S. S. Abidi, Knowledge management in healthcare: Towards knowledge-driven decision-support services, International Journal of Medical Informatics, vol.63, issue.1, pp.5-18, 2001.

J. Al-kassab, Z. M. Ouertani, G. Schiuma, and A. Neely, Information visualization to support management decisions, International Journal of Information Technology & Decision Making, vol.13, issue.02, pp.407-428, 2014.

R. A. Aliev and O. H. Huseynov, Fuzzy Geometry-Based Decision Making with Unprecisiated Visual Information, International Journal of Information Technology & Decision Making, vol.13, issue.5, pp.1051-1073, 2014.

G. Andrienko, N. Andrienko, P. Jankowski, D. Keim, M. J. Kraak et al., Geovisual analytics for spatial decision support: Setting the research agenda, International Journal of Geographical Information Science, vol.21, issue.8, pp.839-857, 2007.

R. C. Basole, A. Qamar, H. Park, C. J. Paredis, and L. F. Mcginnis, Visual analytics for early-phase complex engineered system design support, IEEE computer graphics and applications, vol.35, issue.2, pp.41-51, 2015.

O. Ben-assuli, Assessing the perception of information components in financial decision support systems, Decision Support Systems, vol.54, issue.1, pp.795-802, 2012.

J. Bollen, H. Mao, and X. Zeng, Twitter mood predicts the stock market, Journal of computational science, vol.2, issue.1, pp.1-8, 2011.

S. Bonada, R. Veras, and C. Collins, Personalized views for immersive analytics, Proceedings of the 2016 ACM Companion on Interactive Surfaces and Spaces, pp.83-89, 2016.

J. Boy, R. A. Rensink, E. Bertini, and J. D. Fekete, A principled way of assessing visualization literacy, IEEE transactions on visualization and computer graphics, vol.20, issue.12, pp.1963-1972, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01027582

S. Charleer, F. Gutiérrez-hernández, and K. Verbert, Supporting job mediator and job seeker through an actionable dashboard, Proceedings of the 24th IUI conference on Intelligent User Interfaces, 2018.

S. Deitrick and R. Edsall, The influence of uncertainty visualization on decision making: An empirical evaluation, Progress in spatial data handling, pp.719-738, 2006.

E. Frøkjaer, M. Hertzum, and K. Hornbaek, Measuring usability: are effectiveness, efficiency, and satisfaction really correlated?, Proceedings of the SIGCHI conference on Human Factors in Computing Systems, pp.345-352, 2000.

J. Gettinger, E. Kiesling, C. Stummer, and R. Vetschera, A comparison of representations for discrete multi-criteria decision problems, Decision support systems, vol.54, issue.2, pp.976-985, 2013.

J. Gettinger, S. T. Koeszegi, and M. Schoop, Shall we dance? -the effect of information presentations on negotiation processes and outcomes, Decision support systems, vol.53, issue.1, pp.161-174, 2012.

K. Goda and J. Song, Uncertainty modeling and visualization for tsunami hazard and risk mapping: a case study for the 2011 tohoku earthquake. Stochastic environmental research and risk assessment, vol.30, pp.2271-2285, 2016.

M. Greis, T. Ohler, N. Henze, and A. Schmidt, Investigating representation alternatives for communicating uncertainty to non-experts. In: Human-Computer Interaction, pp.256-263, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01610771

F. Gutiérrez, K. Seipp, X. Ochoa, K. Chiluiza, T. De-laet et al., Lada: A learning analytics dashboard for academic advising, Computers in Human Behavior, 2018.

M. Hao, C. Rohrdantz, H. Janetzko, U. Dayal, D. A. Keim et al., Visual sentiment analysis on twitter data streams, Visual Analytics Science and Technology (VAST), 2011 IEEE Conference on, pp.277-278, 2011.

J. Harold, I. Lorenzoni, T. F. Shipley, and K. R. Coventry, Cognitive and psychological science insights to improve climate change data visualization, Nature Climate Change, vol.6, issue.12, p.1080, 2016.

C. He, D. Parra, and K. Verbert, Interactive recommender systems: A survey of the state of the art and future research challenges and opportunities, Expert Systems with Applications, vol.56, pp.9-27, 2016.

J. Heer and M. Bostock, Crowdsourcing graphical perception: using mechanical turk to assess visualization design, Proceedings of the SIGCHI conference on human factors in computing systems, pp.203-212, 2010.

M. Höferlin, B. Höferlin, D. Weiskopf, and G. Heidemann, Uncertainty-aware video visual analytics of tracked moving objects, Journal of Spatial Information Science, vol.2011, issue.2, pp.87-117, 2011.

