Browse > Article
http://dx.doi.org/10.5351/CSAM.2017.24.3.291

The restricted maximum likelihood estimation of a censored regression model  

Lee, Seung-Chun (Department of Applied Statistics, Hanshin University)
Publication Information
Communications for Statistical Applications and Methods / v.24, no.3, 2017 , pp. 291-301 More about this Journal
Abstract
It is well known in a small sample that the maximum likelihood (ML) approach for variance components in the general linear model yields estimates that are biased downward. The ML estimate of residual variance tends to be downwardly biased. The underestimation of residual variance, which has implications for the estimation of marginal effects and asymptotic standard error of estimates, seems to be more serious in some limited dependent variable models, as shown by some researchers. An alternative frequentist's approach may be restricted or residual maximum likelihood (REML), which accounts for the loss in degrees of freedom and gives an unbiased estimate of residual variance. In this situation, the REML estimator is derived in a censored regression model. A small sample the REML is shown to provide proper inference on regression coefficients.
Keywords
censored regression; REML; limited dependent variable; observed Fisher information;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Kleiber C and Zeileis A (2009). AER: applied econometrics with R, R package version 1.1, Retrieved May 4, 2017, from: http://CRAN.R-project.org/package=AER
2 Lee SC and Choi BS (2013). Bayesian interval estimation of Tobit regression model, The Korean Journal of Applied Statistics, 26, 737-746.   DOI
3 Lee SC and Choi B (2014). A comparison of Bayesian and maximum likelihood estimations in a SUR Tobit regression model, Korean Journal of Applied Statistics, 27, 991-1002.   DOI
4 Lee L (2017). NADA: nondetects and data analysis for environmental data, Retrieved May 4, 2017, from: http://cran.r-project.org/package=NADA
5 Mroz TA (1987). The sensitivity of an empirical model of married women's hours of work to economic and statistical assumptions, Econometrica, 55, 765-799.   DOI
6 Noh M and Lee Y (2007). REML estimation for binary data in GLMMs, Journal of Multivariate Analysis, 98, 896-915.   DOI
7 Patterson H and Thomson R (1971). Recovery of inter-block information when block sizes are unequal, Biometrika, 58, 545-554.   DOI
8 Tobin J (1958). Estimation of relationships for limited dependent variables, Econometrica, 26, 24-36.   DOI
9 Yu K and Stander J (2007). Bayesian analysis of a Tobit quantile regression model, Journal of Econometrics, 137, 260-276.   DOI
10 Wooldridge JM (2009). Introductory Econometrics: A Modern Approach, South-Western Cengage Learning, Mason.
11 Amemiya T (1984). Tobit models: a survey, Journal of Econometrics, 24, 3-61.   DOI
12 Amemiya T (1985). Tobit models. In T Amemiya (Ed), Advanced Econometrics (pp. 360-411), Basil Blackwell, Oxford.
13 Bilias Y, Chen S, and Ying Z (2000). Simple resampling methods for censored regression quantiles, Journal of Econometrics, 99, 373-386.   DOI
14 Efron B and Hinkley DV (1978). Assessing the accuracy of the maximum likelihood estimator: observed versus expected information, Biometrika, 65, 457-482.   DOI
15 Green W (2004). The behaviour of maximum likelihood estimator of limited dependent variable models in the presence of fixed effects, Econometric Journal, 7, 98-119.   DOI
16 Henningsen A (2017). Estimating censored regression models in R using the censReg packages, Retrieved May 4, 2017, from: http://cran.r-project.org/package=censReg
17 Hughes JP (1999). Mixed effects models with censored data with application to HIV RNA levels, Biometrics, 55, 625-629.   DOI