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News/Towards Uncertainty-Aware Federated Granger Causal Learning
arxiv
PublishedMay 13, 2026 at 4:00 AM
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Towards Uncertainty-Aware Federated Granger Causal Learning

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Publisher summary· verbatim

arXiv:2602.13004v2 Announce Type: replace Abstract: Granger causality recovers directed interactions from time-series data, but in many distributed systems, the data are vertically partitioned across clients, with each client observing only the variables of its own subsystem. Federated Granger causa

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#federated-learning#time-series#causality#uncertainty

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Source
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arxiv
Read original ↗All from arxiv →
Tags
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#federated-learning#time-series#causality#uncertainty

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