Federated learning was devised to solve the problem of difficulty in aggregating personal data, such as patient medical records or financial data, in one place. However, during the process where each institution optimizes the collaboratively trained AI to suit its own environment, a limitation arose: The AI became overly adapted to the specific institution’s data, making it vulnerable to new data.
Federated learning AI developed for hospitals and banks without personal information sharing
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