Jin-Lung Lin
;
Ruey S. Tsay
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co-integration constraint and forecasting: an empirical examination (replication data)

Does co-integration help long-term forecasts? In this paper, we use simulation, real data sets, and multi-step-ahead post-sample forecasts to study this question. Based on the square root of the trace of forecasting error-covariance matrix, we found that for simulated data imposing the correct unit-root constraints implied by co-integration does improve the accuracy of forecasts. For real data sets, the answer is mixed. Imposing unit-root constraints suggested by co-integration tests produces better forecasts for some cases, but fares poorly for others. We give some explanations for the poor performance of co-integration in long-term forecasting and discuss the practical implications of the study. Finally, an adaptive forecasting procedure is found to perform well in one- to ten-step-ahead forecasts.

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Suggested Citation

Lin, Jin-Lung; Tsay, Ruey S. (1996): Co-integration constraint and forecasting: An empirical examination (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/cointegration-constraint-and-forecasting-an-empirical-examination?activity_id=7c72d7e7-9308-47ec-8e53-50d70db5a802