Results 11 to 20 of about 1,704,441 (287)
Homophily outlier detection in non-IID categorical data [PDF]
To appear in Data Ming and Knowledge Discovery ...
Guansong Pang +2 more
openaire +3 more sources
Detecting Outliers in Non-IID Data: A Systematic Literature Review
Outlier detection (outlier and anomaly are used interchangeably in this review) in non-independent and identically distributed (non-IID) data refers to identifying unusual or unexpected observations in datasets that do not follow an independent and ...
Shafaq Siddiqi +3 more
doaj +2 more sources
Fast converging Federated Learning with Non-IID Data
With the advancement of device capabilities, Internet of Things (IoT) devices can employ built-in hardware to perform machine learning (ML) tasks, extending their horizons in many promising directions. In traditional ML, data are sent to a server for training. However, this approach raises user privacy concerns.
Sigg Stephan, Naas Si-Ahmed
openaire +3 more sources
Data augmentation scheme for federated learning with non-IID data [PDF]
To solve the problem that the model accuracy remains low when the data are not independent and identically distributed (non-IID) across different clients in federated learning, a privacy-preserving data augmentation scheme was proposed.Firstly, a data ...
Lingtao TANG, Di WANG, Shengyun LIU
doaj +4 more sources
Federated Learning is a promising paradigm for sharing Cyber Threat Intelligence (CTI) without privacy issues by leveraging the cross-silos data in Software Defined Networking (SDN).
Syed Hussain Ali Kazmi +4 more
doaj +2 more sources
Entropy to Mitigate Non-IID Data Problem on Federated Learning for the Edge Intelligence Environment
Machine Learning (ML) algorithms process input data making it possible to recognize and extract patterns from a large data volume. Likewise, Internet of Things (IoT) devices provide knowledge in a Federated Learning (FL) environment, sharing parameters ...
Fernanda C. Orlandi +4 more
doaj +2 more sources
Federated PAC-Bayesian Learning on Non-IID Data
Existing research has either adapted the Probably Approximately Correct (PAC) Bayesian framework for federated learning (FL) or used information-theoretic PAC-Bayesian bounds while introducing their theorems, but few considering the non-IID challenges in FL. Our work presents the first non-vacuous federated PAC-Bayesian bound tailored for non-IID local
Zihao Zhao 0001 +3 more
openaire +3 more sources
Addressing Non-IID with Data Quantity Skew in Federated Learning
Non-IID is one of the key challenges in federated learning. Data heterogeneity may lead to slower convergence, reduced accuracy, and more training rounds.
Narisu Cha, Long Chang
doaj +2 more sources
Advanced Optimization Techniques for Federated Learning on Non-IID Data
Federated learning enables model training on multiple clients locally, without the need to transfer their data to a central server, thus ensuring data privacy.
Filippos Efthymiadis +3 more
doaj +2 more sources
In sentiment analysis, data are commonly distributed across many devices, and traditional machine learning requires transferring these data to a central location exposing data to security and privacy risks. Federated Learning (FL) avoids this transfer by
Davoud Gholamiangonabadi +1 more
doaj +2 more sources

