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Authors
Advisor(s)
Abstract(s)
In this paper, we introduce a volatility-based method for clustering analysis of financial time series. Using the generalized autoregressive conditional heteroskedasticity (GARCH) models we estimate the distances between the stock return volatilities. The proposed method uses the volatility behavior of the time series and solves the problem of different lengths. As an illustrative example, we investigate the similarities among major international stock markets using daily return series with different sample sizes from 1966 to 2006. From cluster analysis, most European markets countries, United States and Canada appear close together, and most Asian/Pacific markets and the South/Middle American markets appear in a distinct cluster. After the terrorist attack on September 11, 2001, the European stock markets have become more homogenous, and North American markets, Japan and Australia seem to come closer.
Description
Keywords
Cluster Analysis GARCH International Stock Markets Volatility
Pedagogical Context
Citation
Caiado, Jorge and Nuno Crato .(2007). “A GARCH-based method for clustering of financial time series: International stock markets evidence”. MPRA Paper No. 2074 -2007. (Search PDF in 2023).
Publisher
MPRA - Munich Personal RePEc Archive
