六合彩开奖结果

Data Challenge

Data Challenge

The Fourth Annual Atlantic Causal Inference Conference (ACIC) Data Challenge provides an opportunity to compare causal inference methodologies across a variety of data generating processes (DGP).

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As in previous years, the challenge focuses on computational methods of inferring causal effects from quasi-real world data. This year鈥檚 target of estimation is the population average treatment effect (ATE). There will be two tracks:

  • Low dimensional datasets (varying size, e.g., 500 x 20)
  • High dimensional datasets (varying size, e.g. 1000 x 200, 2000 x 200)

Participants can download datasets (between 2000 and 3000 datasets in each track), run analyses using their own computing resources, and upload results to the Challenge website for evaluation.

听听(bottom of the page).

The deadline for submitting results is April 15, 2019.

Timeline

The 2019 Data Challenge is now open. Preliminary results will be announced during the conference.

Key Dates

  • mid-December, 2018: The Challenge website goes live. Sample datasets that can be used to develop your approach will be available for download.
  • mid-January, 2019: Challenge Datasets available for download
  • mid-April, 2019: Deadline for results files to be uploaded

Organizing Committee

Susan Gruber, Putnam Data Sciences, LLC
Genevi猫ve Lefebvre, Universit茅 du Qu茅bec 脿 Montr茅al
Tibor Schuster, 六合彩开奖结果
Alexandre Piche, MILA, Universit茅 de Montr茅al, Element AI

For more Information, contact sgruber [at] putnamds.com (subject: Data%20Challenge%20ACIC%202019) (Susan Gruber)

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