The application of dynamic Autoregressive Distributed Lag (dynardl) simulations and Kernel-based Regularized Least Squares (krls) to time series data is gradually gaining recognition in energy, environmental and health economics. The Kernel-based Regularized Least Squares technique is a simplified machine learning-based algorithm with strength in its interpretation and accounting for heterogeneity, additivity and nonlinear effects. The novel dynamic ARDL Simulations algorithm is useful for testing cointegration, long and short-run equilibrium relationships in both levels and differences. Advantageously, the novel dynamic ARDL Simulations has visualization interface to examine the possible counterfactual change in the desired variable based ...
In this article, we introduce the R package dLagM for the implementation of distributed lag models a...
We propose the use of Kernel Regularized Least Squares (KRLS) for social science mod-eling and infer...
JEL No. C63,C68 We develop numerically stable stochastic simulation approaches for solving dynamic e...
The application of dynamic Autoregressive Distributed Lag (dynardl) simulations and Kernel-based Reg...
This postestimation technique produces dynamic simulations of autoregressive ordinary least-squares ...
This postestimation technique produces dynamic simulations of autoregressive ordinary least-squares ...
We develop numerically stable stochastic simulation approaches for solving dynamic economic models. ...
VAR type models can be used only for stationary time series. Causality analyses through econometric ...
We review the literature on the Autoregressive Distributed Lag (ARDL) model, from its origins in the...
In conventional Econometrics, the unit root and cointegration analysis are the only ways to circumve...
In conventional Econometrics, the unit root and cointegration analysis are the only ways to circumve...
The objective of this paper is twofold: First, the applicability of a widely used dynamic model, the...
The objective of this paper is twofold: First, the applicability of a widely used dynamic model, the...
This paper deals with a family of parametric, single-equation cointegration estimators that arise in...
In this article, we introduce the R package dLagM for the implementation of distributed lag models a...
In this article, we introduce the R package dLagM for the implementation of distributed lag models a...
We propose the use of Kernel Regularized Least Squares (KRLS) for social science mod-eling and infer...
JEL No. C63,C68 We develop numerically stable stochastic simulation approaches for solving dynamic e...
The application of dynamic Autoregressive Distributed Lag (dynardl) simulations and Kernel-based Reg...
This postestimation technique produces dynamic simulations of autoregressive ordinary least-squares ...
This postestimation technique produces dynamic simulations of autoregressive ordinary least-squares ...
We develop numerically stable stochastic simulation approaches for solving dynamic economic models. ...
VAR type models can be used only for stationary time series. Causality analyses through econometric ...
We review the literature on the Autoregressive Distributed Lag (ARDL) model, from its origins in the...
In conventional Econometrics, the unit root and cointegration analysis are the only ways to circumve...
In conventional Econometrics, the unit root and cointegration analysis are the only ways to circumve...
The objective of this paper is twofold: First, the applicability of a widely used dynamic model, the...
The objective of this paper is twofold: First, the applicability of a widely used dynamic model, the...
This paper deals with a family of parametric, single-equation cointegration estimators that arise in...
In this article, we introduce the R package dLagM for the implementation of distributed lag models a...
In this article, we introduce the R package dLagM for the implementation of distributed lag models a...
We propose the use of Kernel Regularized Least Squares (KRLS) for social science mod-eling and infer...
JEL No. C63,C68 We develop numerically stable stochastic simulation approaches for solving dynamic e...