Francesco Pozza (@frapozza) 's Twitter Profile
Francesco Pozza

@frapozza

PostDoc in Statistics

ID: 1612898308162207744

linkhttps://francesco16p.github.io/ calendar_today10-01-2023 19:46:03

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37 Followers

58 Following

Daniele Durante (@danieledurante2) 's Twitter Profile Photo

The skewed Bernstein-von Mises theorem is online arxiv.org/abs/2301.03038. With Francesco Pozza and Botond Szabo we derive a new limiting law given by tractable generalized skew-normals that remarkably improves the convergence rate (and practical accuracy) of the classical BvM result!

Daniele Durante (@danieledurante2) 's Twitter Profile Photo

🀩 Congratulations to my former PhD student Francesco Pozza who received the Laplace award πŸ† at #JSM2024, for the article "skewed Bernstein-von Mises theorem and skew-modal approximations" (arxiv.org/abs/2301.03038) (recently accepted for publication in the Annals of Statistics ‼️)

🀩 Congratulations to my former PhD student <a href="/FraPozza/">Francesco Pozza</a> who received the Laplace award πŸ† at #JSM2024, for the article "skewed Bernstein-von Mises theorem and skew-modal approximations" (arxiv.org/abs/2301.03038) (recently accepted for publication in the Annals of Statistics ‼️)
Sirio Legramanti (@siriolegramanti) 's Twitter Profile Photo

Our paper "Concentration of discrepancy-based approximate Bayesian computation via Rademacher complexity" has been accepted by the Annals of Statistics! πŸŽ‰πŸŽ‰πŸŽ‰ Thanks to my coauthors Daniele Durante and @PierreAlquier for sharing this amazing journey! πŸ™ arxiv.org/abs/2206.06991

Daniele Durante (@danieledurante2) 's Twitter Profile Photo

😎 For any, already-derived, symmetric approximation of a generic posterior distribution, we provide, at no additional optimization costs, a similarly-tractable, yet provably more accurate, skew-symmetric approximation! (arxiv.org/abs/2409.14167) (with Francesco Pozza and Botond Szabo)

😎 For any, already-derived, symmetric approximation of a generic posterior distribution, we provide, at no additional optimization costs, a similarly-tractable, yet provably more accurate, skew-symmetric approximation! (arxiv.org/abs/2409.14167) (with <a href="/FraPozza/">Francesco Pozza</a> and <a href="/BotondSzabo6/">Botond Szabo</a>)