Use of nonlinear models in analyzing time series data is becoming increasingly popular. This paper considers a broad class of nonlinear autoregressive models where the autoregressive part is additive and the terms are nonlinear functions of the past data. Also, the innovation distribution is supported on the non‐negative reals and satisfies a tail regularity condition. The linear parameters of the autoregression are estimated using a linear programming recipe which yields much more accurate estimates than traditional methods such as conditional least squares. Limiting distribution of the linear programming estimators is obtained. Simulation studies validate the asymptotic results and reveal excellent small sample properties of the LPE estim...
This paper published in "Mathematical Programming" 67 (1994), 109-119, Iteration Homogeneous and Sel...
Integer-valued auto-regressive (INAR) processes have been introduced to model non-negative integer-v...
We introduce and investigate some properties of a class of nonlinear time series models based on the...
AbstractWe consider stationary autoregressive processes of order p which have positive innovations. ...
AbstractSuppose we observe a time series that alternates between different nonlinear autoregressive ...
Suppose we observe a time series that alternates between different nonlinear autore-gressive process...
Suppose we observe a time series that alternates between different nonlinear autoregressive processe...
We introduce a new class of nonlinear autoregressive models from their representation as linear auto...
Integer-valued autoregressive (INAR) processes have been introduced to model nonnegative integer-val...
Several methods for the analysis of nonlinear time series models have been proposed. As in linear au...
In many applications of time series, the assumption of stationarity has been widely used to analyse ...
AbstractWe consider stationary autoregressive processes of order p which have positive innovations. ...
Integer-valued autoregressive (INAR) processes have been introduced to model nonnegative integer-val...
The estimation of coefficients in a simple autoregressive model is considered in a supposedly diffic...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
This paper published in "Mathematical Programming" 67 (1994), 109-119, Iteration Homogeneous and Sel...
Integer-valued auto-regressive (INAR) processes have been introduced to model non-negative integer-v...
We introduce and investigate some properties of a class of nonlinear time series models based on the...
AbstractWe consider stationary autoregressive processes of order p which have positive innovations. ...
AbstractSuppose we observe a time series that alternates between different nonlinear autoregressive ...
Suppose we observe a time series that alternates between different nonlinear autore-gressive process...
Suppose we observe a time series that alternates between different nonlinear autoregressive processe...
We introduce a new class of nonlinear autoregressive models from their representation as linear auto...
Integer-valued autoregressive (INAR) processes have been introduced to model nonnegative integer-val...
Several methods for the analysis of nonlinear time series models have been proposed. As in linear au...
In many applications of time series, the assumption of stationarity has been widely used to analyse ...
AbstractWe consider stationary autoregressive processes of order p which have positive innovations. ...
Integer-valued autoregressive (INAR) processes have been introduced to model nonnegative integer-val...
The estimation of coefficients in a simple autoregressive model is considered in a supposedly diffic...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
This paper published in "Mathematical Programming" 67 (1994), 109-119, Iteration Homogeneous and Sel...
Integer-valued auto-regressive (INAR) processes have been introduced to model non-negative integer-v...
We introduce and investigate some properties of a class of nonlinear time series models based on the...