A Composite Logistic Regression Approach for Ordinal Panel Data Regression

International Journal of Data Analysis Techniques and Strategies, Vol. 1, pp. 29-43, 2008

Posted: 2 Dec 2008

See all articles by Ronghua Luo

Ronghua Luo

Southwestern University of Finance and Economics (SWUFE) - School of Finance

Hansheng Wang

Peking University - Guanghua School of Management

Date Written: November 27, 2008

Abstract

We propose in this article a Composite Logistic Regression (CLR) approach for ordinal panel data regression. The new method transforms the original ordinal regression problem into a number of binary ones. Thereafter, the method of conditional logistic regression (Chamberlain, 1984; Wooldridge, 2001; Hsiao, 2003) can be directly applied. As a result, the new method allows the unobserved subject effects to be correlated with the observed predictors in an arbitrary manner. Computationally, the new method is able to profile out unobserved subject effects in a very neat manner. This not only makes computational implementation very easy but also makes theoretical treatment straightforward. In particular, we show theoretically that the resulting estimator is - consistent n and asymptotically normal. Both simulations and a real example are reported to demonstrate the usefulness of the new method.

Keywords: Composite Logistic Regression, CLR, conditional logistic regression, ordinal response, panel data, unobserved subject effect

JEL Classification: C5, C51

Suggested Citation

Luo, Ronghua and Wang, Hansheng, A Composite Logistic Regression Approach for Ordinal Panel Data Regression (November 27, 2008). International Journal of Data Analysis Techniques and Strategies, Vol. 1, pp. 29-43, 2008, Available at SSRN: https://ssrn.com/abstract=1308329

Ronghua Luo

Southwestern University of Finance and Economics (SWUFE) - School of Finance ( email )

Chengdu, 610074
China

Hansheng Wang (Contact Author)

Peking University - Guanghua School of Management ( email )

Peking University
Beijing, Beijing 100871
China

HOME PAGE: http://hansheng.gsm.pku.edu.cn

Do you have negative results from your research you’d like to share?

Paper statistics

Abstract Views
869
PlumX Metrics