Wissem Inoubli

Associate Professor

I am an Associate Professor of Computer Science at the University of Artois and a member of the Centre de Recherche en Informatique de Lens (CRIL). Previously, I worked as a postdoctoral researcher at the Lorraine Laboratory of Research in Computer Science and its Applications (LORIA) in the BIRD team. Prior to that, I held a postdoctoral research position at Tallinn University in the Data Science Group. My research focuses on big graph analysis and explainable artificial intelligence (XIA). I earned my Ph.D. in computer science from the Faculty of Science of Tunis, University Tunis EL-Manar, Tunisia in 2021. My Ph.D. thesis was conducted in collaboration between the Faculty of Sciences of Tunis, the LORIA at the University of Lorraine, Nancy, and LIMOS at the University of Clermont Auvergne, Clermont-Ferrand. In this thesis, my primary focus was on massive data analysis (big data), complex data (big graphs), and large-scale machine learning.


Research areas

My research areas are include (but are not limited to):


  • Graph processing
  • Graph representation learning
  • Deep graph Learning
  • Explainable artificial intelligence
  • Big data

last news!

May 2023, Our paper Trans-Trip: Translation-based embedding with Triplets for Heterogeneous Graphs has been accepted at 27th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems, 6-8 September 2023, Athens Greece
May 2023, Our paper DGCN: Learning Graph Representations Via Dense Connections has been accepted at 27th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems, 6-8 September, 2023, Athens Greece
April 2023, Our paper Graph Representation Learning for Recommendation Systems: A short review has been accepted at 6th International Conference on Information and Knowledge Systems, 22nd to the 23rd of June, 2023, Portsmouth, UK
August 2022, Our paper DGL4C: a Deep Semi-supervised Graph Representation Learning Model for Resume Classification has been accepted at RecSys in HR'22: The 2nd Workshop on Recommender Systems for Human Resources, in conjunction with the 16th ACM Conference on Recommender Systems, September 18--23, 2022, Seattle, USA.
April 2022, Our paper A Distributed and Incremental Algorithm for Large-Scale Graph Clustering has been accepted for publication in Future Generation Computer Systems (IF = 7.187).
October 2021, Our paper Distributed Scalable Association Rule Mining Over Covid-19 Data has been accepted at the International Conference on Future Data and Security Engineering (FDSE)
October 2021, I'joined the montors committee of the DATA-DRIVEN ENERGY EFFICIENCY DEEPHACK Hackathon
April 2021, I'joined the organization committee of the 10th International Conference on Model and Data Engineering, 21-23 June 2021, Tallinn, Estonia
January 2021, I successfully defended my PhD thesis on Analysis and Mining of Large Dynamic Graphs: case of graph clustering
Committee: Lotfi Ben Romdhane, Osmar Zaiane, Anis Yazidi, Mohamed Mohssen Gamoudi, Sabeur Aridhi, Amel Borgi, Engelbert Mephu Nguifo. presentation


