High Quality Knowledge Graphs from recent English, French and German Emergent Trends with the example of COVID-19
Principle Investigator
Research Associate
The COVID-19 pandemic has stopped social and economical activities today. The total cost of the recent pandemic is estimated by 16 trillion USD by only considering the US and aggregating mortality, morbidity, mental health conditions, and direct economic losses on the assumption of the pandemic is substantially ending in fall of 2021. Hence an extensive analysis of the COVID-19 outbreak and the global responses are essential for preparing humanity for such future situations. Since the early 2020, hundreds of studies have been carried out to analyse, understand, track and model various aspects of the pandemic. Our project aims at providing the means for such kind of analysis, focusing for the first time at capturing inconsistencies/complementarities between these studies through (1) a general view of how facts about the pandemic evolve across time and languages, and (2) a high quality evaluation of these facts in enriched knowledge graphs to support further analysis. This is a highly collaborative project involving complementary expertise from natural language processing, databases and knowledge graph in order to generate high-quality knowledge graphs for emergent English, French and German trends with the example of COVID-19. The methodology and results of QualityOnt were designed to be generic enough to ensure their reusability in other future sanitary crises situations.
Partners
- Université Paris Cité (coordinator)
- Université de Toulouse
Links
- Project details: https://helios2.mi.parisdescartes.fr/~sseifedd/qualityont/
- GEPRIS information: https://gepris.dfg.de/gepris/projekt/490998901context=projekt&task=showDetail&id=490998901&
Activities
- Keynote Speaker: Sven Groppe, Leveraging Artificial Intelligence and Machine Learning in Pandemics using COVID-19 as a Case Study, Innovative Science and Technology after the Emergence of COVID-19: The 25th SANKEN International Symposium (online), Osaka, Japan
- Keynote Speaker: Sven Groppe, Leveraging Artificial Intelligence and Machine Learning in Pandemics using COVID-19 as a Case Study, International Semantic Intelligence Conference (ISIC 2022) / International Healthcare Informatics Conference (IHIC 2022) (online)
- Tutorials: Sven Groppe, Sanju Tiwari, Farah Benamara, Soror Sahri, Analysis of the Impact of COVID-19 Ontologies, The Knowledge Graph Conference (KGC), New York (online), USA
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Invided Speaker: Dr. Sanju Tiwari DAAD Postdoc-Net-AI-Fellow, From Ontologies to Knowledge Graphs An Overview
Publications
2024
Assessing the Impact of Government Policies on Covid-19 Spread: A Machine Learning Approach, in 10th International Conference on Machine Learning, Optimization, and Data Science (LOD), Tuscany, Italy , 2024.
Assessing the Impact of Government Policies on Covid-19 Spread: A Machine Learning Approach, in 10th International Conference on Machine Learning, Optimization, and Data Science (LOD), Tuscany, Italy , 2024.
Developers’ Perspective on Trustworthiness of Code Generated by ChatGPT: Insights from Interviews, in Applied Machine Learning and Data Analytics (AMLDA 2023), Lübeck, Germany , Springer Nature Switzerland, 2024. pp. 215–229.
Datei: | 978-3-031-55486-5_16 |
Research Trends for the Interplay between Large Language Models and Knowledge Graphs, in VLDB 2024 Workshop: The International Workshop on Data Management Opportunities in Unifying Large Language Models + Knowledge Graphs (LLM+KG), Guangzhou, China , 2024.
Datei: | LLM+KG-9.pdf |
Research Trends for the Interplay between Large Language Models and Knowledge Graphs, in VLDB 2024 Workshop: The International Workshop on Data Management Opportunities in Unifying Large Language Models + Knowledge Graphs (LLM+KG), Guangzhou, China , 2024.
Datei: | LLM+KG-9.pdf |
Towards Generating High-Quality Knowledge Graphs by Leveraging Large Language Models, in The 29th Annual International Conference on Natural Language \& Information Systems (NLDB 2024), Turin, Italy , 2024.
Datei: | 978-3-031-70239-6_31 |
Towards Generating High-Quality Knowledge Graphs by Leveraging Large Language Models, in The 29th Annual International Conference on Natural Language \& Information Systems (NLDB 2024), Turin, Italy , 2024.
Datei: | 978-3-031-70239-6_31 |
2023
Exploring In-Context Learning Capabilities of Foundation Models for Generating Knowledge Graphs from Text, CoRR , vol. abs/2305.08804, 2023.
Datei: | arXiv.2305.08804 |
Bibtex: | @inproceedings{Khorashadizadeh2023Text2KGInContextLearning, title = {Exploring In-Context Learning Capabilities of Foundation Models for Generating Knowledge Graphs from Text}, author = {Hanieh Khorashadizadeh and Nandana Mihindukulasooriya and Sanju Tiwari and Jinghua Groppe and Sven Groppe}, booktitle = {Proceedings of the 2nd International Workshop on Knowledge Graph Generation From Text (Text2KG) in conjunction with the Extended Semantic Web Conference (ESWC 2023), Hersonissos, Greece}, year = {2023}, url = {https://ceur-ws.org/Vol-3447/Text2KG_Paper_9.pdf} } |
Personal Knowledge Graphs (PKGs): Methodology, tools and applications, Institution of Engineering and Technology, 2023, pp. 277--293.
Datei: | pbpc063e_ch12 |
2022
A Survey on Covid-19 Knowledge Graphs and their Data Sources, in Proceedings of the EAI International Conference on Intelligent Systems and Machine Learning (EAI ICISML 2022) , 2022.
Datei: | 978-3-031-35078-8_13 |
Bibtex: | @inproceedings{Khorashadizadeh22Covid19, author = {Hanieh Khorashadizadeh and Sanju Tiwari and Sven Groppe}, title = {A Survey on Covid-19 Knowledge Graphs and their Data Sources}, year = {2022}, booktitle = {Proceedings of the EAI International Conference on Intelligent Systems and Machine Learning (EAI ICISML 2022)}, location = {Hyderabad, India}, url = {https://doi.org/10.1007/978-3-031-35078-8_13} } |
Short Analysis of the Impact of COVID-19 Ontologies, in International Semantic Intelligence Conference (ISIC 2022), online , 2022.
Datei: | 978-981-19-7126-6_17 |