Litcius/Paper detail

Combining Measures of Signal Complexity and Machine Learning for Time Series Analyis: A Review

Sebastian Raubitzek, Thomas Neubauer

2021Entropy33 citationsDOIOpen Access PDF

Abstract

, are used in time series analysis to give estimates on persistency, anti-persistency, fluctuations and predictability of the data under study. They have proven beneficial when doing time series prediction using machine and deep learning and tell what features may be relevant for predicting time-series and establishing complexity features. Further, the performance of machine learning approaches can be improved, taking into account the complexity of the data under study, e.g., adapting the employed algorithm to the inherent long-term memory of the data. In this article, we provide a review of complexity and entropy measures in combination with machine learning approaches. We give a comprehensive review of relevant publications, suggesting the use of fractal or complexity-measure concepts to improve existing machine or deep learning approaches. Additionally, we evaluate applications of these concepts and examine if they can be helpful in predicting and analyzing time series using machine and deep learning. Finally, we give a list of a total of six ways to combine machine learning and measures of signal complexity as found in the literature.

Topics & Concepts

Series (stratigraphy)Computer scienceSIGNAL (programming language)Artificial intelligenceMachine learningPattern recognition (psychology)Data miningGeologyPaleontologyProgramming languageNeural Networks and ApplicationsComplex Systems and Time Series AnalysisStatistical Mechanics and Entropy