Research

Early warning systems using dynamic factor models: An application to Asian economies

Early warning systems using dynamic factor models: An application to Asian economies

Description

This study develops an early warning system for financial crises with a focus on small open economies.
This study develops an early warning system for financial crises with a focus on small open economies. We contribute to the literature by developing macro-financial dynamic factor models that extract useful information from a rich but unbalanced mixed frequency data set that includes a range of global and domestic economic and financial indicators. The framework is applied to several Asian countries—Thailand, South Korea, Singapore, Malaysia, the Philippines and Indonesia. Logit regression models that use the extracted factors and other leading indicators have significant power in predicting systemic events. In-sample and out-of-sample test results indicate that the extracted factors help to improve the predictive power over a model that uses only sufficiently long history indicators. Importantly, models that include the dynamic factors yield consistently better out-of-sample crisis prediction results for key performance measures such as a usefulness index, the noise to signal ratio, and AUROC.

Author
1. Chi Truong (Macquarie University)
2. Jeffrey Sheen (Macquarie University)
3. Stefan Truck (Macquarie University)
4. James Villafuarte (Asian Development Bank)
Journal
Journal of Financial Stability
×

About

The Malaysian Research Repository, hosted by Monash University Malaysia and sponsored by the World Bank, is a nationally recognised and institutionally supported platform dedicated to the collection and preservation of high-quality research papers and related datasets.
Maintained By
Sponsored By