Umeå University's logo

umu.sePublications
Change search
CiteExportLink to record
Permanent link

Direct link
Cite
Citation style
  • apa
  • ieee
  • vancouver
  • Other style
More styles
Language
  • de-DE
  • en-GB
  • en-US
  • fi-FI
  • nn-NO
  • nn-NB
  • sv-SE
  • Other locale
More languages
Output format
  • html
  • text
  • asciidoc
  • rtf
A k-Anonymised Federated Learning Framework with Decision Trees
Umeå University, Faculty of Science and Technology, Department of Computing Science.
Umeå University, Faculty of Science and Technology, Department of Computing Science.ORCID iD: 0000-0002-0368-8037
2022 (English)In: Data Privacy Management, Cryptocurrencies and Blockchain Technology / [ed] Garcia-Alfaro J.; Muñoz-Tapia J.L.; Navarro-Arribas G.; Soriano M., Springer Science+Business Media B.V., 2022, Vol. 13140, p. 106-120Conference paper, Published paper (Refereed)
Abstract [en]

We propose a privacy-preserving framework using Mondrian k-anonymity with decision trees in a Federated Learning (FL) setting for the horizontally partitioned data. Data heterogeneity in FL makes the data non-IID (Non-Independent and Identically Distributed). We use a novel approach to create non-IID partitions of data by solving an optimization problem. In this work, each device trains a decision tree classifier. Devices share the root node of their trees with the aggregator. The aggregator merges the trees by choosing the most common split attribute and grows the branches based on the split values of the chosen split attribute. This recursive process stops when all the nodes to be merged are leaf nodes. After the merging operation, the aggregator sends the merged decision tree to the distributed devices. Therefore, we aim to build a joint machine learning model based on the data from multiple devices while offering k-anonymity to the participants.

Place, publisher, year, edition, pages
Springer Science+Business Media B.V., 2022. Vol. 13140, p. 106-120
Series
Lecture Notes in Computer Science, ISSN 03029743, E-ISSN 16113349
Keywords [en]
Aggregation, Decision tree, Federated learning, Privacy
National Category
Computer Sciences Computer Systems
Identifiers
URN: urn:nbn:se:umu:diva-192745DOI: 10.1007/978-3-030-93944-1_7ISI: 000754558600007Scopus ID: 2-s2.0-85124654159ISBN: 9783030939434 (print)OAI: oai:DiVA.org:umu-192745DiVA, id: diva2:1640455
Conference
16th International Workshop on Data Privacy Management, DPM 2021, and 5th International Workshop on Cryptocurrencies and Blockchain Technology, CBT 2021 held in conjunction with ESORICS 2021, Online, 8 October, 2021.
Available from: 2022-02-24 Created: 2022-02-24 Last updated: 2024-10-09Bibliographically approved
In thesis
1. Navigating data privacy and utility: a strategic perspective
Open this publication in new window or tab >>Navigating data privacy and utility: a strategic perspective
2024 (English)Doctoral thesis, comprehensive summary (Other academic)
Alternative title[sv]
Navigera i datasekretess och verktyg : ett strategiskt perspektiv
Abstract [en]

Privacy in machine learning should not merely be viewed as an afterthought; rather, it must serve as the foundation upon which machine learning systems are designed. In this thesis, along with the centralized machine learning, we also consider the distributed environments for training machine learning models, particularly federated learning. Federated learning lets multiple clients or organizations train a machine learning model in a collaborative manner without moving their data. Each client participating to the federation shares the model parameters learnt by training a machine learning model on its data. Even though the setup of federated learning keeps the data local, there is still a risk of sensitive information leaking through the model updates. For instance, attackers could potentially use the updates of the model parameters to figure out details about the data held by clients. So, while federated learning is designed to protect privacy, it still faces challenges in ensuring that the data remains secure throughout the training process. 

Originally, federated learning was introduced in the context of deep learning models. However, this thesis focuses on federated learning for decision trees. Decision Trees are intuitive, and interpretable models, making them popular in a wide range of applications, especially where explanability of the decisions made by the decision tree model is important. However, Decision Trees are vulnerable to inference attacks, particularly when the structure of the decision tree is exposed. To mitigate these vulnerabilities, a key contribution of this thesis is the development of novel federated learning algorithms that incorporate privacy-preserving techniques, such as $k$-anonymity and differential privacy, into the construction of decision trees. By doing so, we seek to ensure user privacy without significantly compromising the performance of the model. Machine learning models learn patterns from data, and during this process, they might leak sensitive information. Each step of the machine learning pipeline presents unique vulnerabilities, making it essential to assess and quantify the privacy risks involved. One focus of this thesis is the quantification of privacy by devising a data reconstruction attack tailored to Principal Component Analysis (PCA), a widely used dimensionality reduction technique. Furthermore, various protection mechanisms are evaluated in terms of their effectiveness in preserving privacy against such reconstruction attacks while maintaining the utility of the model. In addition to federated learning, this thesis also addresses the privacy concerns associated with synthetic datasets generated by models such as generative networks. Specifically, we perform an Attribute Inference Attack on synthetic datasets, and quantify privacy by calculating the Inference Accuracy—a metric that reflects the success of the attacker in estimating sensitive attributes of target individuals.

Overall, this thesis contributes to the development of privacy-preserving algorithms for decision trees in federated learning and introduces methods to quantify privacy in machine learning systems. Also, the findings of this thesis set a ground for further research at the intersection of privacy, and machine learning.

Place, publisher, year, edition, pages
Umeå: Umeå University, 2024. p. 103
Series
UMINF, ISSN 0348-0542 ; 24.10
Keywords
Privacy, Data Reconstruction Attacks, k-anonymity, Differential Privacy, Federated Learning, Decision Trees, Principal Component Analysis
National Category
Computer Sciences Other Engineering and Technologies
Identifiers
urn:nbn:se:umu:diva-230616 (URN)978-91-8070-481-6 (ISBN)978-91-8070-482-3 (ISBN)
Public defence
2024-11-04, BIO.A.206 Aula Anatomica, Biologihuset, 09:15 (English)
Opponent
Supervisors
Funder
Wallenberg AI, Autonomous Systems and Software Program (WASP)
Available from: 2024-10-14 Created: 2024-10-08 Last updated: 2024-10-24Bibliographically approved

Open Access in DiVA

No full text in DiVA

Other links

Publisher's full textScopus

Authority records

Kwatra, SaloniTorra, Vicenç

Search in DiVA

By author/editor
Kwatra, SaloniTorra, Vicenç
By organisation
Department of Computing Science
Computer SciencesComputer Systems

Search outside of DiVA

GoogleGoogle Scholar

doi
isbn
urn-nbn

Altmetric score

doi
isbn
urn-nbn
Total: 1018 hits
CiteExportLink to record
Permanent link

Direct link
Cite
Citation style
  • apa
  • ieee
  • vancouver
  • Other style
More styles
Language
  • de-DE
  • en-GB
  • en-US
  • fi-FI
  • nn-NO
  • nn-NB
  • sv-SE
  • Other locale
More languages
Output format
  • html
  • text
  • asciidoc
  • rtf