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Empirical evaluation of price-based technical patterns using probabilistic neural networks

Author

Listed:
  • Ahlawat, Samit

    (Bank of America)

Abstract

Technical analysis is the art of identifying patterns in historical data with the belief that certain patterns foretell future price movements. An empirical evaluation of the effectiveness of technical analysis is confounded by the subjectivity involved in identifying patterns. This work presents a robust framework for pattern identification using probabilistic neural networks (PNN). The thirty components of the Dow Jones Industrial Average and a set of ten indices are considered. Fourteen patterns are analyzed. In order to test the possibility that technical patterns are more predictable in certain market environments, the period under study (1990 – 2015) is partitioned into bull and bear markets and the statistical significance of profits earned by identified patterns observed in each environment is analyzed. A range of holding periods from 10 to 50 trading days is considered and a simple model of transaction costs is added. The study reveals that no pattern produces statistically and economically significant profits for a cross-section of stocks and indices analyzed, though a few patterns are more successful predictors. Bullish (bearish) patterns are more reliable predictors in bullish (bearish) market environments. These observations can be explained by the Adaptive Market Hypothesis with certain patterns becoming more accurate predictors in specific market environments.

Suggested Citation

  • Ahlawat, Samit, 2016. "Empirical evaluation of price-based technical patterns using probabilistic neural networks," Algorithmic Finance, IOS Press, vol. 5(3-4), pages 49-68.
  • Handle: RePEc:ris:iosalg:0050
    as

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    More about this item

    Keywords

    Neural network; technical analysis; technical trading rules; scatterplot smoothing;
    All these keywords.

    JEL classification:

    • C00 - Mathematical and Quantitative Methods - - General - - - General

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