Characterizing Complexity and Self-Similarity Based on Fractal and Entropy Analyses for Stock Market Forecast Modelling

作者:

Highlights:

• Proposal of multifarious methodology with diverse stages for stock market forecast modelling.

• The significance of Hurst exponent and Entropy-based Indicators to attain optimal forecasting.

• Hurst exponent as a determining and prominent indicator for stock market indices.

• Guidance in volatile and uncertain financial markets characterized by unexpected developments.

• Characterizing complexity and self-similarity based on Fractal and Entropy analyses.

摘要

•Proposal of multifarious methodology with diverse stages for stock market forecast modelling.•The significance of Hurst exponent and Entropy-based Indicators to attain optimal forecasting.•Hurst exponent as a determining and prominent indicator for stock market indices.•Guidance in volatile and uncertain financial markets characterized by unexpected developments.•Characterizing complexity and self-similarity based on Fractal and Entropy analyses.

论文关键词:Hurst exponent,Shannon entropy,Rényi entropy,Artificial neural network,Regression algorithms,Fractal analysis,Complexity and Self-Similarity,Stock indices forecasting

论文评审过程:Received 20 June 2019, Revised 25 September 2019, Accepted 22 November 2019, Available online 22 November 2019, Version of Record 18 December 2019.

论文官网地址:https://doi.org/10.1016/j.eswa.2019.113098