loading
Papers Papers/2022 Papers Papers/2022

Research.Publish.Connect.

Paper

Authors: Daniel Perazzo 1 ; Thiago de Souza 1 ; Pietro Masur 1 ; Eduardo de Amorim 1 ; Pedro de Oliveira 1 ; Kelvin Cunha 1 ; Lucas Maggi 1 ; Francisco Simões 1 ; 2 ; Veronica Teichrieb 1 and Lucas Kirsten 3

Affiliations: 1 Voxar Labs, Centro de Informática, Universidade Federal de Pernambuco, Recife/PE, Brazil ; 2 Visual Computing Lab, Departamento de Computação, Universidade Federal Rural de Pernambuco, Recife/PE, Brazil ; 3 HP Inc., Porto Alegre/RS, Brazil

Keyword(s): Federated Learning, Document Analysis, Privacy, Dataset.

Abstract: Data privacy has recently become one of the main concerns for society and machine learning researchers. The question of privacy led to research in privacy-aware machine learning and, amongst many other techniques, one solution gaining ground is federated learning. In this machine learning paradigm, data does not leave the user’s device, with training happening on it and aggregated in a remote server. In this work, we present, to our knowledge, the first federated dataset for document classification: FedBID. To demonstrate how this dataset can be used for evaluating different techniques, we also developed a system, FedDocs, for federated learning for document classification. We demonstrate the characteristics of our federated dataset, along with different types of distributions possible to be created with our dataset. Finally, we analyze our system, FedDocs, in our dataset, FedBID, in multiple different scenarios. We analyze a federated setting with balanced categories, a federated se tting with unbalanced classes, and, finally, simulating a siloed federated training. We demonstrate that FedBID can be used to analyze a federated learning algorithm. Finally, we hope the FedBID dataset allows more research in federated document classification. The dataset is available in https://github.com/voxarlabs/FedBID. (More)

CC BY-NC-ND 4.0

Sign In Guest: Register as new SciTePress user now for free.

Sign In SciTePress user: please login.

PDF ImageMy Papers

You are not signed in, therefore limits apply to your IP address 3.139.235.177

In the current month:
Recent papers: 100 available of 100 total
2+ years older papers: 200 available of 200 total

Paper citation in several formats:
Perazzo, D.; de Souza, T.; Masur, P.; de Amorim, E.; de Oliveira, P.; Cunha, K.; Maggi, L.; Simões, F.; Teichrieb, V. and Kirsten, L. (2023). FedBID and FedDocs: A Dataset and System for Federated Document Analysis. In Proceedings of the 18th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications (VISIGRAPP 2023) - Volume 5: VISAPP; ISBN 978-989-758-634-7; ISSN 2184-4321, SciTePress, pages 551-558. DOI: 10.5220/0011658700003417

@conference{visapp23,
author={Daniel Perazzo. and Thiago {de Souza}. and Pietro Masur. and Eduardo {de Amorim}. and Pedro {de Oliveira}. and Kelvin Cunha. and Lucas Maggi. and Francisco Simões. and Veronica Teichrieb. and Lucas Kirsten.},
title={FedBID and FedDocs: A Dataset and System for Federated Document Analysis},
booktitle={Proceedings of the 18th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications (VISIGRAPP 2023) - Volume 5: VISAPP},
year={2023},
pages={551-558},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0011658700003417},
isbn={978-989-758-634-7},
issn={2184-4321},
}

TY - CONF

JO - Proceedings of the 18th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications (VISIGRAPP 2023) - Volume 5: VISAPP
TI - FedBID and FedDocs: A Dataset and System for Federated Document Analysis
SN - 978-989-758-634-7
IS - 2184-4321
AU - Perazzo, D.
AU - de Souza, T.
AU - Masur, P.
AU - de Amorim, E.
AU - de Oliveira, P.
AU - Cunha, K.
AU - Maggi, L.
AU - Simões, F.
AU - Teichrieb, V.
AU - Kirsten, L.
PY - 2023
SP - 551
EP - 558
DO - 10.5220/0011658700003417
PB - SciTePress