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Issues in federated learning: some experiments and preliminary results

Jamsher Bhanbhro, Simona Nisticò, Luigi Palopoli

2024Scientific Reports24 citationsDOIOpen Access PDF

Abstract

The growing need for data privacy and security in machine learning has led to exploring novel approaches like federated learning (FL) that allow collaborative training on distributed datasets, offering a decentralized alternative to traditional data collection methods. A prime benefit of FL is its emphasis on privacy, enabling data to stay on local devices by moving models instead of data. Despite its pioneering nature, FL faces issues such as diversity in data types, model complexity, privacy concerns, and the need for efficient resource distribution. This paper illustrates an empirical analysis of these challenges within specially designed scenarios, each aimed at studying a specific problem. In particular, differently from existing literature, we isolate the issues that can arise in an FL framework to observe their nature without the interference of external factors.

Topics & Concepts

Computer scienceFederated learningPrime (order theory)Data scienceDiversity (politics)Resource (disambiguation)Data anonymizationResource distributionInformation privacyArtificial intelligenceComputer securityResource allocationComputer networkSociologyCombinatoricsAnthropologyMathematicsPrivacy-Preserving Technologies in DataCryptography and Data SecurityMobile Crowdsensing and Crowdsourcing
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