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Publications by Probability

He, Y. et al. (2023) “Robust Angular Synchronization via Directed Graph Neural Networks”, arXiv.
Becker, K., Etheridge, A. and Letter, I. (2023) “Branching stable processes and motion by mean curvature flow”, arXiv.
Temčinas, T., Nanda, V. and Reinert, G. (2023) “Goodness-of-fit via Count Statistics in Dense Random Simplicial Complexes”, arXiv.
Barton, N., Etheridge, A. and Veber, A. (2023) “The infinitesimal model with dominance”, Genetics, 225(2).
Armbruster, S. and Reinert, G. (2023) “COVID-19 incidence in the Republic of Ireland: A case study for network-based time series models.”
Limnios, S. et al. (2023) “SaGess: Sampling Graph Denoising Diffusion Model for Scalable Graph Generation”, arXiv.
Foutel-Rodier, F., Charpentier, A. and Guérin, H. (2023) “Optimal Vaccination Policy to Prevent Endemicity: A Stochastic Model”, arXiv.
Rembart, F. and Winkel, M. (2023) “A binary embedding of the stable line-breaking construction”, Stochastic Processes and their Applications, 163, pp. 424–472.
Berestycki, J. et al. (2023) “KPP traveling waves in the half-space”, arXiv.
Mantziou, A. et al. (2023) “The GNAR-edge model: A network autoregressive model for networks with time-varying edge weights”, arXiv.
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