Unlocking Potential of ‘Federated’ Approach in Machine Learning: Insights from Duke Professor

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Jiaming Xu, an associate professor at Duke’s Fuqua School of Business, has highlighted the potential of a new approach to Artificial Intelligence (AI) systems training called federated learning. Xu said the approach works by training a central model using inputs received from decentralised sources, such as semi-autonomous cars, bank fraud detection systems and medical wearables. Xu said edge devices, such as smartphones, play a key role.
Xu said federated learning can work effectively because data from device to device is shared without it leaving the device, thereby minimising the risk of hacking and other privacy concerns. However, Xu admitted that communications between edge devices and servers create the potential for attacks such as eavesdropping. To combat this, Xu has developed strategies for optimising query complexity to enable secrecy while requiring the least amount of communication.

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Frequently Asked Questions (FAQs) Related to the Above News

What is federated learning?

Federated learning is a machine learning approach that involves training a central model using inputs received from decentralised sources, such as smartphones, semi-autonomous cars, bank fraud detection systems, and medical wearables.

What is the role of edge devices in federated learning?

Edge devices, such as smartphones, play a crucial role in federated learning as they act as decentralised sources of data inputs for training the central model.

How does federated learning minimise privacy concerns and risks of hacking?

Federated learning minimises privacy concerns and risks of hacking by sharing data from device to device without it leaving the device, thereby avoiding the need for centralised data storage.

What are the potential security risks in federated learning?

The potential security risks in federated learning include communication between edge devices and servers which can make them vulnerable to attacks such as eavesdropping.

How does Professor Xu address the potential security risks of federated learning?

Professor Xu has developed strategies for optimising query complexity in federated learning to enable secrecy while requiring the least amount of communication, thus addressing potential security risks.

Please note that the FAQs provided on this page are based on the news article published. While we strive to provide accurate and up-to-date information, it is always recommended to consult relevant authorities or professionals before making any decisions or taking action based on the FAQs or the news article.

Kunal Joshi
Kunal Joshi
Meet Kunal, our insightful writer and manager for the Machine Learning category. Kunal's expertise in machine learning algorithms and applications allows him to provide a deep understanding of this dynamic field. Through his articles, he explores the latest trends, algorithms, and real-world applications of machine learning, making it accessible to all.

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