D. Huang, M. Tory, B. A. Aseniero, L. Bartram, S. Bateman et al., Personal visualization and personal visual analytics. Visualization and Computer Graphics, IEEE Trans. on, vol.21, issue.3, pp.420-433, 2015.

J. Hullman, P. Resnick, and E. Adar, Hypothetical outcome plots outperform error bars and violin plots for inferences about reliability of variable ordering, PLoS ONE, vol.10, issue.11, p.142444, 2015.

H. Ibrekk and M. G. Morgan, Graphical communication of uncertain quantities to nontechnical people, Risk analysis, vol.7, issue.4, pp.519-529, 1987.

M. John, S. Koch, F. Heimerl, A. Müller, T. Ertl et al., Interactive visual analysis of german poetics, Digital Humanities 2015 Book of Abstracts, 2015.

C. R. Johnson and A. R. Sanderson, A next step: Visualizing errors and uncertainty, IEEE Computer Graphics and Applications, vol.23, issue.5, pp.6-10, 2003.

M. Kay and J. Heer, Beyond Weber's Law: A Second Look at Ranking Visualizations of Correlation, IEEE Transactions on Visualization and Computer Graphics, vol.22, issue.1, pp.469-478, 2016.

M. Kay, T. Kola, J. R. Hullman, and S. A. Munson, When (ish) is My Bus? Usercentered Visualizations of Uncertainty in Everyday, Mobile Predictive Systems, Proceedings of the 2016 CHI Conference on Human Factors in Computing Systems -CHI '16 pp, pp.5092-5103, 2016.

M. Kay, D. Morris, and J. A. Kientz, There's no such thing as gaining a pound: Reconsidering the bathroom scale user interface, Proceedings of the 2013 ACM international joint conference on Pervasive and ubiquitous computing, pp.401-410, 2013.

M. Kay, S. N. Patel, and J. A. Kientz, How good is 85%?: A survey tool to connect classifier evaluation to acceptability of accuracy, Proceedings of the 33rd Annual ACM Conference on Human Factors in Computing Systems, pp.347-356, 2015.

D. A. Keim, F. Mansmann, J. Schneidewind, J. Thomas, and H. Ziegler, Visual analytics: Scope and challenges, 2008.

D. A. Keim, F. Mansmann, and J. Thomas, Visual analytics: How much visualization and how much analytics? SIGKDD Explor, Newsl, vol.11, issue.2, pp.5-8, 2010.

Y. S. Kim, K. Reinecke, and J. Hullman, Explaining the gap: Visualizing one's predictions improves recall and comprehension of data, Proceedings of the 2017 CHI Conference on Human Factors in Computing Systems. pp. 1375-1386. CHI '17, 2017.

B. C. Kwon, B. Fisher, and J. S. Yi, Visual analytic roadblocks for novice investigators, VAST 2011 -IEEE Conference on Visual Analytics Science and Technology, pp.3-11, 2011.

B. Lee, G. G. Robertson, M. Czerwinski, and C. S. Parr, Candidtree: visualizing structural uncertainty in similar hierarchies, Information Visualization, vol.6, issue.3, pp.233-246, 2007.

S. Lee, S. H. Kim, Y. H. Hung, H. Lam, Y. Kang et al., How do people make sense of unfamiliar visualizations?: a grounded model of novice's information visualization sensemaking, IEEE transactions on visualization and computer graphics, vol.22, issue.1, pp.499-508, 2016.

S. Lee, S. H. Kim, and B. C. Kwon, Vlat: Development of a visualization literacy assessment test, IEEE transactions on visualization and computer graphics, vol.23, issue.1, pp.551-560, 2017.

A. M. Maceachren, A. Robinson, S. Hopper, S. Gardner, R. Murray et al., Visualizing geospatial information uncertainty: What we know and what we need to know, Cartography and Geographic Information ScienceInformation Science, vol.32, issue.3, pp.139-160, 2005.

G. Mckenzie, M. Hegarty, T. Barrett, and M. Goodchild, Assessing the effectiveness of different visualizations for judgments of positional uncertainty, International Journal of Geographical Information Science, vol.30, issue.2, pp.221-239, 2016.

Y. Ming, H. Qu, and E. Bertini, Rulematrix: Visualizing and understanding classifiers with rules, IEEE transactions on visualization and computer graphics, vol.25, issue.1, pp.342-352, 2019.

H. Park and R. C. Basole, Bicentric diagrams: Design and applications of a graphbased relational set visualization technique, Decision Support Systems, vol.84, pp.64-77, 2016.

