R. Amar, J. Eagan, and J. Stasko, Low-level components of analytic activity in information visualization, Proceedings of the IEEE Information Visualization Symposium, pp.111-117, 2005.

E. Amid and M. K. Warmuth, TriMap: Large-scale Dimensionality Reduction Using Triplets, 2019.

D. Asimov, The grand tour: a tool for viewing multidimensional data, SIAM journal on scientific and statistical computing, vol.6, pp.128-143, 1985.

M. Aupetit, Visualizing distortions and recovering topology in continuous projection techniques, Neurocomputing, vol.70, pp.1304-1330, 2007.

Z. Bar-joseph, D. K. Gifford, and T. S. Jaakkola, Fast optimal leaf ordering for hierarchical clustering, Bioinformatics, vol.17, pp.22-29, 2001.

M. Behrisch, B. Bach, N. H. Riche, T. Schreck, and J. Fekete, Matrix Reordering Methods for Table and Network Visualization, Computer Graphics Forum, vol.35, pp.693-716, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01326759

M. Behrisch, B. Bach, N. H. Riche, T. Schreck, and J. Fekete, Matrix Reordering Methods for Table and Network Visualization, Computer Graphics Forum, vol.35, p.24, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01326759

C. M. Bishop, Pattern Recognition and Machine Learning, 2006.

M. Bostock, V. Ogievetsky, and J. Heer, D 3 data-driven documents, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.17, pp.2301-2309, 2011.

M. Brehmer, S. Ingram, J. Stray, and T. Munzner, Overview: The design, adoption, and analysis of a visual document mining tool for investigative journalists, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.20, pp.2271-2280, 2014.

M. Cavallo and Ç. Demiralp, Clustrophile 2: Guided Visual Clustering Analysis, TVCG, vol.25, pp.267-276, 2019.

R. Cutura, S. Holzer, M. Aupetit, and M. Sedlmair, Vis-CoDeR: A Tool for Visually Comparing Dimensionality Reduction Algorithms, European Symposium on Artificial Neural Networks (ESANN) (ESANN 2018 -Proceedings, European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning). i6doc.com publication, pp.105-110, 2018.

Ç. Demiralp, Clustrophile: A tool for visual clustering analysis, 2017.

M. Dowling, J. Wenskovitch, L. Fry, C. House, and . North, SIRIUS: Dual, symmetric, interactive dimension reductions, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.25, pp.172-182, 2018.

J. Fekete, Reorder.js: A javascript library to reorder tables and networks, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01214274

J. H. Friedman and J. W. Tukey, A Projection Pursuit Algorithm for Exploratory Data Analysis, IEEE Trans. Comput. C, vol.23, pp.881-890, 1974.

M. Gleicher, Explainers: Expert Explorations with Crafted Projections, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.19, pp.2042-2051, 2013.

M. Gleicher, Considerations for visualizing comparison, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.24, pp.413-423, 2017.

M. Gleicher, D. Albers, R. Walker, I. Jusufi, D. Charles et al., Visual comparison for information visualization, Information Visualization, vol.10, pp.289-309, 2011.

F. Heimerl, C. Kralj, T. Möller, and M. Gleicher, embComp: Visual Interactive Comparison of Vector Embeddings, 2019.

N. Henry and J. Fekete, Matrixexplorer: a dualrepresentation system to explore social networks, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.12, issue.5, pp.677-684, 2006.
URL : https://hal.archives-ouvertes.fr/hal-00876592

J. Im, J. Michael, R. Mcguffin, and . Leung, GPLOM: the generalized plot matrix for visualizing multidimensional multivariate data, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.19, pp.2606-2614, 2013.

S. Ingram, T. Munzner, V. Irvine, M. Tory, S. Bergner et al., DimStiller: Workflows for dimensional analysis and reduction, Proceedings of the IEEE Symposium on Visual Analytics Science and Technology, pp.3-10, 2010.

S. Ingram, T. Munzner, and M. Olano, Glimmer: Multilevel MDS on the GPU, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.15, pp.249-261, 2008.

A. Inselberg and B. Dimsdale, Parallel coordinates: a tool for visualizing multi-dimensional geometry, Proceedings of the First IEEE Conference on Visualization: Visualization90. IEEE, pp.361-378, 1990.

P. Isenberg, F. Heimerl, S. Koch, T. Isenberg, P. Xu et al., 2017. vispubdata.org: A Metadata Collection about IEEE Visualization (VIS) Publications, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.23, pp.2199-2206, 2017.

