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Auteurs principaux: Feng, Chao, Celdran, Alberto Huertas, Han, Jing, Ren, Heqing, Cheng, Xi, Zeng, Zien, Krauter, Lucas, Bovet, Gerome, Stiller, Burkhard
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2507.13313
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author Feng, Chao
Celdran, Alberto Huertas
Han, Jing
Ren, Heqing
Cheng, Xi
Zeng, Zien
Krauter, Lucas
Bovet, Gerome
Stiller, Burkhard
author_facet Feng, Chao
Celdran, Alberto Huertas
Han, Jing
Ren, Heqing
Cheng, Xi
Zeng, Zien
Krauter, Lucas
Bovet, Gerome
Stiller, Burkhard
contents This paper introduces a dataset and an experimental study on Decentralized Federated Learning (DFL) for Internet of Things (IoT) crowdsensing malware detection. The dataset comprises behavioral records from benign and eight malware attacks. A total of 21,582,484 original records were collected from system calls, file system activities, resource usage, kernel events, input/output events, and network records. These records were aggregated into 30-second windows, resulting in 342,106 data records used for model training and evaluation. Experiments on the DFL platform compare traditional Machine Learning (ML), Centralized Federated Learning (CFL), and DFL across different node counts, topologies, and data distributions. Results show that DFL maintains competitive performance while preserving data locality, outperforming CFL in most settings. This dataset provides a solid foundation for studying the security of IoT crowdsensing environments.
format Preprint
id arxiv_https___arxiv_org_abs_2507_13313
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Crowdsensing Intrusion Detection Dataset For Decentralized Federated Learning Models
Feng, Chao
Celdran, Alberto Huertas
Han, Jing
Ren, Heqing
Cheng, Xi
Zeng, Zien
Krauter, Lucas
Bovet, Gerome
Stiller, Burkhard
Cryptography and Security
This paper introduces a dataset and an experimental study on Decentralized Federated Learning (DFL) for Internet of Things (IoT) crowdsensing malware detection. The dataset comprises behavioral records from benign and eight malware attacks. A total of 21,582,484 original records were collected from system calls, file system activities, resource usage, kernel events, input/output events, and network records. These records were aggregated into 30-second windows, resulting in 342,106 data records used for model training and evaluation. Experiments on the DFL platform compare traditional Machine Learning (ML), Centralized Federated Learning (CFL), and DFL across different node counts, topologies, and data distributions. Results show that DFL maintains competitive performance while preserving data locality, outperforming CFL in most settings. This dataset provides a solid foundation for studying the security of IoT crowdsensing environments.
title A Crowdsensing Intrusion Detection Dataset For Decentralized Federated Learning Models
topic Cryptography and Security
url https://arxiv.org/abs/2507.13313