Abstract: The identification of parameters in a nonseparable single-index models with correlated random effects is considered in the context of panel data with a fixed number of time periods. The identification assumption is based on the correlated random-effect structure: the distribution of individual effects depends on the explanatory variables only by means of their time-averages. Under this assumption, the parameters of interest are identified up to scale and could be estimated by an average derivative estimator based on the local polynomial smoothing. The rate of convergence and asymptotic distribution of the proposed estimator are derived along with a test whether pooled estimation using all available time periods is possible. Finall...
In this paper we study identification and estimation of the causal effect of a small change in an en...
This paper studies a class of linear panel models with random coefficients. We do not restrict the j...
In this article, we consider semiparametric estimation in a partially linear single-index panel data...
The identification in a nonseparable single-index models with correlated random effects is considere...
In this paper, we generalize the single-index models to the scenarios with random effects. The intro...
This paper considers identification and estimation of ceteris paribus effects of continuous regresso...
We study the identification of panel models with linear individual-specific coefficients, when T is ...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...
Nonseparable panel models are important in a variety of economic settings, including discrete choice...
This paper investigates identification and root-n consistent estimation of a class of single index p...
Abstract. In this paper, we consider identification and estimation of average marginal effects in a ...
This paper considers identification and estimation of ceteris paribus effects of con-tinuous regress...
Abstract. In this paper, we consider identification and estimation of average marginal effects in a ...
This paper considers a nonparametric panel data model with nonadditive unobserved heterogeneity. As ...
Recent work on nonparametric identification of average partial effects (APEs) from panel data requir...
In this paper we study identification and estimation of the causal effect of a small change in an en...
This paper studies a class of linear panel models with random coefficients. We do not restrict the j...
In this article, we consider semiparametric estimation in a partially linear single-index panel data...
The identification in a nonseparable single-index models with correlated random effects is considere...
In this paper, we generalize the single-index models to the scenarios with random effects. The intro...
This paper considers identification and estimation of ceteris paribus effects of continuous regresso...
We study the identification of panel models with linear individual-specific coefficients, when T is ...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...
Nonseparable panel models are important in a variety of economic settings, including discrete choice...
This paper investigates identification and root-n consistent estimation of a class of single index p...
Abstract. In this paper, we consider identification and estimation of average marginal effects in a ...
This paper considers identification and estimation of ceteris paribus effects of con-tinuous regress...
Abstract. In this paper, we consider identification and estimation of average marginal effects in a ...
This paper considers a nonparametric panel data model with nonadditive unobserved heterogeneity. As ...
Recent work on nonparametric identification of average partial effects (APEs) from panel data requir...
In this paper we study identification and estimation of the causal effect of a small change in an en...
This paper studies a class of linear panel models with random coefficients. We do not restrict the j...
In this article, we consider semiparametric estimation in a partially linear single-index panel data...