Publications

Proceedings and editorials
  • [P1] W. Inoubli, S. Aridhi J.A. Fernandes de Macêdo, E. Mephu Nguifo and K. Zeitouni. Proceedings of the Workshop on Advances in managing and mining large evolving graphs (LEG) co-located with The European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECML-PKDD 2020), Ghent Belgium, 14-18 September 2020.
Preprents or submitted papers
Paper in journals with reviewing committee
  • [J4] W. Inoubli, S. Aridhi, H. Mezni, M. Maddouri, E. Mephu Nguifo. A Distributed and Incremental Algorithm for Large-Scale Graph Clustering. Future Generation Computer Systems, Elsevier, 2022. [IF = 7.187].
  • [J3] A. Mouakhera, W. Inoubli, C. Ounoughib, A. Koa. Expect: EXplainable Prediction model for Energy ConsumpTion. Mathematics, 2022, [IF = 2.258]
  • [J2] S. Bouasker, W. Inoubli, S. Ben Yahia and G. Diallo. Pregnancy Associated Breast Cancer gene expressions : new insights on their regulation based on Rare Correlated Patterns. IEEE/ACM Transactions on Computational Biology and Bioinformatics, 2020 [IF = 3.015]
  • [J1] W. Inoubli , S. Aridhi, H. Mezni, M. Maddouri, E. M. Nguifo. An Experimental Survey on Big Data Frameworks. Future Generation Computer Systems, Elsevier, 86, pp. 546-564, 2018. [IF = 5.768]
International conferences/workshops with program committee
  • [IC7] K. Ammar, W. Inoublib> , S. Zghal and E.M Nguifo Graph Representation Learning for Recommendation Systems: A short review. 6th International Conference on Information and Knowledge Systems (ICIKS), 22nd to the 23rd of June, 2023, Portsmouth, UK.
  • [IC6] H .Mirsadeghi,H. Bahsi, W. Inoubli Deep Learning-based Detection of Cyberattacks in Sofware-Defined Networks. 13th EAI International Conference on Digital Forensics & Cyber Crime, November 16-18, 2022, Boston, United States.
  • [IC5] W. Inoubli , A. Brun DGL4C: a Deep Semi-supervised Graph Representation Learning Model for Resume Classification. RecSys in HR’22: The 2nd Workshop on Recommender Systems for Human Resources, in conjunction with the 16th ACM Conference on Recommender Systems, September 18–23, 2022, Seattle, USA .
  • [IC4] M. Shahin, W. Inoubli, S. Attique Shah, S. Ben Yahia and D. Draheim. Distributed Scalable Association Rule Mining Over Covid-19 Data. International Conference on Future Data and Security Engineering (FDSE), Virtual Mode, November 24-26, 2021.
  • [IC3] W. Inoubli , S. Aridhi, H. Mezni, M. Maddouri and E. Mephu Nguifo. A Comparative Study on Streaming Frameworks for Big Data . Proceedings of the Latin America Data Science Workshop co-located with 44th International Conference on Very Large Data Bases (VLDB 2018), Rio de Janeiro, Brazil, Aug 27, 2018.
  • [IC2] W. Inoubli ,S. Aridhi, H. Mezni, M. Maddouri and E. Mephu Nguifo. An Experimental Survey on Big Data Frameworks. Extremely Large Databases Conference (XLDB) 2017, Clermont Ferrand, France. (Lightning talk, poster)
  • [IC1] W. Inoubli , L. Almada, T.L. Coelho da Silva, G. Coutinho, L. Peres, R.P. Magalhaes, J.F. de Macedo, S. Aridhi, E. Mephu Nguifo. A Distributed Framework for Large-Scale Time-Dependent Graph Analysis. Joint Workshop on Large-Scale Evolving Networks and Graphs in conjunction with ECML-PKDD 2017, Skopje, Macedonia.
National conferences with program committee
  • [NC2] W. Inoubli, S. Aridhi, H. Mezni, M. Maddouri, E. M. Nguifo. Un algorithme distribué pour le clustering de grands graphes. Extraction et Gestion des Connaissances (EGC 2020), Bruxelles, Belgique.
  • [NC1] W. Inoubli, S. Aridhi, H. Mezni, M. Maddouri, E. M. Nguifo. An Experimental Survey on Big Data Frameworks. 34-èmes journées de la conférence « Gestion de Données – Principes, Technologies et Applications » (BDA 2018), Bucarest, Romania.

CURRICULUM VITAE

Education

  • 2020: PhD Thesis in Computer Science. Faculty of Sciences of Tunis in collaboration with LORIA university of lorraine, Nancy and LIMOS, university clermont auvergne, Clermont Ferrand
    Analysis and Mining of Large Dynamic Graphs: Graphs clustering application
  • 2014: Master degree in Computer Science : Data, Knowledge and Distributed Systems,Faculty of Law, Economics and Management of Jendouba
  • 2011: Bachelor degree in Computer Science, Faculty of Law, Economics and Management of Jendouba

Experience

  • Since september 2023 : Associate Professor, University of Artois, Lens, France
  • February 2022-August 2023: Postdoctoral Researcher, LORIA, Nancy, France
  • February 2021-January 2022: Postdoctoral Researcher, Tallinn University, Tallinn, Estonia
  • 2019-2020: Teaching Assistant(ATER) IDMC, University of Lorraine,Nancy, France
  • 2017-2019: Teaching Assistant, Faculty of Law, Economics and Management of Jendouba, Jendouba, Tunisia
  • 2015-2017: Big Data Enginer. TCB consulting service, Tunis, Tunisia

skills

Programming Languages & Tools




contact

wissem dot inoubli at univ dash artois dot fr
CRIL, University of Artois
CRIL Lab, Faculty of Science, Office 353
Flag Counter