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François Fouss

Professeur ordinaire

SSH/LSM Louvain School of Management (LSM)

SSH/LRIM Louvain Research Institute in Management and Organizations (LouRIM)

SST/ICTM Institute of Information and Communication Technologies, Electronics and Applied Mathematics (ICTEAM)

François Fouss est vice-recteur en Hainaut depuis septembre 2025. Membre du conseil rectoral, il élabore et met en œuvre la stratégie de développement de l’Université catholique de Louvain en Hainaut (Mons, Tournai, Charleroi), tant sous l’angle des programmes d’enseignement que des activités de recherche et de services à la société.

François Fouss est professeur à la Louvain School of Management (LSM), Université catholique de Louvain (UCLouvain) en Belgique. Il est rattaché au Louvain Research Institute in Management and Organizations (LouRIM).

Ses enseignements sont axés autour de l'informatique et la société numérique, des concepts de base à l'analyse de réseaux/graphes, en passant par l'algorithmique et la programmation, la gestion de données ou encore l'analyse de données (Data Analytics/Science) - voir ici pour une infographie récapitulative.

Ses recherches sont axées autour des NTIC et de l'analyse de données, et touchent à différents domaines tels que la théorie des graphes, les systèmes de recommandations, la fouille de données ("data mining"), l'apprentissage automatique ("machine learning"), ou encore la segmentation. L'axe de travail est double, d'une part dans le développement de nouveaux algorithmes, et d'autre part dans l'analyse des impacts de ces outils et des NTIC.

Année Libellé Établissement
2007 Docteur en sciences de gestion Université catholique de Louvain (Belgique)
2002 Diplômé d'études spécialisées en informatique de gestion - Master in Information Systems Université catholique de Louvain (Belgique)
2001 Ingénieur de gestion Université catholique de Louvain (Belgique)
1998 Candidat ingénieur de gestion Université catholique de Louvain (Belgique)

Unités d'enseignement pour 2025

Libellé Code
Informatique et algorithmique MINFO1201
Gestion de données MINFO1301
Data Analytics MLSMM2116
Web Mining MLSMM2153
Informatique et société numérique MQANT1109
2026
Article de journal

Timmers, C., Fouss, F., & Vande Kerckhove, C. (2026). PI-adaptDiv: an adaptive algorithm to prevent and escape online filter bubbles. ACM Transactions on Recommender Systems. Accepted/in-press. https://doi.org/10.1145/3803548 (Original work published 2026)


2025
Papier de conférence

Satinet, C., Ducarroz, C., & Fouss, F. (2025). Understanding the impact of sustainability-oriented recommender systems on consumers’ choices. EMAC Conference 2025, Madrid.


Legast, M., Fouss, F., & Calders, T. (2025). Influence of Label and Selection Bias on Fairness Interventions. Proceedings of Machine Learning Research, 294, 329-334. (Original work published 2025)


Article de journal

Satinet, C., Ducarroz, C., & Fouss, F. (2025). Understanding the impact of sustainability-oriented recommender systems on consumers’ choices. Electronic Commerce Research and Applications, 74, 101540. https://doi.org/10.1016/j.elerap.2025.101540 (Original work published 2025)


2024
Document de travail

Satinet, C., Ducarroz, C., & Fouss, F. (2024). Understanding the impact of sustainability-oriented recommender systems on consumers’ choices (Louvain Research Institute in Management and Organizations Working Paper Series).


Article de journal

Satinet, C., Fouss, F., Saerens, M., & Leleux, P. (2024). In-processing and post-processing strategies for balancing accuracy and sustainability in product recommendations. Electronic Commerce Research and Applications. Published. https://doi.org/10.1016/j.elerap.2024.101433 (Original work published 2024)


2023
Document de travail

Satinet, C., Fouss, F., Saerens, M., & Leleux, P. (2023). In-Processing and Post-Processing Strategies for Balancing Accuracy and Sustainability in Product Recommendations (Louvain Research Institute in Management and Organizations Working Paper Series).


Papier de conférence

Satinet, C., Fouss, F., Saerens, M., & Leleux, P. (2023). In-Processing and Post-Processing Strategies for Balancing Accuracy and Sustainability in Product Recommendations. 1st Interdisciplinary Conference on Management, Information Technology and Computer Sciences, Lille, France.


