Suppressing Noise from Built Environment Datasets to Reduce Communication Rounds for Convergence of Federated Learning

09/03/2022
by   Rahul Mishra, et al.
6

Smart sensing provides an easier and convenient data-driven mechanism for monitoring and control in the built environment. Data generated in the built environment are privacy sensitive and limited. Federated learning is an emerging paradigm that provides privacy-preserving collaboration among multiple participants for model training without sharing private and limited data. The noisy labels in the datasets of the participants degrade the performance and increase the number of communication rounds for convergence of federated learning. Such large communication rounds require more time and energy to train the model. In this paper, we propose a federated learning approach to suppress the unequal distribution of the noisy labels in the dataset of each participant. The approach first estimates the noise ratio of the dataset for each participant and normalizes the noise ratio using the server dataset. The proposed approach can handle bias in the server dataset and minimizes its impact on the participants' dataset. Next, we calculate the optimal weighted contributions of the participants using the normalized noise ratio and influence of each participant. We further derive the expression to estimate the number of communication rounds required for the convergence of the proposed approach. Finally, experimental results demonstrate the effectiveness of the proposed approach over existing techniques in terms of the communication rounds and achieved performance in the built environment.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/07/2023

Resource Aware Clustering for Tackling the Heterogeneity of Participants in Federated Learning

Federated Learning is a training framework that enables multiple partici...
research
07/22/2021

Federated Learning Versus Classical Machine Learning: A Convergence Comparison

In the past few decades, machine learning has revolutionized data proces...
research
09/03/2022

FedAR+: A Federated Learning Approach to Appliance Recognition with Mislabeled Data in Residential Buildings

With the enhancement of people's living standards and rapid growth of co...
research
09/17/2020

Distilled One-Shot Federated Learning

Current federated learning algorithms take tens of communication rounds ...
research
12/12/2020

Communication-Efficient Federated Learning with Compensated Overlap-FedAvg

Petabytes of data are generated each day by emerging Internet of Things ...
research
10/08/2019

FedMD: Heterogenous Federated Learning via Model Distillation

Federated learning enables the creation of a powerful centralized model ...
research
05/31/2023

FedCSD: A Federated Learning Based Approach for Code-Smell Detection

This paper proposes a Federated Learning Code Smell Detection (FedCSD) a...

Please sign up or login with your details

Forgot password? Click here to reset