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Authors:
Bäumer, Frederik Simon; Denisov, Sergej; Geierhos, Michaela; Lee, Yeong Su 
Document type:
Konferenzbeitrag / Conference Paper 
Title:
Towards Authority-Dependent Risk Identification and Analysis in Online Networks 
Collection editors:
NATO Science and Technology Organization 
Title of conference publication:
Artificial Intelligence, Machine Learning and Big Data for Hybrid Military Operations (AI4HMO) 
Subtitle of conference publication:
STO-MP-IST-190 
Organizer (entity):
NATO Science and Technology Organization 
Conference title:
IST-190 Symposium on Artificial Intelligence, Machine Learning and Big Data for Hybrid Military Operations (2021, Koblenz) 
Venue:
Koblenz 
Year of conference:
2021 
Date of conference beginning:
05.10.2021 
Date of conference ending:
06.10.2021 
Publishing institution:
NATO Science and Technology Organization 
Year:
2021 
Pages from - to:
24-1 - 24-12 
Language:
Englisch 
Keywords:
Artificial Intelligence ; Big Data ; Counter Measures and Deterrence ; Hybrid Military Operations HMO ; Hybrid Threats ; Machine Learning 
Abstract:
Interaction, discussion, and the exchange of diverse information make the Web the place it is today. Texts, images, videos, and even information such as geospatial and health data are shared at an unprecedented scale. This exchange of information on the Web generates an extensive, freely accessible data source for a variety of data-driven applications – with multiple opportunities, but also risks. In this paper, we present the overall idea of the research project ADRIAN – “Authority-Dependent Ri...    »
 
ISBN:
978-92-837-2376-9 
Department:
Fakultät für Informatik 
Institute:
INF 7 - Institut für Datensicherheit 
Chair:
Geierhos, Michaela 
Research Hub UniBw M:
CODE 
Open Access yes or no?:
Ja / Yes