Asymmetric Price and Volatility Adjustments in Emerging Asian Stock Markets
Gregory Koutmos
Journal of Business Finance & Accounting, 1999, vol. 26, issue 1‐2, 83-101
Abstract:
This paper tests the hypothesis that stock returns in emerging stock markets adjust asymmetrically to past information. The evidence suggests that both the conditional mean and the conditional variance respond asymmetrically to past information. In agreement with studies dealing with developed stock markets, the conditional variance is an asymmetrical function of past innovations, rising proportionately more during market declines. More importantly, the conditional mean is also an asymmetrical function of past returns. Specifically, positive past returns are more persistent than negative past returns of an equal magnitude. This behaviour is consistent with an asymmetric partial adjustment price model where news suggesting overpricing (negative returns) are incorporated faster into current prices than news suggesting underpricing (positive returns). Furthermore, the asymmetric adjustment of prices to past information could be partially responsible for the asymmetries in the conditional variance if the degree of adjustment and the level of volatility are positively related.
Date: 1999
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https://doi.org/10.1111/1468-5957.00249
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Persistent link: https://EconPapers.repec.org/RePEc:bla:jbfnac:v:26:y:1999:i:1-2:p:83-101
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