Identification of Causal Dependencies by using Natural Language Processing: A Survey
ENASE 2019: Proceedings of the 14th International Conference on Evaluation of Novel Approaches to Software Engineering 2019
Ērika Nazaruka

Identification of cause-effect relations in the domain is crucial for construction of its correct model, and especially for the Topological Functioning Model (TFM). Key elements of the TFM are functional characteristics of the system and cause-effect relations between them. Natural Language Processing (NLP) can help in automatic processing of textual descriptions of functionality of the domain. The current research illustrates results of a survey of research papers on identification and extracting cause-effect relations from text using NLP and other techniques. The survey shows that expression of cause-effect relations in text can be very different. Sometimes the same language constructs indicate both causal and non-causal relations. Hybrid solutions that use machine learning, ontologies, linguistic and syntactic patterns as well as temporal reasoning show better results in extracting and filtering cause-effect pairs. Multi cause and multi effect domains still are not very well studied.


Keywords
System Modelling, Knowledge Extraction, Natural Language Processing, Topological Functioning Model
DOI
10.5220/0007842706030613
Hyperlink
https://www.scitepress.org/Link.aspx?doi=10.5220/0007842706030613

Nazaruka, Ē. Identification of Causal Dependencies by using Natural Language Processing: A Survey. In: ENASE 2019: Proceedings of the 14th International Conference on Evaluation of Novel Approaches to Software Engineering, Greece, Heraklion, 4-5 May, 2019. [S.l.]: SciTePress, 2019, pp.603-613. ISBN 978-989-758-375-9. Available from: doi:10.5220/0007842706030613

Publication language
English (en)
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