysis - - Hwang, R.C., Cheng, K.F., and Lee, C.F.
(2009). On multiple-class prediction of issuer
crediting ratings. Journal of Applied Stochastic
Models in Business and Industry, 25, 535-550.
(SCI) - - Hwang, R.C., Wei, H.C., Lee, J.C., and Lee,
C.F. (2008). On prediction of financial distress
using the discrete-time survival model. Journal
of Financial Studies, 16, 99-129. (TSSCI) - - Cheng, K.F.,Chu, C.K., and Hwang, R.C. (2009).
Predicting bankruptcy using the discrete-time
semiparametric hazard model. Accepted by
Quantitative Finance. (SSCI)
73. Simultaneous equation models
- In this section, we will discuss
alternative methods to deal with simultaneous
equation models. There are (a) 2 stage least
square (2SLS) method, (b) seemly uncorrelated
regression (SUR) method, (c) 3 stage least square
(3SLS) method, and (d) disequilibrium estimation
method. - a. 2 stage least square (2SLS) method
- - Lee JFQA (1976)
- - MM AER (1966)
- - Chen et al., Corporate Governance and
International Review (2007) - b. Seemly uncorrelated regression (SUR) method
- - Lee JFQA (1981)
- c. 3 stage least square (3SLS) method
- - Chen et al., Corporate Governance and
International Review (2007) - d. Disequilibrium estimation method
- - Tsai (2005)
- - CW Sealy JF (1979)
- - Lee, Tsai, and Lee, subjected to revision for
Quantitative Finance (2010) - - WJ Mayer, Journal of Econometrics, 1989
- - RW David, JBF, 1987
- - C Martin, Review of Economics and Statistics,
1990
84. Panel data analysis
- In this section, we will discuss important
issues related to panel data analysis. There are
(a) fixed effect model, (b) random effect model,
and (c) clustering effect model. - - Wooldridge, Econometric Analysis of Cross
Secion and Panel Data, MIT Press (2002) - - BalTagi, Econometric Analysis of Panel Data,
Wiley (2008) - - Hsiao, Analysis of Panel Data, Cambridge
University Press (2002) - a. Fixed effect model
- - Lee JFQA (1977)
- - Lee et al. JCF (2010)
- b. Random effect model
- - Lee JFQA (1977)
- c. Clustering effect model of panel data analysis
- - Thompson (2006)
- - Cameron, Gelbach, and Miller (2006)
- - Petersen (2009)
95. Alternative methods to deal with measurement
error
- In this section, we will discuss Alternative
methods to deal with measurement error problem.
They are (a) LISREL model, (b) multi-factor and
multi-indicator (MIMIC) model, and (c) partial
least square method. - - Lee (1973)
- a. LISREL model
- - Titman and Wessal JF (1988)
- - Chang (1999)
- - Chang and Lee QREF (2008)?
- b. Multi-factor and multi-indicator (MIMIC) model
- - Lee et al. QREB (2009)
- - Wei (1984)
- c. Partial least square method
- - JE Core - Journal of Law, Economics, and
Organization (2000) - - Ittner et al. AR (1997)
- - Lambert and Lacker ()
106. Time series analysis
- In this section, we will discuss important
models in time series analysis. They are (a)
ARIMA, (b) ARCH, (c) GARCH, and (d) Fractional
GARCH. - - Anderson, T. W., The statistical Analysis of
Time Series (1994), Wiley-Interscience. - - Hamilton, J. D., Time Series Analysis (1994),
Princeton University Press. - a. ARIMA
- - Myers, JFM (1991)
- b. ARCH
- - Lien and Shrestha, JFM (2007)
- c. GARCH
- - Lien, JFM (2010)
- d. Fractional GARCH
- - Leon and Vaello-Sebastia, JBF (2009)
- e. Combined forecasting
- - Lee (1996)
- - Lee and Cummins (1998)
117. Spectral Analysis
- In this section, we will discuss the spectral
analysis. - - Chacko and Viceira, Journal of Econometrics
(2003) - - Heston, RFS (1993)
- - Anderson, T. W., The statistical Analysis of
Time Series (1994)
128. Statistical distributions
- In this section, we will discuss different
statistical distributions. They are (a) binomial
distribution, (b) poisson distribution, (c)
normal distribution, (d) log normal distribution,
(e) Chi-square distribution, (f) non-central
Chi-square distribution, (g) Wishart
