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Joachim Daiber
Joachim Daiber
Applied Scientist, Co-Founder at Objective, Inc.
Verified email at objective.inc - Homepage
Title
Cited by
Cited by
Year
Improving Efficiency and Accuracy in Multilingual Entity Extraction
J Daiber, M Jakob, C Hokamp, PN Mendes
Proceedings of the 9th International Conference on Semantic Systems, 121-124, 2013
7132013
MKQA: A linguistically diverse benchmark for multilingual open domain question answering
S Longpre, Y Lu, J Daiber
Transactions of the Association for Computational Linguistics 9, 1389-1406, 2021
1062021
Splitting Compounds by Semantic Analogy
J Daiber, L Quiroz, R Wechsler, S Frank
1st Deep Machine Translation Workshop, 20-28, 2015
332015
Evaluating DBpedia Spotlight for the TAC-KBP Entity Linking Task
PN Mendes, J Daiber, M Jakob, C Bizer
Proceedings of the TACKBP 2011 Workshop 116, 118-120, 2011
262011
Universal Reordering via Linguistic Typology
J Daiber, M Stanojevic, K Sima’an
COLING 2016, the 26th International Conference on Computational Linguistics …, 2016
132016
The Denoised Web Treebank: Evaluating Dependency Parsing under Noisy Input Conditions
J Daiber, R van der Goot
Proceedings of the Tenth International Conference on Language Resources and …, 2016
132016
Examining the Relationship between Preordering and Word Order Freedom in Machine Translation
J Daiber, M Stanojevic, W Aziz, K Sima’an
Proceedings of the First Conference on Machine Translation. Volume 1 …, 2016
132016
Machine Translation with Source-Predicted Target Morphology
J Daiber, K Sima’an
Proceedings of the 15th Machine Translation Summit (MT Summit 2015), 283--296, 2015
102015
Evaluating the Impact of Phrase Recognition on Concept Tagging
PN Mendes, J Daiber, RK Rajapakse, F Sasaki, C Bizer
Proceedings of the International Conference on Language Resources and …, 2012
102012
Delimiting Morphosyntactic Search Space with Source-Side Reordering Models
J Daiber, K Sima’an
1st Deep Machine Translation Workshop, 29-38, 2015
32015
Typologically robust statistical machine translation: Understanding and exploiting differences and similarities between languages in machine translation
J Daiber
ILLC dissertation series DS-2018-05, 2018
2*2018
Robust Parsing of Noisy Content
J Daiber
Univerzita Karlova, Matematicko-fyzikální fakulta, 2013
2013
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Articles 1–12