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Technical Analysis and Theory of Finance

Yingzi Zhu
Tsinghua University - School of Economics & Management

Guofu Zhou
Washington University, St. Louis - John M. Olin School of Business


September 17, 2007

EFA 2007 Ljubljana Meetings Paper

Abstract:     
In this paper, we analyze the usefulness of technical analysis, specifically the widely used moving average trading rule, from an asset allocation perspective. We show that when stock returns are predictable, technical analysis adds value to commonly used allocation rules that invest fixed proportions of wealth in stocks. When there is uncertainty about predictability, the fixed allocation rules combined with technical analysis can outperform the prior-dependent optimal learning rule when the prior is not too informative. Moreover, the technical trading rules are robust to model specification, and they tend to substantially outperform the model-based optimal trading strategies when there is uncertainty about the model governing the stock price.

Keywords: Technical analysis, trading rules, asset allocation, predictability, learning

JEL Classifications: G11, G12, G14, C11, C61

Working Paper Series

Date posted: March 05, 2007 ; Last revised: September 30, 2007

Suggested Citation

Zhu, Yingzi and Zhou, Guofu, Technical Analysis and Theory of Finance (September 17, 2007). EFA 2007 Ljubljana Meetings Paper. Available at SSRN: http://ssrn.com/abstract=968216


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Contact Information

Guofu Zhou (Contact Author)
Washington University, St. Louis - John M. Olin School of Business ( email )
Washington University
Campus Box 1133
St. Louis, MO 63130-4899
United States
314-935-6384 (Phone)
314-658-6359 (Fax)
Yingzi Zhu
Tsinghua University - School of Economics & Management ( email )
Beijing 100084 China
+86-10-62786041 (Phone)
Feedback to SSRN (Beta)


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