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A federated learning-enabled predictive analysis to forecast stock market trends

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Version 2 2024-03-13, 09:53
Version 1 2023-12-20, 12:15
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posted on 2024-03-13, 09:53 authored by Saeid Pourroostaei ArdakaniSaeid Pourroostaei Ardakani, Nanjiang Du, Chenhong Lin, Jiun?Chi Yang, Zhuoran Bi, Lejun Chen

This article proposes a federated learning framework to build Random Forest, Support Vector Machine, and Linear Regression models for stock market prediction. The performance of the federated learning is compared against centralised and decentralised learning frameworks to figure out the best fitting approach for stock market prediction. According to the results, federated learning outperforms both centralised and decentralised frameworks in terms of Mean Square Error if Random Forest (MSE = 0.021) and Support Vector Machine techniques (MSE = 37.596) are used, while centralised learning (MSE = 0.011) outperforms federated and decentralised frameworks if a linear regression model is used. Moreover, federated learning gives a better model training delay as compared to the benchmarks if Linear Regression (time = 9.7 s) and Random Forest models (time = 515 s) are used, whereas decentralised learning gives a minimised model training delay (time = 3847 s) for Support Vector Machine.

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School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Journal of Ambient Intelligence and Humanized Computing

Volume

14

Publisher

Springer

ISSN

1868-5137

eISSN

1868-5145

Date Submitted

2023-03-09

Date Accepted

2023-02-09

Date of First Publication

2023-01-01

Date of Final Publication

2023-01-01

Date Document First Uploaded

2023-02-21

ePrints ID

53623

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