Estimating the conditional quantile of the interested variable with respect to changes in the covariates is frequent in many economical applications as it can offer a comprehensive insight. In this paper, we propose a novel semiparametric model averaging to predict the conditional quantile even if all models under consideration are potentially misspecified. Specifically, we first build a series of non-nested partially linear sub-models, each with different nonlinear component. Then a leave-one-out cross-validation criterion is applied to choose the model weights. Under some regularity conditions, we have proved that the resulting model averaging estimator is asymptotically optimal in terms of minimizing the out-of-sample average quantile pr...
When using linear models, a common practice is to find the single best model fit used in predictions...
When using linear models, a common practice is to find the single best model fit used in predictions...
When using linear models, a common practice is to find the single best model fit used in predictions...
In this paper we consider the problem of frequentist model averaging for quantile regression (QR) wh...
The paper proposes a method for forecasting conditional quantiles. In practice, one often does not k...
In this paper we consider the problem of frequentist model averaging for quantile regression (QR) wh...
In the past few decades, model averaging has received extensive attention, and has been regarded as ...
This article studies optimal model averaging for partially linear models with heteroscedasticity. A ...
Classical statistical analysis is split into two steps: model selection and post-selection inference...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
In this article, we propose a model selection and semiparametric estimation method for additive mode...
Published in Journal of Econometrics https://doi.org/10.1016/j.jeconom.2014.11.005</p
Published in Journal of Econometrics https://doi.org/10.1016/j.jeconom.2014.11.005</p
We derive the semiparametric efficiency bound in dynamic models of conditional quantiles under a sol...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
When using linear models, a common practice is to find the single best model fit used in predictions...
When using linear models, a common practice is to find the single best model fit used in predictions...
When using linear models, a common practice is to find the single best model fit used in predictions...
In this paper we consider the problem of frequentist model averaging for quantile regression (QR) wh...
The paper proposes a method for forecasting conditional quantiles. In practice, one often does not k...
In this paper we consider the problem of frequentist model averaging for quantile regression (QR) wh...
In the past few decades, model averaging has received extensive attention, and has been regarded as ...
This article studies optimal model averaging for partially linear models with heteroscedasticity. A ...
Classical statistical analysis is split into two steps: model selection and post-selection inference...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
In this article, we propose a model selection and semiparametric estimation method for additive mode...
Published in Journal of Econometrics https://doi.org/10.1016/j.jeconom.2014.11.005</p
Published in Journal of Econometrics https://doi.org/10.1016/j.jeconom.2014.11.005</p
We derive the semiparametric efficiency bound in dynamic models of conditional quantiles under a sol...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
When using linear models, a common practice is to find the single best model fit used in predictions...
When using linear models, a common practice is to find the single best model fit used in predictions...
When using linear models, a common practice is to find the single best model fit used in predictions...