Unit-Root Tests and Excess Returns

Part of the Dynamic Modeling and Econometrics in Economics and Finance book series (DMEF, volume 1)


When introducing students to the modem theory of financial markets, it is common to characterize the behavior of the log of asset prices as martingales, and their excess returns as being serially uncorrelated or even unpredictable. This is consistent with Fama’s (1970) characterization of weak, semi-strong, and strong market efficiency. To be sure, there is an extensive literature documenting the deviations of asset prices from this characterization. Despite this, most would accept the proposition that asset prices contain a unit root in their time-series representation and that excess returns do not. Put another way, the stylized fact is that asset prices are integrated of order one (I(1)) and excess returns are integrated of order zero (I(0)). However, a small number of prominent recent papers have presented evidence that appears to reject this characterization in a surprising way. They show that, according to some tests, some excess returns appear to contain a unit root.


Unit Root Excess Return Cointegration Test Forward Rate Spot Rate 
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Copyright information

© Springer Science+Business Media New York 1999

Authors and Affiliations

  1. 1.Bank of CanadaCanada
  2. 2.École des Hautes Études CommercialFrance

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