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Autores principales: Holland, William, Thapa, Chandra, Siddiqui, Sarah Ali, Shao, Wei, Camtepe, Seyit
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2408.02266
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author Holland, William
Thapa, Chandra
Siddiqui, Sarah Ali
Shao, Wei
Camtepe, Seyit
author_facet Holland, William
Thapa, Chandra
Siddiqui, Sarah Ali
Shao, Wei
Camtepe, Seyit
contents Large machine-learning training datasets can be distilled into small collections of informative synthetic data samples. These synthetic sets support efficient model learning and reduce the communication cost of data sharing. Thus, high-fidelity distilled data can support the efficient deployment of machine learning applications in distributed network environments. A naive way to construct a synthetic set in a distributed environment is to allow each client to perform local data distillation and to merge local distillations at a central server. However, the quality of the resulting set is impaired by heterogeneity in the distributions of the local data held by clients. To overcome this challenge, we introduce the first collaborative data distillation technique, called CollabDM, which captures the global distribution of the data and requires only a single round of communication between client and server. Our method outperforms the state-of-the-art one-shot learning method on skewed data in distributed learning environments. We also show the promising practical benefits of our method when applied to attack detection in 5G networks.
format Preprint
id arxiv_https___arxiv_org_abs_2408_02266
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle One-Shot Collaborative Data Distillation
Holland, William
Thapa, Chandra
Siddiqui, Sarah Ali
Shao, Wei
Camtepe, Seyit
Machine Learning
I.2
Large machine-learning training datasets can be distilled into small collections of informative synthetic data samples. These synthetic sets support efficient model learning and reduce the communication cost of data sharing. Thus, high-fidelity distilled data can support the efficient deployment of machine learning applications in distributed network environments. A naive way to construct a synthetic set in a distributed environment is to allow each client to perform local data distillation and to merge local distillations at a central server. However, the quality of the resulting set is impaired by heterogeneity in the distributions of the local data held by clients. To overcome this challenge, we introduce the first collaborative data distillation technique, called CollabDM, which captures the global distribution of the data and requires only a single round of communication between client and server. Our method outperforms the state-of-the-art one-shot learning method on skewed data in distributed learning environments. We also show the promising practical benefits of our method when applied to attack detection in 5G networks.
title One-Shot Collaborative Data Distillation
topic Machine Learning
I.2
url https://arxiv.org/abs/2408.02266