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Semiparametric binary regression models under shape constraints with an application to Indian schooling data
Authors:Moulinath Banerjee  Debasri Mukherjee  Santosh Mishra
Affiliation:1. University of Michigan, United States;2. Western Michigan University, United States;3. Oregon State University, United States
Abstract:We consider estimation of the regression function in a semiparametric binary regression model defined through an appropriate link function (with emphasis on the logistic link) using likelihood-ratio based inversion. The dichotomous response variable ΔΔ is influenced by a set of covariates that can be partitioned as (X,Z)(X,Z) where ZZ (real valued) is the covariate of primary interest and XX (vector valued) denotes a set of control variables. For any fixed XX, the conditional probability of the event of interest (Δ=1Δ=1) is assumed to be a non-decreasing function of ZZ. The effect of the control variables is captured by a regression parameter ββ. We show that the baseline conditional probability function (corresponding to X=0X=0) can be estimated by isotonic regression procedures and develop a likelihood ratio based method for constructing asymptotic confidence intervals for the conditional probability function (the regression function) that avoids the need to estimate nuisance parameters. Interestingly enough, the calibration of the likelihood ratio based confidence sets for the regression function no longer involves the usual χ2χ2 quantiles, but those of the distribution of a new random variable that can be characterized as a functional of convex minorants of Brownian motion with quadratic drift. Confidence sets for the regression parameter ββ can however be constructed using asymptotically χ2χ2 likelihood ratio statistics. The finite sample performance of the methods are assessed via a simulation study. The techniques of the paper are applied to data sets on primary school attendance among children belonging to different socio-economic groups in rural India.
Keywords:C1
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