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Optimising the smoothness and accuracy of moving average for stock price data

    Aistis Raudys Affiliation
    ; Židrina Pabarškaitė Affiliation

Abstract

Smoothing time series allows removing noise. Moving averages are used in finance to smooth stock price series and forecast trend direction. We propose optimised custom moving average that is the most suitable for stock time series smoothing. Suitability criteria are defined by smoothness and accuracy. Previous research focused only on one of the two criteria in isolation. We define this as multi-criteria Pareto optimisation problem and compare the proposed method to the five most popular moving average methods on synthetic and real world stock data. The comparison was performed using unseen data. The new method outperforms other methods in 99.5% of cases on synthetic and in 91% on real world data. The method allows better time series smoothing with the same level of accuracy as traditional methods, or better accuracy with the same smoothness. Weights optimised on one stock are very similar to weights optimised for any other stock and can be used interchangeably. Traders can use the new method to detect trends earlier and increase the profitability of their strategies. The concept is also applicable to sensors, weather forecasting, and traffic prediction where both the smoothness and accuracy of the filtered signal are important.

Keyword : moving average filter, smoothness and accuracy, weight optimisation, triple smoothed exponential moving average (TSEMA), custom moving average

How to Cite
Raudys, A., & Pabarškaitė, Židrina. (2018). Optimising the smoothness and accuracy of moving average for stock price data. Technological and Economic Development of Economy, 24(3), 984-1003. https://doi.org/10.3846/20294913.2016.1216906
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May 18, 2018
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