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STAR model

About: STAR model is a research topic. Over the lifetime, 2661 publications have been published within this topic receiving 101945 citations.


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Journal ArticleDOI
Keith Ord1
TL;DR: In this paper, a simplified computational scheme is given and extended to mixed regressive-autoregressive models for spatial interaction, and the ML estimator is compared with several alternatives.
Abstract: Autoregressive models for spatial interaction have been proposed by several authors (Whittle [15] and Mead [11], for example). In the past, computational difficulties with the ML approach have led to the use of alternative estimators. In this article, a simplified computational scheme is given and extended to mixed regressive-autoregressive models. The ML estimator is compared with several alternatives.

1,308 citations

Journal ArticleDOI
TL;DR: In this article, the Lagrange multiplier approach is adopted and it is shown that the test against the nth order autoregressive and moving average error models is exactly the same as the test in the case of the serial correlation model.
Abstract: Since dynamic regression equations are often obtained from rational distributed lag models and include several lagged values of the dependent variable as regressors, high order serial correlation in the disturbances is frequently a more plausible alternative to the assumption of serial independence than the usual first order autoregressive error model. The purpose of this paper is to examine the problem of testing against general autoregressive and moving average error processes. The Lagrange multiplier approach is adopted and it is shown that the test against the nth order autoregressive error model is exactly the same as the test against the nth order moving average alternative. Some comments are made on the treatment of serial correlation.

1,304 citations

Journal ArticleDOI
TL;DR: This paper surveys recent developments related to the smooth transition autoregressive (STAR) time series model and several of its variants, putting emphasis on new methods for testing for STAR nonlinearity, model evaluation, and forecasting.
Abstract: This paper surveys recent developments related to the smooth transition autoregressive (STAR) time series model and several of its variants. We put emphasis on new methods for testing for STAR nonlinearity, model evaluation, and forecasting. Several useful extensions of the basic STAR model, which concern multiple regimes, time-varying non-linear properties, and models for vector time series, are also reviewed.

1,120 citations

Journal ArticleDOI
TL;DR: In this paper, a simple yet widely applicable model-building procedure for threshold autoregressive models is proposed based on some predictive residuals, and a simple statistic is proposed to test for threshold nonlinearity and specify the threshold variable.
Abstract: The threshold autoregressive model is one of the nonlinear time series models available in the literature. It was first proposed by Tong (1978) and discussed in detail by Tong and Lim (1980) and Tong (1983). The major features of this class of models are limit cycles, amplitude dependent frequencies, and jump phenomena. Much of the original motivation of the model is concerned with limit cycles of a cyclical time series, and indeed the model is capable of producing asymmetric limit cycles. The threshold autoregressive model, however, has not received much attention in application. This is due to (a) the lack of a suitable modeling procedure and (b) the inability to identify the threshold variable and estimate the threshold values. The primary goal of this article, therefore, is to suggest a simple yet widely applicable model-building procedure for threshold autoregressive models. Based on some predictive residuals, a simple statistic is proposed to test for threshold nonlinearity and specify the ...

977 citations

Journal ArticleDOI
TL;DR: In this article, the authors present new evidence about the time-series behavior of stock prices, showing that daily return series exhibit significant levels of second-order dependence, and they cannot be modeled as linear white-noise processes.
Abstract: This article presents new evidence about the time-series behavior of stock prices. Daily return series exhibit significant levels of second-order dependence, and they cannot be modeled as linear white-noise processes. A reasonable return-generating process is empirically shown to be a first-order autoregressive process with conditionally heteroskedastic innovations. In particular, generalized autoregressive conditional heteroskedastic GARCH (1, 1) processes fit to data very satisfactorily. Various out-of-sample forecasts of monthly return variances are generated and compared statistically. Forecasts based on the GARCH model are found to be superior. Copyright 1989 by the University of Chicago.

930 citations


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Performance
Metrics
No. of papers in the topic in previous years
YearPapers
20244
202350
202294
20218
20206
201910