Journal of
Systemics, Cybernetics and Informatics
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ISSN: 1690-4524 (Online)


Peer Reviewed Journal via three different mandatory reviewing processes, since 2006, and, from September 2020, a fourth mandatory peer-editing has been added.

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Published by
The International Institute of Informatics and Cybernetics


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Honorary Editorial Advisory Board's Chair
William Lesso (1931-2015)

Editor-in-Chief
Nagib C. Callaos


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The International Institute of
Informatics and Systemics

www.iiis.org
 

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Quality Assurance

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Call for Special Articles
 

Description and Aims

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Integrating Reviewing Processes


Improving Argumentation Skills through AI-Driven Dialogues: A Transdisciplinary Approach
Birgit Oberer, Alptekin Erkollar
(pages: 1-17)

Overcoming Obstacles to Interdisciplinary Research: Empirical Insights and Strategies
Cristo Leon, James Lipuma
(pages: 18-34)

Knowledge Integration in Students After Transdisciplinary Communication with the Oldest Old
Sonja Ehret
(pages: 35-47)

Generative Artificial Intelligence ChatGPT in Education: Challenges and Opportunities
Bilquis Ferdousi
(pages: 48-64)

IT Ecosystem in a Globalized World
Olga Bernikova, Daria Frolova
(pages: 65-77)

Enhancing Pedagogy and Biblical Exegesis with Emotional Intelligence
Russell Jay Hendel
(pages: 78-112)

The Necessity for Transdisciplinary Communication in Law-Making
Adrian Leka, Brunilda Jani Haxhiu
(pages: 113-123)

The Facilitation of Online Learning for Middle-aged Employees
Gita Aulia Nurani, Ya-Hui Lee
(pages: 124-145)

The Dangers of Aestheticized Education: A Return to Curiosity in a Curated World
Juan David Campolargo
(pages: 146-150)

Navigating Transdisciplinary Communication: A Graduate Student's Perspective
Sirimuvva Pathikonda, Cristo Leon, James Lipuma
(pages: 151-172)


 

Abstracts

 


Volume 21 - Number 3 - Year 2023



Using Federated Learning for Collaborative Intrusion Detection Systems
Matteo Rizzato, Youssef Laarouchi, Christophe Geissler
Journal of Systemics, Cybernetics and Informatics, 21(3), 29-36 (2023); https://doi.org/10.54808/JSCI.21.03.29

Authors Information | Citation | Full Text |
Abstract
Neural networks have become cutting edge machine learning models for detecting network attacks. Traditional implementations provide fast and accurate predictions, but require centralised storage of labelled historical data for training. This solution is not always suitable for real-world applications, where regulatory constraints and privacy concerns hamper the collection of sensitive data into a single server. Federated Learning has recently been proposed as a framework for training a centralised model without the need to share data between different providers. We use the CICIDS2017 dataset provided by the Canadian Institute of Cybersecurity to demonstrate the benefits of Neural Networks-based Federated Learning for the detection of the most relevant types of network attacks. We conclude that a federated-trained neural network outperforms locally-trained models (at isoarchitecture) in terms of F1-score and False Negative detection ratio. Further, such model has a minor loss of performance and convergence rapidity compared to a model trained over a hypothetical centralised dataset.
Full Text