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SCIENTIA SINICA Informationis, Volume 51 , Issue 5 : 822(2021) https://doi.org/10.1360/SSI-2020-0147

Interactive gated recurrent unit and its application for estimated time of arrival

More info
  • ReceivedMay 24, 2020
  • AcceptedJul 16, 2020
  • PublishedApr 15, 2021

Abstract


Funded by

国家自然科学基金(61751307,61876095)


References

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