2022
Article de journal

Raneri Santo, Lecron Fabian, Hermans, J., & Fouss, F. (2022). Predictions through Lean Startup? Harnessing AI-based predictions under uncertainty. International Journal of Entrepreneurial Behavior & Research. Accepted/in-press. (Original work published 2022)


Satinet, C., & Fouss, F. (2022). A Supervised Machine Learning Classification Framework for Clothing Products’ Sustainability. Sustainability, 14(3). https://doi.org/10.3390/su14031334 (Original work published 2022)


Document de travail

Satinet, C., & Fouss, F. (2022). A Supervised Machine Learning Classification Framework for Assessing the Sustainability of Clothing Products (Louvain Research Institute in Management and Organizations Working Paper Series).


2021
Papier de conférence

Satinet, C., & Fouss, F. (2021). A Supervised Machine Learning Classification Framework for Clothing Products’ Sustainability. Conférence sur la recherche interdisciplinaire et transdisciplinaire « Transition et Développement durable »., Louvain-la-Neuve.


Vancompernolle Vromman, F., & Fouss, F. (2021). Filter-bubble created by collaborative filtering algorithms themselves, fact or fiction? An experimental comparison. Proceedings of the Data Analytics on Social Media Workshop of the 2021 IEEE/WIC/ACM International Conference on Web Intelligence. Published. Proceedings of the Data Analytics on Social Media Workshop of the 2021 IEEE/WIC/ACM International Conference on Web Intelligence. https://doi.org/10.1145/3498851.3498945 (Original work published 2021)


Article de journal

Vandenbulcke Virginie, Ducarroz, C., & Fouss, F. (2021). Collaborative recommendations in the mass retail sector - The role of reactance. Submitted. (Original work published 2021)


Fouss, F., & Fernandes, E. (2021). A closer-to-reality model for comparing relevant dimensions of recommender systems, with application to novelty. Information, 12(12), 500. https://doi.org/10.3390/info12120500 (Original work published 2021)


Document de travail

Satinet, C., & Fouss, F. (2021). An aggregated model assessing the risk of job automation – Application to Belgian employment data (Louvain Research Institute in Management and Organizations Working Paper Series 2021/03).


2019
Document de travail

Fernandes, E., Fouss, F., & Fouss, F. (2019). Adapted Collaborative Filtering Algorithms through Diversity and Novelty.


2018
Article de journal

Lecron, F., & Fouss, F. (2018). An Optimization Model for Collaborative Recommendation Using a Covariance-Based Regularizer. Data Mining and Knowledge Discovery, 32(3), 651-674. https://doi.org/10.1007/s10618-018-0552-3 (Original work published 2018)


2017
Papier de conférence

Sommer, F., Lecron, F., & Fouss, F. (2017). Recommender systems: the case of repeated interaction in matrix factorization. WI′17 Proceedings of the International Conference on Web Intelligence, p. 843-847. https://doi.org/10.1145/3106426.3106522


Vandenbulcke, V., Ducarroz, C., & Fouss, F. (2017). Recommandations collaboratives personnalisées : Quel impact sur le comportement du consommateur en grande distribution ? 33ème Congrès International de l’AFM (Association Française du Marketing), Tours, France.


Vandenbulcke, V., Ducarroz, C., & Fouss, F. (2017). Personalized Collaborative Recommendations in the Mass-retailing Sector: the Impact of the Recommended Products and the Accompanying Message on Consumer Behavior. EMAC (European Marketing Academy) - 46th Annual Conference, Groningen (Netherlands).


Article de journal

Sommer, F., Fouss, F., & Saerens, M. (2017). Modularity-driven kernel k-means for community detection. Lecture Notes in Computer Science, 10614, 423-433. https://doi.org/10.1007/978-3-319-68612-7_48 (Original work published 2017)


Document de travail

vandenbulcke virginie, Ducarroz, C., & Fouss, F. (2017). Personalized Collaborative recommenations in the Mass-retailing Sector: the Impact of the Recommended Products and the Accompanying Message on Consume Behavior (Working Paper LSM 2017/16).


Sommer, F., Fouss, F., & Saerens, M. (2017). Modularity-driven kernel k-means for community detection (Louvain Research Institute in Management and Organizations Working Paper Series 2017/21).


2016
Monographie

Fouss, F., Saerens, M., & Shimbo, M. (2016). Algorithms and Models for Network Data and Link Analysis. Cambridge University Press.