distribution, (h) stable distribution, and (i)
other distributions. - a. Binomial distribution
- - Cox, Ross, and Rubinstein (1979)
- - Rendleman and Barter (1979)
- b. Poisson distribution
- c. Normal distribution
- d. Log Normal distribution
- - Chu (1984)
- e. Chi-square distribution
- f. Non-central Chi-square distribution
- - M. Schroder, Journal of Finance (1989)
- g. Wishart distribution
- - Chen and Lee, Management Science (1981)
- h. Stable distribution
- - E. Fama, JASA (1971)
- i. Other distributions
139. Principle components and factor analyses
- In this section, we will discuss principle
components and factor analyses. - - Anderson, T. W., An Introduction to
Multivariate Statistical Analysis (2003),
Wiley-Interscience. - a. Principle components
- b. Factor analyses
1410. Non-parametric, Semi-parametric, and GMM
analyses
- In this section, non-parametric, semi-paprmetric,
and GMM analyses will be discussed. - a. Non-parametric analysis
- - Ait-Sahalia and Lo, Journal of Econometrics
(2000) - b. Semi-parametric analysis
- - Hwang, R.C., Chung, H., andChu, C.K. (2009).
Predicting issuer credit ratings using a
semiparametric method. Accepted by Journal of
Empirical Finance. - - Cheng, K.F.,Chu, C.K., and Hwang, R.C. (2009).
Predicting bankruptcy using the discrete-time
semiparametric hazard model. Accepted by
Quantitative Finance. - - Hwang, R.C., Cheng, K.F., and Lee, J.C.
(2007). A semiparametric method for predicting
bankruptcy. Journal of Forecasting, 26, 317-342.
- c. GMM analysis
- - Chen et al., Corporate Governance and
International Review (2007) - - Brick et al. The Motivations for Issuing
Putable Debt An Empirical Analysis forthcoming
for Handbook of Quantitative Finance and
Econometrics, 2011.
1511. Path analysis
- In this section, path analysis will be discussed.
1612. Cluster analysis
- In this section, Cluster analysis will be
discussed. - - Brown and Goetzmann (JFE, 1997)
- - Finding Groups in Data An Introduction to
Cluster Analysis, L Kaufman, Peter J Rousseeuw,
Wiley, 2005
1713. Summary and concluding remarks
- In this paper, we have review both financial
econometrics and statistics methods which has
been used in finance and accounting research for
last four decades. In this handbook, we include
research papers in both finance and accounting
which present different methodologies in
detailed. Therefore, it will be very useful to
researcher when they try to perform similar kind
of research.
18References
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structure and management compensation the
partial least squares approach, Ph.D.
Dissertation, Rutgers University. - Cheng, K.F.,Chu, C.K., and Hwang, R.C. (2009).
Predicting bankruptcy using the discrete-time
semiparametric hazard model. Accepted by
Quantitative Finance. (SSCI) - Chu, C. C., 1984. Alternative methods for
determining the expected market risk premium
theory and evidence, Ph.D. Dissertation,
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Option Pricing a simplified approach, Journal
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Working paper. - Hwang, R.C., Cheng, K.F., and Lee, C.F. (2009).
On multiple-class prediction of issuer crediting
ratings. Journal of Applied Stochastic Models in
Business and Industry, 25, 535-550. (SCI) - Hwang, R.C., Cheng, K.F., and Lee, J.C. (2007).
A semiparametric method for predicting
bankruptcy. Journal of Forecasting, 26, 317-342.
- Hwang, R.C., Chung, H., and Chu, C.K. (2009).
Predicting issuer credit ratings using a
semiparametric method. Accepted by Journal of
Empirical Finance. (SSCI) - Hwang, R.C., Wei, H.C., Lee, J.C., and Lee, C.F.
(2008). On prediction of financial distress using
the discrete-time survival model. Journal of
Financial Studies, 16, 99-129. (TSSCI) - Ittner, C. D., Larcker, D. F., and Rajan, M. V.,
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