H. Park, M. A. Bellamy, and R. C. Basole, Visual analytics for supply network management: System design and evaluation, Decision Support Systems, vol.91, pp.89-102, 2016.

I. T. Ruginski, A. P. Boone, L. M. Padilla, L. Liu, N. Heydari et al., Non-expert interpretations of hurricane forecast uncertainty visualizations, Spatial Cognition & Computation, vol.16, issue.2, pp.154-172, 2016.

D. Sacha, H. Senaratne, B. C. Kwon, G. Ellis, and D. A. Keim, The Role of Uncertainty, Awareness, and Trust in Visual Analytics, IEEE Transactions on Visualization and Computer Graphics, vol.22, issue.1, pp.240-249, 2016.

A. Sarkar, A. F. Blackwell, M. Jamnik, and M. Spott, Interaction with Uncertainty in Visualisations, Eurographics Conference on Visualization (EuroVis) -Short Papers. The Eurographics Association, 2015.

K. Seipp, F. Gutiérrez, X. Ochoa, and K. Verbert, Towards a visual guide for communicating uncertainty in visual analytics, Journal of Visual Languages and Computing, vol.50, pp.1-18, 2019.

H. Senaratne, M. Mueller, M. Behrisch, F. Lalanne, J. Bustos-jiménez et al., Urban mobility analysis with mobile network data: A visual analytics approach, IEEE Transactions on Intelligent Transportation Systems, vol.19, issue.5, pp.1537-1546, 2018.

H. Senaratne, D. Reusser, and T. Schreck, Usability of uncertainty visualisation methods: A comparison between different user groups, 2013.

J. P. Shim, M. Warkentin, J. F. Courtney, D. J. Power, R. Sharda et al., Past, present, and future of decision support technology, Decision Support Systems, vol.33, issue.2, pp.111-126, 2002.

B. Shneiderman, The eyes have it: a task by data type taxonomy for information visualizations, Proceedings 1996 IEEE Symposium on Visual Languages, pp.336-343, 1996.

M. Skeels, B. Lee, G. Smith, and G. G. Robertson, Revealing uncertainty for information visualization, Information Visualization, vol.9, issue.1, pp.70-81, 2010.

T. D. Smedt and W. Daelemans, Pattern for python, Journal of Machine Learning Research, vol.13, pp.2063-2067, 2012.

J. A. Sparrow, Graphical displays in information systems: some data properties influencing the effectiveness of alternative forms, Behaviour and Information Technology, vol.8, issue.1, pp.43-56, 1989.

C. Speier, The influence of information presentation formats on cmplex task decision-making performance, Human-Computer Studies, vol.64, issue.11, pp.115-1131, 2006.

C. Speier and M. G. Morris, MIS Quarterly, issue.3

S. Tak, A. Toet, and J. Van-erp, The perception of visual uncertainty representation by non-experts, IEEE transactions on visualization and computer graphics, vol.20, issue.6, pp.935-943, 2014.

A. L. Taylor, S. Dessai, and W. B. De-bruin, Communicating uncertainty in seasonal and interannual climate forecasts in europe, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, vol.373, p.20140454, 2015.

J. J. Thomas and K. A. Cook, Illuminating the path: The r&d agenda for visual analytics national visualization and analytics center, 2005.

J. Thomas and J. Kielman, Challenges for visual analytics, Information Visualization, vol.8, issue.4, pp.309-314, 2009.

K. Verbert, D. Parra, and P. Brusilovsky, Agents vs. users: Visual recommendation of research talks with multiple dimension of relevance, ACM Trans. on Interactive Intelligent Systems, pp.1-46, 2016.

J. Wang, P. G. Ipeirotis, and F. Provost, A framework for quality assurance in crowdsourcing p, p.38, 2013.

K. Wongsuphasawat, D. Moritz, A. Anand, J. Mackinlay, B. Howe et al., Voyager: Exploratory Analysis via Faceted Browsing of Visualization Recommendations, IEEE Transactions on Visualization and Computer Graphics, vol.22, issue.1, pp.649-658, 2016.

H. Yang, Y. Li, and M. X. Zhou, Understand users' comprehension and preferences for composing information visualizations, ACM Transactions on Computer-Human Interaction, vol.21, issue.1, pp.1-30, 2014.

J. S. Yi, Y. Kang, J. T. Stasko, and J. A. Jacko, Toward a deeper understanding of the role of interaction in information visualization. Visualization and Computer Graphics, IEEE Trans. on, vol.13, issue.6, pp.1224-1231, 2007.