Article de journal

Sommer, F., Fouss, F., & Saerens, M. (2016). Comparison of Graph Node Distances on Clustering Tasks. Lecture Notes in Computer Science, 9886, 192-201. https://doi.org/10.1007/978-3-319-44778-0_23 (Original work published 2016)


2015
Papier de conférence

Vandenbulcke, V., Ducarroz, C., & Fouss, F. (2015). Evaluating the impact of personalized recommendations: Application in the mass-retailing sector. 44th European Marketing Academy (EMAC) Conference, Leuven (Belgium).


Article de journal

Fouss, F. (2015). Le Big Data est à nous! La Libre. Published. (Original work published 2015)


Document de travail

Sommer, F., Fouss, F., & Saerens, M. (2015). Clustering using a Sum-Over-Forests weighted kernel k-means approach (Louvain School of Management Working Paper Series 2015/22).


2014
Document de travail

vandenbulcke virginie, Ducarroz, C., & Fouss, F. (2014). Evaluationg the impact of personalized recommendations : Application in the mass-retailing sector (Working Paper LSM 2014/22).


Sommer, F., & Fouss, F. (2014). Learning with product graphs and multiple labels (Working Paper LSM 2014/20).


Papier de conférence

Senelle, M., Saerens, M., & Fouss, F. (2014). The Sum-over-Forests clustering. Proceedings of the European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning. Published. European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning, Bruges.


Van Parijs, C., & Fouss, F. (2014). Improving accuracy by reducing the importance of hubs in nearest-neighbor recommendations. European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning, Bruges.


Article de journal

Senelle, M., Garcia Diez, S., Mantrach, A., Shimbo, M., Saerens, M., & Fouss, F. (2014). The Sum-over-Forests density index: identifying dense regions in a graph. IEEE Transactions on Pattern Analysis and Machine Intelligence, 36(6), 1268-1274. https://doi.org/10.1109/TPAMI.2013.227 (Original work published 2014)


2013
Papier de conférence

Vandenbulcke, V., Lecron, F., Ducarroz, C., & Fouss, F. (2013). Customer segmentation based on a collaborative recommendation system: application to a retail company. Proceedings of the 2013 conference of European Marketing Academy. Published. Conference of European Marketing Academy (EMAC), Istanbul.


2012
Article de journal

Françoisse, K., Fouss, F., & Saerens, M. (2012). A Link-Analysis-Based Discriminant Analysis for Exploring Partially Labeled Graphs. Pattern Recognition Letters, 34(2), 146-154. https://doi.org/10.1016/j.patrec.2012.07.025 (Original work published 2013)


Fouss, F., Françoisse, K., Yen, L., Pirotte, A., & Saerens, M. (2012). An experimental investigation of kernels on graphs for collaborative recommendation and semisupervised classification. Neural Networks, 31, 53-72. https://doi.org/10.1016/j.neunet.2012.03.001 (Original work published 2012)


2011
Article de journal

Yen, L., Saerens, M., & Fouss, F. (2011). A Link Analysis Extension of Correspondence Analysis for Mining Relational Databases. IEEE Transactions on Knowledge & Data Engineering, 23(4), 481-495. https://doi.org/10.1109/TKDE.2010.142 (Original work published 2011)


Garcia Diez, S., Fouss, F., Shimbo, M., & Saerens, M. (2011). A sum-over-paths extension of edit distances accounting for all sequence alignments. Pattern Recognition, 44(6), 1172-1182. https://doi.org/10.1016/j.patcog.2010.11.020 (Original work published 2011)


Papier de conférence

Garcia Diez, S., Saerens, M., Senelle, M., & Fouss, F. (2011). A Simple-cycles weighted kernel based on harmony structure for similarity retrieval. Proceedings of the 12th International Society for Music Information Retrieval Conference (ISMIR 2011), Miami, Florida, USA.


2010
Chapitre de livre

Fouss, F. (2010). Collaborative-recommendation systems and link analysis. In Pascal Francq (ed.), Collaborative Search and Communities of Interest: Trends in Knowledge Sharing and Assessment.


Fouss, F. (2010). Introduction to recommender systems. In Pascal Francq (ed.), Collaborative search and communities of interest [electronic resource] : trends in knowledge sharing and assessment. https://doi.org/10.4018/978-1-61520-841-8


Article de journal

Fouss, F., Achbany, Y., & Saerens, M. (2010). A probabilistic reputation model based on transaction ratings. Information Sciences, 180(11), 2095-2123. https://doi.org/10.1016/j.ins.2010.01.020 (Original work published 2010)


Papier de conférence

Garcia Diez, S., Fouss, F., Shimbo, M., & Saerens, M. (2010). Normalized Sum-over-Paths Edit Distances. International Conference on Pattern Recognition, Istanbul, Turkey.


