Optimal Importance Sampling for Federated Learning

10/26/2020
by   Elsa Rizk, et al.
0

Federated learning involves a mixture of centralized and decentralized processing tasks, where a server regularly selects a sample of the agents and these in turn sample their local data to compute stochastic gradients for their learning updates. This process runs continually. The sampling of both agents and data is generally uniform; however, in this work we consider non-uniform sampling. We derive optimal importance sampling strategies for both agent and data selection and show that non-uniform sampling without replacement improves the performance of the original FedAvg algorithm. We run experiments on a regression and classification problem to illustrate the theoretical results.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/14/2020

Federated Learning under Importance Sampling

Federated learning encapsulates distributed learning strategies that are...
research
10/05/2022

ISFL: Trustworthy Federated Learning for Non-i.i.d. Data with Local Importance Sampling

As a promising integrated computation and communication learning paradig...
research
02/20/2020

Dynamic Federated Learning

Federated learning has emerged as an umbrella term for centralized coord...
research
11/10/2021

Power-of-two Policies in Redundancy Systems: the Impact of Assignment Constraints

In classical power-of-two load balancing any server pair is sampled with...
research
04/29/2022

AdaInt: Learning Adaptive Intervals for 3D Lookup Tables on Real-time Image Enhancement

The 3D Lookup Table (3D LUT) is a highly-efficient tool for real-time im...
research
06/07/2020

Realistic text replacement with non-uniform style conditioning

In this work, we study the possibility of realistic text replacement, th...
research
10/08/2021

Exploring Heterogeneous Characteristics of Layers in ASR Models for More Efficient Training

Transformer-based architectures have been the subject of research aimed ...

Please sign up or login with your details

Forgot password? Click here to reset