Interpretable Data Fusion for Distributed Learning: A Representative Approach via Gradient Matching
This work addresses the need for human interpretability in distributed learning systems, which is an incremental improvement over existing methods.
The paper tackles the problem of making distributed learning more interpretable by introducing a representative-based approach that transforms raw data into virtual representations, achieving competitive or better accuracy and convergence compared to traditional Federated Learning, especially in complex scenarios.
This paper introduces a representative-based approach for distributed learning that transforms multiple raw data points into a virtual representation. Unlike traditional distributed learning methods such as Federated Learning, which do not offer human interpretability, our method makes complex machine learning processes accessible and comprehensible. It achieves this by condensing extensive datasets into digestible formats, thus fostering intuitive human-machine interactions. Additionally, this approach maintains privacy and communication efficiency, and it matches the training performance of models using raw data. Simulation results show that our approach is competitive with or outperforms traditional Federated Learning in accuracy and convergence, especially in scenarios with complex models and a higher number of clients. This framework marks a step forward in integrating human intuition with machine intelligence, which potentially enhances human-machine learning interfaces and collaborative efforts.