Lagged correlation-based deep learning for directional trend change prediction in financial time series

•An approach to deep learning for trend prediction in noisy systems is proposed.•Regression-based features are shown to add to the predictive accuracy of the model.•Experiments on historical stock market data are validated and outperform baselines.•Implications for modern financial economics and pra...

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Veröffentlicht in:Expert systems with applications 2019-04, Vol.120, p.197-206
Hauptverfasser: Moews, Ben, Herrmann, J. Michael, Ibikunle, Gbenga
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creator Moews, Ben
Herrmann, J. Michael
Ibikunle, Gbenga
description •An approach to deep learning for trend prediction in noisy systems is proposed.•Regression-based features are shown to add to the predictive accuracy of the model.•Experiments on historical stock market data are validated and outperform baselines.•Implications for modern financial economics and practitioners are discussed. Trend change prediction in complex systems with a large number of noisy time series is a problem with many applications for real-world phenomena, with stock markets as a notoriously difficult to predict example of such systems. We approach predictions of directional trend changes via complex lagged correlations between them, excluding any information about the target series from the respective inputs to achieve predictions purely based on such correlations with other series. We propose the use of deep neural networks that employ step-wise linear regressions with exponential smoothing in the preparatory feature engineering for this task, with regression slopes as trend strength indicators for a given time interval. We apply this method to historical stock market data from 2011 to 2016 as a use case example of lagged correlations between large numbers of time series that are heavily influenced by externally arising new information as a random factor. The results demonstrate the viability of the proposed approach, with state-of-the-art accuracies and accounting for the statistical significance of the results for additional validation, as well as important implications for modern financial economics.
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source Elsevier ScienceDirect Journals
subjects Accounting
Artificial neural networks
Complex systems
Correlation
Deep learning
Lagged correlation
State of the art
Statistical analysis
Stock exchanges
Stock market
Time series
Trend analysis
Viability
title Lagged correlation-based deep learning for directional trend change prediction in financial time series
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