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On the Use of the Moving Average Trading Rule to Test for Weak Form Efficiency in Capital Markets

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  • Alexandros E. Milionis
  • Evangelia Papanagiotou

Abstract

The examination for the possible existence of predictive power in the moving average trading rule has been used extensively to test the hypothesis of weak form market efficiency in capital markets. This work focuses mainly on the study of the variation of the moving average (MA) trading rule performance as a function of the length of the longer MA. Empirical analysis of daily data from NYSE and the Athens Stock Exchange reveal high variability of the performance of the MA trading rule as a function of the MA length and on some occasions the series of successive trading rule total returns is non‐stationary. These findings have direct implications in weak form market efficiency testing. Indeed, given this high variability of the performance of the MA trading rule, by just finding out that trading rules with some specific combinations of MA lengths can or cannot beat the market, as is the case in most of the published work thus far, is not enough evidence for or against the existence of weak form market efficiency. Results also show that on average in about three out of four cases trading rule signals are false, a fact that leaves a lot of space for improved trading rule performance if trading rule signals are combined with other information (e.g. filters, or volume of trade). Finally, some evidence of enhanced trading rule performance for the shorter MA lengths was found. This enhanced performance is partly attributed to the higher probability that a trading rule signal is not a whipsaw, as well as to the larger number of days out‐of‐the‐market which are associated with shorter MA lengths.

Suggested Citation

  • Alexandros E. Milionis & Evangelia Papanagiotou, 2008. "On the Use of the Moving Average Trading Rule to Test for Weak Form Efficiency in Capital Markets," Economic Notes, Banca Monte dei Paschi di Siena SpA, vol. 37(2), pages 181-201, July.
  • Handle: RePEc:bla:ecnote:v:37:y:2008:i:2:p:181-201
    DOI: 10.1111/j.1468-0300.2008.00198.x
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    4. Jogiyanto Hartono & Dedhy Sulistiawan, 2015. "Performance Of Technical Analysis In Declining Global Markets," Global Journal of Business Research, The Institute for Business and Finance Research, vol. 9(2), pages 41-52.

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