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Workshop on Econometrics and Learning

Key Details:

To register for this free workshop please send an email with title “Registration” to Riccardo Passeggeri –  riccardo.passeggeri@imperial.ac.uk.

For further information please visit the workshop website: https://sites.google.com/view/econometrics-and-learning

Registration is
now closed

Talk Summary

The Econometrics and Learning workshop is a one-day workshop which will focus on econometrics, machine learning and their connections. It will take place on the 3rd of April and will feature 12 experts in field of machine learning and/or econometrics. The workshop is sponsored by Imperial-X and it has been organised by academics from both the Department of Mathematics and the Business School, with the ultimate goal to foster cross-departmental collaboration. The workshop is open to everybody, but it requires a (free) registration.

The organisers Riccardo Passeggeri, Alessandra Luati and Paolo Zaffaroni.

Speakers

  • Heather Battey (Imperial)
  • Daniele Bianchi (QMUL)
  • Svetlana Bryzgalova (LBS)
  • Valentina Corradi (Surrey)
  • Andrew Harvey (Cambridge)
  • Rustam Ibragimov (Imperial)
  • Giulia Livieri (LSE)
  • Alessandra Luati (Imperial and Bologna)
  • Hao Ma (QMUL)
  • Eric Renault (Warwick)
  • Martin Weidner (Oxford)
  • Paolo Zaffaroni (Imperial)

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