Prioritized Multi-Criteria Federated Learning

07/17/2020
by   Vito Walter Anelli, et al.
0

In Machine Learning scenarios, privacy is a crucial concern when models have to be trained with private data coming from users of a service, such as a recommender system, a location-based mobile service, a mobile phone text messaging service providing next word prediction, or a face image classification system. The main issue is that, often, data are collected, transferred, and processed by third parties. These transactions violate new regulations, such as GDPR. Furthermore, users usually are not willing to share private data such as their visited locations, the text messages they wrote, or the photo they took with a third party. On the other hand, users appreciate services that work based on their behaviors and preferences. In order to address these issues, Federated Learning (FL) has been recently proposed as a means to build ML models based on private datasets distributed over a large number of clients, while preventing data leakage. A federation of users is asked to train a same global model on their private data, while a central coordinating server receives locally computed updates by clients and aggregate them to obtain a better global model, without the need to use clients' actual data. In this work, we extend the FL approach by pushing forward the state-of-the-art approaches in the aggregation step of FL, which we deem crucial for building a high-quality global model. Specifically, we propose an approach that takes into account a suite of client-specific criteria that constitute the basis for assigning a score to each client based on a priority of criteria defined by the service provider. Extensive experiments on two publicly available datasets indicate the merits of the proposed approach compared to standard FL baseline.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/20/2019

Towards Effective Device-Aware Federated Learning

With the wealth of information produced by social networks, smartphones,...
research
12/17/2018

Learning Private Neural Language Modeling with Attentive Aggregation

Mobile keyboard suggestion is typically regarded as a word-level languag...
research
04/23/2018

Client Selection for Federated Learning with Heterogeneous Resources in Mobile Edge

We envision a mobile edge computing (MEC) framework for machine learning...
research
07/19/2022

FedNet2Net: Saving Communication and Computations in Federated Learning with Model Growing

Federated learning (FL) is a recently developed area of machine learning...
research
07/19/2020

Private, Fair, and Verifiable Aggregate Statistics for Mobile Crowdsensing in Blockchain Era

In this paper, we propose FairCrowd, a private, fair, and verifiable fra...
research
08/17/2020

How to Put Users in Control of their Data via Federated Pair-Wise Recommendation

Recommendation services are extensively adopted in several user-centered...
research
05/26/2021

Gamers Private Network Performance Forecasting. From Raw Data to the Data Warehouse with Machine Learning and Neural Nets

Gamers Private Network (GPN) is a client/server technology that guarante...

Please sign up or login with your details

Forgot password? Click here to reset