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Low-Frequency Waves and the Medium to Long-Term US Stock Market Outlook

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  • Valeriy Zakamulin

Abstract

In this paper we provide compelling evidence of cyclical mean reversion and multiperiod stock return predictability over horizons of about 30 years with a half-life of about 15 years. This implies that the US stock market follows a long-term rhythm where a period of above average returns tends to be followed by a period of below average returns. We demonstrate that this long-term stock market rhythm moves in lockstep with corresponding long-term economic, social, and political rhythms in the US. Assuming that the past relationship between these rhythms will hold unaltered in the future, we provide the medium to long-term stock market outlook.

Suggested Citation

  • Valeriy Zakamulin, 2012. "Low-Frequency Waves and the Medium to Long-Term US Stock Market Outlook," Papers 1203.2250, arXiv.org, revised Jan 2013.
  • Handle: RePEc:arx:papers:1203.2250
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    References listed on IDEAS

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