You're currently viewing an old version of this dataset. To see the current version, click here.

on a double-threshold autoregressive heteroscedastic time series model (replication data)

Tong's threshold models have been found useful in modelling nonlinearities in the conditional mean of a time series. The threshold model is extended to the so-called double-threshold ARCH(DTARCH) model, which can handle the situation where both the conditional mean and the conditional variance specifications are piecewise linear given previous information. Potential applications of such models include financial data with different (asymmetric) behaviour in a rising versus a falling market and business cycle modelling. Model identification, estimation and diagnostic checking techniques are developed. Maximum likelihood estimation can be achieved via an easy-to-use iteratively weighted least squares algorithm. Portmanteau-type statistics are also derived for checking model adequacy. An illustrative example demonstrates that asymmetric behaviour in the mean and the variance could be present in financial series and that the DTARCH model is capable of capturing these phenomena.

Data and Resources

This dataset has no data

Suggested Citation

Li, C. W.; Li, Wai Keung (1996): On a double-threshold autoregressive heteroscedastic time series model (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/on-a-doublethreshold-autoregressive-heteroscedastic-time-series-model?activity_id=46a812c0-26d5-4bc1-9658-c5ea9cc4f0a0