PhD student– Information Extraction & Natural Language Processing

Starting now / at the soonest possible date, the Data & Knowledge
Engineering group at Heinrich-Heine-University (HHU, Düsseldorf),
affiliated with Knowledge Technologies for Social Sciences (KTS,
https://www.gesis.org/en/kts) at GESIS (Cologne) and the Computational
Linguistics department at HHU (
https://www.ling.hhu.de/bereiche-des-institutes/abteilung-fuer-computerlinguistik)
are looking for a

*PhD student– Information Extraction & Natural Language Processing*
(Salary group 13 TV-L, working time 75%-100%, initially limited to 36
months with the possibility of further extension)

In the context of the research project "NewOrder", we are investigating
scientific online discourse in news & social media, in an interdisciplinary
consortium involving researchers from Computer Science, Psychology,
Political and Communication Science. Our research will be concerned with
novel Natural Language Processing (NLP) methods for the analysis of
scientific online discourse (e.g. on Twitter) addressing challenges arising
from its informal nature and heterogeneity. For instance, references to
scientific works (e.g. publications, studies, datasets), scientists or
scientific organisations are often provided in informal and ambiguous ways.
Other challenges include the dynamically evolving vocabulary posing
challenges for reuse and adaptation of both pretrained language models as
well as NLP models finetuned towards specific downstream tasks. Hence,
detecting and disambiguating informal science discourse and associated
claims remains a challenging problem.

Your tasks will be:
*******************
* Research in fields such as NLP, Machine Learning, Language Modeling and
Representation learning, specifically with the aim to extract structured
information from online discourse data
* Develop NLP methods for (i) the detection, disambiguation and
classification of sources of science-related information on social media,
(ii) assessing the quality and credibility of sources and claims and (iii)
investigating implicit language cues for cognitive states and source
characteristics/traits
* Writing, publishing and presenting project results
* Collaboration with team members and project partners in an
interdisciplinary consortium

Your profile:
**************
* University degree (diploma/MSc) in Computational Linguistics, Computer
Science or related fields
* Research interests in NLP, machine learning, data mining, large language
models
* Hands-on experience with Python and handling big datasets, ideally
experience with Big Data Frameworks (e.g. Spark/Hadoop)
* Knowledge of ML-Frameworks such as TensorFlow and PyTorch
* Ability to communicate fluently in English mandatory, basic knowledge of
the German language desirable

What we offer:
***************
* Flexible working hours and home office arrangements
* A fast growing and international working environment with a lot of
creative scientific freedom
* Access to unique research data, (social) web archives and behavioral data
* Support of collaborations with international research labs and experts
through an extensive international exchange programme

The PhD research will be supervised by Prof. Dr. Stefan Dietze (Scientific
Director of KTS at GESIS and Professor for Data & Knowledge Engineering at
HHU) & Prof. Dr. Laura Kallmeyer (Chair of Computational Linguistics
department at HHU).

For further information please contact Stefan Dietze ([email protected])
and/or Laura Kallmeyer ([email protected]).

Interested?
*************
Please apply by sending your complete application documents as a single PDF
file to [email protected] by 20 December 2023.

-- 
Prof. Dr. Laura Kallmeyer
Institut für Linguistik
Heinrich-Heine Universität Duesseldorf
Universitaetsstr. 1
D-40225 Duesseldorf, Germany
https://user.phil.hhu.de/kallmeyer/
Phone +49 (0)211 8113899
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