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Not All Linearizations Are Equally Data-Hungry in Sequence Labeling
  Parsing

Not All Linearizations Are Equally Data-Hungry in Sequence Labeling Parsing

17 August 2021
Alberto Muñoz-Ortiz
Michalina Strzyz
David Vilares
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Papers citing "Not All Linearizations Are Equally Data-Hungry in Sequence Labeling Parsing"

4 / 4 papers shown
Title
Parsing linearizations appreciate PoS tags - but some are fussy about
  errors
Parsing linearizations appreciate PoS tags - but some are fussy about errors
Alberto Muñoz-Ortiz
Mark Anderson
David Vilares
Carlos Gómez-Rodríguez
32
2
0
27 Oct 2022
The Fragility of Multi-Treebank Parsing Evaluation
The Fragility of Multi-Treebank Parsing Evaluation
I. Alonso-Alonso
David Vilares
Carlos Gómez-Rodríguez
22
1
0
14 Sep 2022
Is POS Tagging Necessary or Even Helpful for Neural Dependency Parsing?
Is POS Tagging Necessary or Even Helpful for Neural Dependency Parsing?
Houquan Zhou
Yu Zhang
Zhenghua Li
Min Zhang
38
24
0
06 Mar 2020
NCRF++: An Open-source Neural Sequence Labeling Toolkit
NCRF++: An Open-source Neural Sequence Labeling Toolkit
Jie Yang
Yue Zhang
55
188
0
14 Jun 2018
1