\name{terasvirta.test} \title{Teraesvirta Neural Network Test for Nonlinearity} \alias{terasvirta.test} \alias{terasvirta.test.ts} \alias{terasvirta.test.default} \description{ Generically computes Teraesvirta's neural network test for neglected nonlinearity either for the time series \code{x} or the regression \code{y~x}. } \usage{ \method{terasvirta.test}{ts}(x, lag = 1, type = c("Chisq","F"), scale = TRUE, \dots) \method{terasvirta.test}{default}(x, y, type = c("Chisq","F"), scale = TRUE, \dots) } \arguments{ \item{x}{a numeric vector, matrix, or time series.} \item{y}{a numeric vector.} \item{lag}{an integer which specifies the model order in terms of lags.} \item{type}{a string indicating whether the Chi-Squared test or the F-test is computed. Valid types are \code{"Chisq"} and \code{"F"}.} \item{scale}{a logical indicating whether the data should be scaled before computing the test statistic. The default arguments to \code{\link{scale}} are used.} \item{\dots}{further arguments to be passed from or to methods.} } \details{ The null is the hypotheses of linearity in ``mean''. This test uses a Taylor series expansion of the activation function to arrive at a suitable test statistic. If \code{type} equals \code{"F"}, then the F-statistic instead of the Chi-Squared statistic is used in analogy to the classical linear regression. Missing values are not allowed. } \value{ A list with class \code{"htest"} containing the following components: \item{statistic}{the value of the test statistic.} \item{p.value}{the p-value of the test.} \item{method}{a character string indicating what type of test was performed.} \item{parameter}{a list containing the additional parameters used to compute the test statistic.} \item{data.name}{a character string giving the name of the data.} \item{arguments}{additional arguments used to compute the test statistic.} } \references{ T. Teraesvirta, C. F. Lin, and C. W. J. Granger (1993): Power of the Neural Network Linearity Test. \emph{Journal of Time Series Analysis} 14, 209-220. } \author{A. Trapletti} \seealso{ \code{\link{white.test}} } \examples{ n <- 1000 x <- runif(1000, -1, 1) # Non-linear in ``mean'' regression y <- x^2 - x^3 + 0.1*rnorm(x) terasvirta.test(x, y) ## Is the polynomial of order 2 misspecified? terasvirta.test(cbind(x,x^2,x^3), y) ## Generate time series which is nonlinear in ``mean'' x[1] <- 0.0 for(i in (2:n)) { x[i] <- 0.4*x[i-1] + tanh(x[i-1]) + rnorm(1, sd=0.5) } x <- as.ts(x) plot(x) terasvirta.test(x) } \keyword{ts}