2009
Article de journal

Yen, L., Fouss, F., Decaestecker, C., Francq, P., & Saerens, M. (2009). Graph nodes clustering with the sigmoid commute-time kernel: A comparative study. Data & Knowledge Engineering, 68(3), 338-361. https://doi.org/10.1016/j.datak.2008.10.006 (Original work published 2009)


Saerens, M., Fouss, F., Achbany, Y., & Yen, L. (2009). Randomized shortest-path problems: Two related models. Neural Computation, 21(8), 2363-2404. https://doi.org/10.1162/neco.2009.11-07-643 (Original work published 2009)


2008
Article de journal

Achbany, Y., Jureta, I., Faulkner, S., & Fouss, F. (2008). Continually Learning Optimal Web Service Compositions. IEEE Transactions on Services Computing, 1, 141-154. https://doi.org/10.1109/TSC.2008.12 (Original work published 2008)


Achbany, Y., Fouss, F., Yen, L., Pirotte, A., & Saerens, M. (2008). Tuning continual exploration in reinforcement learning: An optimality property of the Boltzmann strategy. Neurocomputing, 71(13-15), 2507-2520. https://doi.org/10.1016/j.neucom.2007.11.040 (Original work published 2008)


Document de travail

Fouss, F., Achbany, Y., & Saerens, M. (2008). A probabilistic reputation model (IAG - LSM Working Papers 08/20).


Papier de conférence

Herssens, C., Faulkner, S., Fouss, F., & Jureta, I. (2008). A Framework for QoS Driven Selection of Services. IEEE International Conference on Services Computing, Honolulu, Hawaii, USA.


Fouss, F., & Saerens, M. (2008). Evaluating performance of recommender systems: An experimental comparison. IEEE/WIC/ACM International Conference on Web Intelligence, Sydney, Australia.


2007
Article de journal

Yen, L., Saerens, M., Francq, P., Decaestecker, C., & Fouss, F. (2007). Graph Nodes Clustering based on the Commute-Time Kernel. Lecture Notes in Computer Science, 4426, 1037-1045. https://doi.org/10.1007/978-3-540-71701-0_117 (Original work published 2007)


Fouss, F., Pirotte, A., Saerens, M., & Saerens, M. (2007). Random-walk computation of similarities between nodes of a graph, with application to collaborative recommendation. IEEE Transactions on Knowledge & Data Engineering, 19(3), 355-369. https://doi.org/10.1109/TKDE.2007.46 (Original work published 2007)


Thèse

Fouss, F. (2007). Measures of similarity on graphs : Investigation and application to collaborative recommendation.


2006
Papier de conférence

Fouss, F., Yen, L., Pirotte, A., & Saerens, M. (2006). An experimental investigation of graph kernels on a collaborative recommendation task. IEEE International Conference on Data Mining (ICDM 2006), Hong Kong, China.


Achbany, Y., Fouss, F., Yen, L., Pirotte, A., & Saerens, M. (2006). Optimal tuning of continual, online, exploration in reinforcement learning. Lecture Notes in Computer Science, Vol. 4131, p. 790-800 (2006).


Article de journal

Achbany, Y., Saerens, M., Pirotte, A., Yen, L., & Fouss, F. (2006). Optimal Tuning of Continual Online Exploration in Reinforcement Learning. Lecture Notes in Computer Science, 4131. (Original work published 2006)


Document de travail

Fouss, F., Pirotte, A., Saerens, M., Renders, J.-M., & Yen, L. (2006). A novel way of computing similarities between nodes of a graph, with application to collaborative filtering and subspace projection of the graph nodes (IAG - LSM Working Papers 06/08).


2005
Document de travail

Saerens, M., & Fouss, F. (2005). Hits is PCA (IAG Working Papers 2005/125).


Fouss, F., Faulkner, S., Kolp, M., Pirotte, A., & Saerens, M. (2005). Web recommendation system based on a markov-chain model (IAG Working Papers 2005/123).


Saerens, M., Fouss, F., Yen, L., & Dupont, P. (2005). The principal components analysis of a graph and its relationships to spectral clustering (IAG Working Papers 2005/124).


