An important problem in applied statistics is fitting a given model function f(fJ) with unknown parameters fJ to a data vector y . Minimizing the residual sum of squares provides the least squares estimates of p. If fUi) is linear in fJ the precision of these estimates is well· known. In a nonlinear case approximate (thauah asymptotically exact) confidence statements can be made. BEALE [I] introduced measures of nonlinea rity which can be used to indicate when approximate confidence statements are appropriate. GUTTMAN and MEETER [2] showed that in some. severely nonlinear. cases Beale's measures do not give the riaht indie-ation. In this paper two new nonlinearity measures are introduced and their use is illustrated on a practical problem d...
this paper we examine its potential in linearity testing. For example it is convenient to look at de...
In this article we propose a quick, efficient, and easy method to detect whether a time series Yt po...
With reference to non-differential methods proposed in statistical literature for nonlinear confiden...
An important problem in applied statistics is fitting a given model function f(fJ) with unknown para...
A frequently encountered problem is the fitting of a data-vector by means of a model function with a...
The theoretical and computational challenges in least squares estimationof parameters in nonlinea...
Quantitative iieasures of the nonlinearity of an analytical method are defined as follows: the “(dim...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
In nonlinear regression statistical analysis based upon interpretation of the parameter estimates ma...
<p>Nonlinearities were introduced as: (a) Squared nonlinear dynamics of increasing magnitude, see <a...
Also published in: Journal of Process Control 10(2000), p. 113-123SIGLEAvailable from TIB Hannover: ...
In recent years interest has been growing in testing for (non)linearity in time series. Several test...
The paper examines the robustness of the size and power properties of the standard non-linearity tes...
This paper attempts to bring more structure into empirical power studies of mis-specification tests....
In this chapter, we review the problem of testing for nonlinearity in time series. First, we discuss...
this paper we examine its potential in linearity testing. For example it is convenient to look at de...
In this article we propose a quick, efficient, and easy method to detect whether a time series Yt po...
With reference to non-differential methods proposed in statistical literature for nonlinear confiden...
An important problem in applied statistics is fitting a given model function f(fJ) with unknown para...
A frequently encountered problem is the fitting of a data-vector by means of a model function with a...
The theoretical and computational challenges in least squares estimationof parameters in nonlinea...
Quantitative iieasures of the nonlinearity of an analytical method are defined as follows: the “(dim...
Nonlinear models arise naturally in economics. Both least squares and maximum-likelihood estimators ...
In nonlinear regression statistical analysis based upon interpretation of the parameter estimates ma...
<p>Nonlinearities were introduced as: (a) Squared nonlinear dynamics of increasing magnitude, see <a...
Also published in: Journal of Process Control 10(2000), p. 113-123SIGLEAvailable from TIB Hannover: ...
In recent years interest has been growing in testing for (non)linearity in time series. Several test...
The paper examines the robustness of the size and power properties of the standard non-linearity tes...
This paper attempts to bring more structure into empirical power studies of mis-specification tests....
In this chapter, we review the problem of testing for nonlinearity in time series. First, we discuss...
this paper we examine its potential in linearity testing. For example it is convenient to look at de...
In this article we propose a quick, efficient, and easy method to detect whether a time series Yt po...
With reference to non-differential methods proposed in statistical literature for nonlinear confiden...