Weighted Aggregation

Description: Weighted Aggregation is a fundamental technique in the field of Federated Learning, used to combine model updates from different clients based on their respective weights. This approach allows machine learning models to be trained collaboratively without the need to share sensitive data, which is crucial in contexts where privacy and data security are paramount. In Weighted Aggregation, each client contributes to the global model update according to the amount of data they hold or the relevance of their contribution, meaning that models from clients with more data or higher quality data have a more significant impact on the final model. This technique not only improves the accuracy of the global model but also optimizes the training process by reducing variability in updates. Weighted Aggregation has become an essential component in the development of distributed machine learning systems, where collaboration among multiple entities is necessary to achieve effective results without compromising individual data privacy.

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