Papier de conférence

Fouss, F., Saerens, M., Pirotte, A., Kolp, M., & Faulkner, S. (2005). Web recommendation system based on a Markov-chain model. International Conference on Enterprise Information Systems (ICEIS 2005), Miami, USA.


Fouss, F., Renders, J.-M., Pirotte, A., & Saerens, M. (2005). A novel way of computing similarities between nodes of a graph, with application to collaborative recommendation. IEEE WIC/ACM International Joint Conference on Web Intelligence, Compiègne, France.


Saerens, M., & Fouss, F. (2005). HITS is principal components analysis. 2005 IEEE/ACM International Joint Conference on Web Intelligence.


Yen, L., VanVyve, D. J., Wouters, F., Fouss, F., Verleysen, M., & Saerens, M. (2005). Clustering using a random walk-based distance measure. Proceedings of the 13th European Symposium on Artificial Neural Networks, p. 317-324.


2004
Papier de conférence

Fouss, F., Pirotte, A., & Saerens, M. (2004). A Novel Way of Computing Dissimilarities between Nodes of a Graph, with Application to Collaborative Filtering. Proceedings of the Workshop on Statistical Approaches for Web Mining.


Saerens, M., Fouss, F., Dupont, P., & Pirotte, A. (2004). Collaborative filtering based on random walks on a graph. Workshop on Large Networks, UCL, LLN.


Fouss, F., Renders, J.-M., & Saerens, M. (2004). Some relationships between between Kleinberg’s hubs and authorities, correspondence analysis and Markov chains. 7th International Conference on the Statistical Analysis of Textual Data.


Saerens, M., Fouss, F., Yen, L., & Dupont, P. (2004). The principle components analysis of a graph, and its relationships to spectral clustering. In Boulicaut, J.-F.; Esposito, F.; Giannotti, F.; Pedreschi, D.; (ed.), Machine Learning: ECML 2004. 15th European Conference on MachineLearning. Proceedings (Lecture Notes in Artificial IntelligenceVol.3201) (p. p. 371-383). Springer-verlag.


Saerens, M., & Fouss, F. (2004). Yet another method for combining experts opinions. 5th International Workshop on Multiple Classifier Systems.


Fouss, F., Pirotte, A., & Saerens, M. (2004). The Application of New Concepts of Dissimilarities between Nodes of a Graph to Collaborative Filtering. Workshop on Statistical Approaches for Web Mining (SAWM), Pisa, Italy.


Fouss, F., Renders, J.-M., & Saerens, M. (2004). Some relationships between Kleinberg’s hubs and authorities, correspondence analysis, and the Salsa algorithm. International Conference on the Statistical Analysis of Textual Data (JADT 2004), Louvain-la-Neuve, Belgium.


Saerens, M., Fouss, F., Yen, L., & Dupont, P. (2004). The principal components analysis of a graph, and its relationships to spectral clustering. Lecture Notes in Computer Science, 3201, 371-383. (Original work published 2004)


Article de journal

Fouss, F., & Saerens, M. (2004). Yet another method for combining classifiers outputs: A maximum entropy approach. Lecture Notes in Computer Science, 3077. (Original work published 2004)


Document de travail

Fouss, F., & Saerens, M. (2004). A maximum entropy approach to multiple classifiers combination (IAG - LSM Working Papers 04/107).


2003
Document de travail

Donnay, A., Fouss, F., Kolp, M., Massart, D., & Pirotte, A. (2003). Analyse oriente objet de processus sidérurgiques de type cokier (IAG - LSM Working Papers 03/86).


Fouss, F., Renders, J.-M., & Saerens, M. (2003). Links between Kleinberg’s hubs and authorities, correspondence analysis, and Markov chains (ECON Discussion Papers 2003/101).


Donnay, A., Fouss, F., Kolp, M., Massart, D., & Pirotte, A. (2003). Analyse orientée objet de processus sidérurgiques de type cokier (IAG Working Papers 2003/86).


Fouss, F., Ibarz, M., Kolp, M., & Pirotte, A. (2003). Steel production data warehouse reengineering (ECON Discussion Papers 2003/89).


Papier de conférence

Fouss, F., Renders, J.-M., & Saerens, M. (2003). Links between Kleinberg’s hubs and authorities, correspondence analysis and Markov chains. IEEE International Conference on Data Mining (ICDM 2003), Melbourne, USA.