Data island effectively blocks the practical application of machine learning. To meet this challenge, a new framework known as federated learning was created. It allows model training on a large amount of scattered data owned by different data providers. This article presents a parallel solution for computing logistic regression based on distributed asynchronous task framework. Compared to the existing work, our proposed solution does not rely on any third-party coordinator, and hence has better security and can solve the multitraining problem. The logistic regression based on homomorphic encryption is implemented in Python, which is used for vertical federated learning and prediction of the resulting model. We evaluate the proposed solutio...
Wang R, Ersoy O, Zhu H, Jin Y, Liang K. FEVERLESS: Fast and Secure Vertical Federated Learning based...
Federated learning (FL) is a privacy-preserving distributed learning approach that allows multiple p...
Security concerns have been raised since big data became a prominent tool in data analysis. For inst...
Background: Learning a model without accessing raw data has been an intriguing idea to security and ...
Machine learning on (homomorphic) encrypted data is a cryptographic method for analyzing private and...
Vertical federated learning (VFL) attracts increasing attention due to the emerging demands of multi...
Background Security concerns have been raised since big data became a prominent too...
In this report, to maximise data privacy, we conducted Federated Learning algorithm with Homomorphic...
Abstract Background One of the tasks in the 2017 iDASH secure genome analysis competition was to ena...
Standard centralized machine learning applications require the participants to uploadtheir personal ...
Abstract Background Logistic regression is a popular technique used in machine learning to construct...
With growing concerns about privacy and the fact that data are distributed among multiple parties in...
With the rise of social networks and the introduction of data protection laws, companies are trainin...
One of the challenges in the Internet of Things systems is the security of the critical data, for ex...
The need for a method to create a collaborative machine learning model which can utilize data from d...
Wang R, Ersoy O, Zhu H, Jin Y, Liang K. FEVERLESS: Fast and Secure Vertical Federated Learning based...
Federated learning (FL) is a privacy-preserving distributed learning approach that allows multiple p...
Security concerns have been raised since big data became a prominent tool in data analysis. For inst...
Background: Learning a model without accessing raw data has been an intriguing idea to security and ...
Machine learning on (homomorphic) encrypted data is a cryptographic method for analyzing private and...
Vertical federated learning (VFL) attracts increasing attention due to the emerging demands of multi...
Background Security concerns have been raised since big data became a prominent too...
In this report, to maximise data privacy, we conducted Federated Learning algorithm with Homomorphic...
Abstract Background One of the tasks in the 2017 iDASH secure genome analysis competition was to ena...
Standard centralized machine learning applications require the participants to uploadtheir personal ...
Abstract Background Logistic regression is a popular technique used in machine learning to construct...
With growing concerns about privacy and the fact that data are distributed among multiple parties in...
With the rise of social networks and the introduction of data protection laws, companies are trainin...
One of the challenges in the Internet of Things systems is the security of the critical data, for ex...
The need for a method to create a collaborative machine learning model which can utilize data from d...
Wang R, Ersoy O, Zhu H, Jin Y, Liang K. FEVERLESS: Fast and Secure Vertical Federated Learning based...
Federated learning (FL) is a privacy-preserving distributed learning approach that allows multiple p...
Security concerns have been raised since big data became a prominent tool in data analysis. For inst...