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From Federated Learning to X-Learning: Breaking the Barriers of Decentrality Through Random Walks

Created by
  • Haebom

Author

Allan Salihovic, Payam Abdisarabshali, Michael Langberg, Seyyedali Hosseinalipour

Outline

This paper presents a perspective on X-Learning (XL), a novel concept in distributed learning architectures. XL generalizes and extends the concept of decentralization. It introduces unexplored design considerations and degrees of freedom in XL and reveals intuitive, yet complex, connections between XL, graph theory, and Markov chains. It also suggests a series of open research directions to stimulate further research.

Takeaways, Limitations

Takeaways: Presenting a vision and exploring the possibilities of a novel distributed learning architecture called XL
Takeaways: Suggesting new research directions by revealing the relationship between XL, graph theory, and Markov chains.
Limitations: Lack of specific design and algorithms for XL, performance evaluation, etc., and is limited to conceptual discussion.
Limitations: The proposed unresolved research direction is an unexplored area, so its practical utility has not been verified.
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