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Overview - Deep Learning 2023

Data | Runs | Participants

The Deep Learning track focuses on IR tasks where a large training set is available, allowing us to compare a variety of retrieval approaches including deep neural networks and strong non-neural approaches, to see what works best in a large-data regime.

Track coordinator(s):

  • Nick Craswell, Microsoft
  • Bhaskar Mitra, Microsoft Research
  • Emine Yilmaz, University College London
  • Daniel Campos, University of Illinois at Urbana-Champaign
  • Jimmy Lin, University of Waterloo

Tasks:

  • docs: Document Ranking
  • passages: Passage Ranking

Track Web Page: https://microsoft.github.io/msmarco/TREC-Deep-Learning