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=Deep Learning=

Involved People
M.Sc. Ahmed Abouelazm
M.Sc. Daniel Bogdoll
M.Sc. Marcus Fechner
M.Sc. Tim Joseph
M.Sc. Nico Lambing
M.Sc. Stefan Orf
M.Sc. Svetlana Pavlitskaya
M.Sc. Nikolai Polley
M.Sc. Rupert Polley
M.Sc. Nicholas Popovic
M.Sc. Zhan Qu
M.Sc. Helen Schneider
M.Sc. Helen Schneider/en
M.Sc. Philipp Stegmaier
Prof. Dr. York Sure-Vetter



Active Projects


Publications Belonging to the Area of Research

Article
Michael Färber, Coutinho, Shuzhou Yuan
Biases in Scholarly Recommender Systems: Impact, Prevalence, and Mitigation
Scientometrics, 2023
(Details)


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inproceedings
Nicholas Popovic, Michael Färber
Few-Shot Document-Level Relation Extraction
Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies, Association for Computational Linguistics
(Details)


Igor Shapiro, Tarek Saier, Michael Färber
Sequence Labeling for Citation Field Extraction from Cyrillic Script References
Proceedings of the AAAI Workshop on Scientific Document Understanding (SDU∂AAAI'22), ACM
(Details)


Michael Färber, Nicolas Weber
When to Use Which Neural Network? Finding the Right Neural Network Architecture for a Research Problem
Proceedings of the AAAI Workshop on Scientific Document Understanding (SDU∂AAAI'22), ACM
(Details)


Nicholas Popovic, Walter Laurito, Michael Färber
AIFB-WebScience at SemEval-2022 Task 12: Relation Extraction First - Using Relation Extraction to Identify Entities
Proceedings of the 16th International Workshop on Semantic Evaluation (SemEval-2022), Association for Computational Linguistics
(Details)


Michael Färber, Vinzenz Zinecker, Isabela Bragaglia, Sebastian Celis, Maria Duma
C-Rex: A Comprehensive System for Recommending In-Text Citations with Explanations
Proceedings of the 1st International Workshop on Scientific Knowledge: Representation, Discovery, and Assessment (Sci-K'21∂WWW'21), ACM
(Details)


Kevin Förderer, Mischa Ahrens, Kaibin Bao, Ingo Mauser, Hartmut Schmeck
Towards the Modeling of Flexibility Using Artificial Neural Networks in Energy Management and Smart Grids
In ACM, Proceedings of the Ninth International Conference on Future Energy Systems (e-Energy '18), pages: 85-90, ACM, New York, NY, USA, Juni, 2018
(Details)


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