China’s Stock Market Integration with a Leading Power and a Close Neighbor

Zheng Yi, Chen Heng, Wing-Keung Wong*

*Corresponding author for this work

    Research output: Contribution to journalJournal articlepeer-review

    Abstract

    Current integration and co-movement among international stock markets has been boosted by increased globalization of the world economy, and profit-chasing capital surfing across borders. With a reputation as the fastest growing economy in the world, China’s stock market has continued gaining momentum during recent years and incurred growing attention from academicians, as well as practitioners. Taking into account economic and geographical considerations, the US and Hong Kong are considerably the most comparable stock markets to China. The usual vector error correction model (VECM) could overlook the long memory feature of cointegration residual series, which can in turn exert bias on the resulting inferences. To overcome its limitations, we employ a fractionally integrated VECM (FIVECM) in this paper to investigate the long-term cointegration relations binding China’s stock market to the aforementioned stock markets. In addition, by augmenting the FIVECM with multivariate GARCH model, the return transmission and volatility spillover between market return series were revealed simultaneously. Our empirical results show that China’s stock market is fractionally cointegrated with the two markets, and it appears that China’s stock market has stronger ties with its neighboring Hong Kong market than with the world superpower, the US market.
    Original languageEnglish
    Pages (from-to)38-74
    Number of pages37
    JournalJournal of Risk and Financial Management
    Volume2
    Issue number1
    DOIs
    Publication statusPublished - Dec 2009

    User-Defined Keywords

    • Stock markets
    • Cointegration
    • FIVECM
    • MGARCH

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