Regression-based hyperparameter learning for support vector machines

S Peng, W Wang, Y Chen, X Zhong… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
Unification of classification and regression is a major challenge in machine learning and has
attracted increasing attentions from researchers. In this article, we present a new idea for this …

Resource-constrained federated edge learning with heterogeneous data: Formulation and analysis

Y Liu, Y Zhu, JQ James - IEEE Transactions on Network …, 2021 - ieeexplore.ieee.org
Efficient collaboration between collaborative machine learning and wireless communication
technology, forming a Federated Edge Learning (FEEL), has spawned a series of next …

Overcoming Spatial-Temporal Catastrophic Forgetting for Federated Class-Incremental Learning

H Yu, X Yang, X Gao, Y Feng, H Wang… - Proceedings of the 32nd …, 2024 - dl.acm.org
This paper delves into federated class-incremental learning (FCiL), where new classes
appear continually or even privately to local clients. However, existing FCiL methods suffer …

Blockchain-based secure medical data management and disease prediction

M Wang, H Zhang, H Wu, G Li, K Gai - Proceedings of the Fourth ACM …, 2022 - dl.acm.org
Healthcare systems based on the Internet of Things have an increasing demand for health
sensing technology. To manage the data collected and sampled by medical devices …

Communication Efficiency and Non-Independent and Identically Distributed Data Challenge in Federated Learning: A Systematic Mapping Study

B Alotaibi, FA Khan, S Mahmood - Applied Sciences, 2024 - mdpi.com
Federated learning has emerged as a promising approach for collaborative model training
across distributed devices. Federated learning faces challenges such as Non-Independent …

ATHENA-FL: Avoiding Statistical Heterogeneity with One-versus-All in Federated Learning

LAC de Souza, GF Camilo… - Journal of Internet …, 2024 - journals-sol.sbc.org.br
Federated learning (FL) is a distributed approach to train machine learning models without
disclosing private data from participating clients to a central server. Nevertheless, FL training …

Empowering precise advertising with Fed-GANCC: A novel federated learning approach leveraging Generative Adversarial Networks and group clustering

C Su, J Wei, Y Lei, H Xuan, J Li - Plos one, 2024 - journals.plos.org
In the realm of targeted advertising, the demand for precision is paramount, and the
traditional centralized machine learning paradigm fails to address this necessity effectively …

Task Selection and Resource Optimization in Multi-Task Federated Learning with Model Decomposition

H Sun, M Chen, Z Yang, Y Pan… - IEEE …, 2024 - ieeexplore.ieee.org
In this letter, we investigate the training latency minimization problem for a multi-task
federated learning (FL) framework with model decomposition over wireless communication …

Traffic volume prediction on highway network with mix-of-expert Transformer

ZE Shen - 2023 - researchsquare.com
Accurate traffic volume prediction is essential for effective traffic management and urban
planning. This paper introduces a novel approach, the Mix-of-Expert Transformer model, for …

ATHENA-FL: Evitando a Heterogeneidade Estatística através do Um-contra-Todos no Aprendizado Federado

LAC de Souza, GF Camilo, GAF Rebello… - Anais do VII Workshop …, 2023 - sol.sbc.org.br
O aprendizado federado é um novo paradigma que permite o treinamento de modelos de
aprendizado de máquina através da colaboração entre clientes e um servidor de …