C. Dong-hyun-jeong, B. Ziemkiewicz, W. Fisher, R. Ribarsky, and . Chang, ipca: An interactive system for pca-based visual analytics, Computer Graphics Forum, vol.28, pp.767-774, 2009.

H. Kim, J. Choo, H. Park, and A. Endert, Interaxis: Steering scatterplot axes via observation-level interaction, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.22, pp.131-140, 2015.

J. Krause, A. Dasgupta, J. Fekete, and E. Bertini, Seekaview: An intelligent dimensionality reduction strategy for navigating highdimensional data spaces, 2016 IEEE 6th Symposium on Large Data Analysis and Visualization (LDAV), pp.11-19, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01377974

B. Joseph, M. Kruskal, and . Wish, Multidimensional scaling. Sage, 1978.

Y. Lecun, L. Bottou, Y. Bengio, and P. Haffner, Gradientbased learning applied to document recognition, Proc. IEEE, vol.86, pp.2278-2324, 1998.

I. Liiv, Seriation and matrix reordering methods: An historical overview. Statistical analysis and data mining, vol.3, pp.70-91, 2010.

S. Liu, D. Maljovec, B. Wang, P. Bremer, and V. Pascucci, Visualizing High-Dimensional Data: Advances in the Past Decade, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.23, issue.3, pp.1249-1268, 2017.

L. Mcinnes, J. Healy, and J. Melville, UMAP: Uniform Manifold Approximation and Projection for Dimension Reduction, 2018.

G. Luis, M. Nonato, and . Aupetit, Multidimensional Projection for Visual Analytics: Linking Techniques with Distortions, Tasks, and Layout Enrichment, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.25, pp.2650-2673, 2019.

S. Ovchinnikova and S. Anders, Exploring dimension-reduced embeddings with Sleepwalk, 2019.

, On lines and planes of closest fit to systems of points in space, The London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science, vol.2, pp.559-572, 1901.

T. Sam, L. Roweis, and . Saul, Nonlinear dimensionality reduction by locally linear embedding, science, vol.290, pp.2323-2326, 2000.

A. Sarikaya and M. Gleicher, Scatterplots: Tasks, Data, and Designs, IEEE Transactions on Visualization and Computer Graphics, vol.24, pp.402-412, 2018.

M. Sedlmair, C. Heinzl, S. Bruckner, H. Piringer, and T. Möller, Visual parameter space analysis: A conceptual framework, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.20, pp.2161-2170, 2014.

M. Sedlmair, T. Munzner, and M. Tory, Empirical guidance on scatterplot and dimension reduction technique choices, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.19, pp.2634-2643, 2013.

M. Sedlmair, A. Tatu, T. Munzner, and M. Tory, A taxonomy of visual cluster separation factors, Computer Graphics Forum, vol.31, pp.1335-1344, 2012.

N. Roger and . Shepard, The analysis of proximities: Multidimensional scaling with an unknown distance function. II, Psychometrika, vol.27, pp.219-246, 1962.

D. Surendran, Swiss roll dataset, 2004.

A. Tatu, L. Zhang, E. Bertini, T. Schreck, and D. Keim, Clustnails: Visual analysis of subspace clusters, Tsinghua Science and Technology, vol.17, pp.419-428, 2012.

V. D. Joshua-b-tenenbaum, J. Silva, and . Langford, A global geometric framework for nonlinear dimensionality reduction, science, vol.290, pp.2319-2323, 2000.

. Warren-s-torgerson, Multidimensional scaling: I. Theory and method, Psychometrika, vol.17, pp.401-419, 1952.

C. Turkay, P. Filzmoser, and H. Hauser, Brushing Dimensions -A Dual Visual Analysis Model for High-Dimensional Data, IEEE Trans. Visualization & Computer Graphics (TVCG), vol.17, pp.2591-2599, 2011.

J. J. Paul-van-der-corput and . Van-wijk, Exploring Items and Features with IF, FI-Tables, Computer Graphics Forum, vol.35, pp.31-40, 2016.

L. Van-der-maaten and G. Hinton, Visualizing Data using t-SNE, Journal of Machine Learning Research, vol.9, pp.2579-2605, 2008.

M. Wattenberg, F. Viégas, and I. Johnson, How to Use t-SNE Effectively, Distill, 2016.