Why Do Big Data and Machine Learning Entail the Fractional Dynamics?
Fractional-order calculus is about the differentiation and integration of non-integer orders. Fractional calculus (FC) is based on fractional-order thinking (FOT) and has been shown to help us to understand complex systems better, improve the processing of complex signals, enhance the control of com...
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doaj-c138cc762578408d9646eadb36968cc92021-03-01T00:03:43ZengMDPI AGEntropy1099-43002021-02-012329729710.3390/e23030297Why Do Big Data and Machine Learning Entail the Fractional Dynamics?Haoyu Niu0YangQuan Chen1Bruce J. West2Electrical Engineering and Computer Science Department, University of California, Merced, CA 95340, USAMechanical Engineering Department, University of California, Merced, CA 95340, USAOffice of the Director, Army Research Office, Research Triangle Park, NC 27709, USAFractional-order calculus is about the differentiation and integration of non-integer orders. Fractional calculus (FC) is based on fractional-order thinking (FOT) and has been shown to help us to understand complex systems better, improve the processing of complex signals, enhance the control of complex systems, increase the performance of optimization, and even extend the enabling of the potential for creativity. In this article, the authors discuss the fractional dynamics, FOT and rich fractional stochastic models. First, the use of fractional dynamics in big data analytics for quantifying big data variability stemming from the generation of complex systems is justified. Second, we show why fractional dynamics is needed in machine learning and optimal randomness when asking: “is there a more optimal way to optimize?”. Third, an optimal randomness case study for a stochastic configuration network (SCN) machine-learning method with heavy-tailed distributions is discussed. Finally, views on big data and (physics-informed) machine learning with fractional dynamics for future research are presented with concluding remarks.https://www.mdpi.com/1099-4300/23/3/297fractional calculusfractional dynamicsfractional-order thinkingheavytailednessbig datamachine learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Haoyu Niu YangQuan Chen Bruce J. West |
spellingShingle |
Haoyu Niu YangQuan Chen Bruce J. West Why Do Big Data and Machine Learning Entail the Fractional Dynamics? Entropy fractional calculus fractional dynamics fractional-order thinking heavytailedness big data machine learning |
author_facet |
Haoyu Niu YangQuan Chen Bruce J. West |
author_sort |
Haoyu Niu |
title |
Why Do Big Data and Machine Learning Entail the Fractional Dynamics? |
title_short |
Why Do Big Data and Machine Learning Entail the Fractional Dynamics? |
title_full |
Why Do Big Data and Machine Learning Entail the Fractional Dynamics? |
title_fullStr |
Why Do Big Data and Machine Learning Entail the Fractional Dynamics? |
title_full_unstemmed |
Why Do Big Data and Machine Learning Entail the Fractional Dynamics? |
title_sort |
why do big data and machine learning entail the fractional dynamics? |
publisher |
MDPI AG |
series |
Entropy |
issn |
1099-4300 |
publishDate |
2021-02-01 |
description |
Fractional-order calculus is about the differentiation and integration of non-integer orders. Fractional calculus (FC) is based on fractional-order thinking (FOT) and has been shown to help us to understand complex systems better, improve the processing of complex signals, enhance the control of complex systems, increase the performance of optimization, and even extend the enabling of the potential for creativity. In this article, the authors discuss the fractional dynamics, FOT and rich fractional stochastic models. First, the use of fractional dynamics in big data analytics for quantifying big data variability stemming from the generation of complex systems is justified. Second, we show why fractional dynamics is needed in machine learning and optimal randomness when asking: “is there a more optimal way to optimize?”. Third, an optimal randomness case study for a stochastic configuration network (SCN) machine-learning method with heavy-tailed distributions is discussed. Finally, views on big data and (physics-informed) machine learning with fractional dynamics for future research are presented with concluding remarks. |
topic |
fractional calculus fractional dynamics fractional-order thinking heavytailedness big data machine learning |
url |
https://www.mdpi.com/1099-4300/23/3/297 |
work_keys_str_mv |
AT haoyuniu whydobigdataandmachinelearningentailthefractionaldynamics AT yangquanchen whydobigdataandmachinelearningentailthefractionaldynamics AT brucejwest whydobigdataandmachinelearningentailthefractionaldynamics |
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