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Smoothing techniques for market fluctuation signals

    Audrius Dzikevičius Affiliation
    ; Svetlana Šaranda Affiliation

Abstract

The financial crisis of 2008–2009 caused lots of discussions between Academia and as a result researches on financial crisis and bubble prediction possibilities appeared. Academia shows its growing interest in the issue during the last decade. The majority of researches made are based on different forms of forecast used. Some of previous studies claim that the trend of the stock market can be forecasted using moving average method. After the finance market crashed, a need to forecast further possible bubbles arises. As the economics of the Baltic States is very sensitive to such bubbles it is very important to forecast preliminary the trends of the finance markets ant to plan the right actions in order to temper such bubble influence on the national economics. Although economic theory is opposite to the technical analysis theory which is the main tool for traders in stock markets it is used widely. This paper examines whether a proper technical analysis rule such as Exponential Moving Average (EMA) has a predictive power on stock markets in the Baltic States. The method is applied to OMX Baltic Benchmark Index and industrial indexes as they are more or less sensitive to the main index fluctuations. The results were compared using systematic error (mean square error, the mean absolute deviation, mean forecast error, the mean absolute percentage error) and tracking signal evaluation, CAPM method and appropriate period of EMA finding for each market forecast. A graphical analysis was used in order to determine whether EMA can forecast the main trends of the stock market fluctuations. The conclusions made during the research suggest new research issues and new hypotheses for its further testing.

Keyword : technical analysis, Exponential Moving Average, bias, forecast, stock, market trend, CAPM, fluctuation signal

How to Cite
Dzikevičius, A., & Šaranda, S. (2011). Smoothing techniques for market fluctuation signals. Business: Theory and Practice, 12(1), 63-74. https://doi.org/10.3846/btp.2011.07
Published in Issue
Mar 10, 2011
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