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Events for September 9, 2024

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Market Power, Randomization and Regulation, Simon Loertscher (University of Melbourne)

September 9 - September 16

      SCHEDULE   Monday 9th September 2024 16th September 2024 From 9:00 to 12:15 From 13:30 to 16:45   Room 2003   Thursday   12th September 2024   From 13:30 to 16:45   Room 2003 Outline Monopoly and monopsony pricing problems are of long-standing interest in economics. With the emergence of large online […]

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12:15 pm

Simon LOERTSCHER (University of Melbourne) – “Optimal Regulation with and Without Regularity”

September 9 @ 12:15 pm - 1:30 pm

Séminaire Microéconomie : Tous les mercredis Heure : 12h15 - 13h30 Date : 09/09/2024 Salle : 3001 Simon LOERTSCHER (University of Melbourne) - "Optimal Regulation with and Without Regularity" Joint paper with Ellen Muir. Organisateurs : Julien COMBE (Pôle d'Economie du CREST) ​​​​​​​​​​​​Yves Le YAOUNQ (Pôle d'Economie du CREST) ​​​​​​​​​Matias NUNEZ (Pôle d'Economie du CREST) […]

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Omar LICANDRO (University of Leicester) “The Neoclassical Model and the Welfare Costs of Selection”

September 9 @ 12:15 pm - 1:30 pm

Macro seminar Time : 12h15 - 13h30 Date : 09 Septembre 2024 Salle 3001 Omar LICANDRO (University of Leicester) "The Neoclassical Model and the Welfare Costs of Selection" Abstract: This paper aims at sheding light on the counterbalancing costs and benefits of policies addresses to improve market selection. Having this in mind, the paper embeds […]

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2:00 pm

Etienne BOURSIER (INRIA) “Early alignment in two-layer networks training is a two-edged sword”

September 9 @ 2:00 pm - 3:30 pm

Statistical Seminar: Every Monday at 2:00 pm. Time: 2:00 pm - 3:00 pm Date: 09th September 2024 Place: 3001   Etienne BOURSIER (INRIA) "Early alignment in two-layer networks training is a two-edged sword"    Abstract: Training neural networks with first order optimisation methods is at the core of the empirical success of deep learning. The scale of […]

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