Towards federated learning: An overview of methods and applications

Author:

Silva Paula Raissa12ORCID,Vinagre João34ORCID,Gama João15ORCID

Affiliation:

1. LIAAD, INESC TEC Porto Portugal

2. FEUP, University of Porto Porto Portugal

3. FCUP, University of Porto Porto Portugal

4. Joint Research Centre European Commission Seville Spain

5. FEP, University of Porto Porto Portugal

Abstract

AbstractFederated learning (FL) is a collaborative, decentralized privacy‐preserving method to attach the challenges of storing data and data privacy. Artificial intelligence, machine learning, smart devices, and deep learning have strongly marked the last years. Two challenges arose in data science as a result. First, the regulation protected the data by creating the General Data Protection Regulation, in which organizations are not allowed to keep or transfer data without the owner's authorization. Another challenge is the large volume of data generated in the era of big data, and keeping that data in one only server becomes increasingly tricky. Therefore, the data is allocated into different locations or generated by devices, creating the need to build models or perform calculations without transferring data to a single location. The new term FL emerged as a sub‐area of machine learning that aims to solve the challenge of making distributed models with privacy considerations. This survey starts by describing relevant concepts, definitions, and methods, followed by an in‐depth investigation of federated model evaluation. Finally, we discuss three promising applications for further research: anomaly detection, distributed data streams, and graph representation.This article is categorized under: Technologies > Machine Learning Technologies > Artificial Intelligence

Funder

European Regional Development Fund

Publisher

Wiley

Subject

General Computer Science

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