S. Agarwal, B. Mozafari, A. Panda, H. Milner, S. Madden et al., BlinkDB: queries with bounded errors and bounded response times on very large data, Proceedings of the 8th ACM European Conference on Computer Systems, pp.29-42, 2013.

D. Auber, D. Archambault, R. Bourqui, M. Delest, J. Dubois et al., Encyclopedia of Social Network Analysis and Mining, pp.1-28, 2017.

S. K. Badam, N. Elmqvist, and J. Fekete, Steering the craft: Ui elements and visualizations for supporting progressive visual analytics, Computer Graphics Forum, vol.36, pp.491-502, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01512256

L. Battle, M. Angelini, C. Binnig, T. Catarci, P. Eichmann et al., Evaluating visual data analysis systems: A discussion report, Proceedings of the Workshop on Human-In-the-Loop Data Analytics, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01786507

L. Battle, R. Chang, and M. Stonebraker, Dynamic prefetching of data tiles for interactive visualization, Proceedings of the 2016 International Conference on Management of Data, pp.1363-1375, 2016.

A. Bifet, G. Holmes, R. Kirkby, and B. Pfahringer, MOA: massive online analysis, Journal of Machine Learning Research, vol.11, pp.1601-1604, 2010.

C. Binnig, L. D. Stefani, T. Kraska, E. Upfal, E. Zgraggen et al., Toward sustainable insights, or why polygamy is bad for you, CIDR 2017, 8th Biennial Conference on Innovative Data Systems Research, pp.56-63, 2017.

M. Bostock, V. Ogievetsky, and J. Heer, D 3 data-driven documents, IEEE Transactions on Visualization and Computer Graphics, vol.17, pp.2301-2309, 2011.

L. Breiman, Random forests, Machine learning, vol.45, pp.5-32, 2001.

Y. Cheng, W. Zhao, and F. Rusu, Bi-level online aggregation on raw data, Proceedings of the 29th International Conference on Scientific and Statistical Database Management, vol.10, p.12, 2017.

F. Chirigati, H. Doraiswamy, T. Damoulas, and J. Freire, Data polygamy: The many-many relationships among urban spatio-temporal data sets, Proceedings of the 2016 International Conference on Management of Data, pp.1011-1025, 2016.

L. M. Collins, J. L. Schafer, and C. Kam, A comparison of inclusive and restrictive strategies in modern missing data procedures, Psychological methods, vol.6, p.330, 2001.

G. Cormode, M. N. Garofalakis, P. J. Haas, J. , and C. , Synopses for massive data: Samples, histograms, wavelets, sketches. Foundations and Trends in Databases, vol.4, pp.1-294, 2012.

C. Cortes and V. Vapnik, Support-vector networks, Machine learning, vol.20, pp.273-297, 1995.

N. Courty, R. Flamary, D. Tuia, and A. Rakotomamonjy, Optimal transport for domain adaptation, vol.39, pp.1853-1865, 2017.
URL : https://hal.archives-ouvertes.fr/hal-02112785

A. Crotty, A. Galakatos, E. Zgraggen, C. Binnig, and T. Kraska, Vizdom: interactive analytics through pen and touch, Proceedings of the VLDB, vol.8, pp.2024-2027, 2015.

A. Crotty, A. Galakatos, E. Zgraggen, C. Binnig, and T. Kraska, The case for interactive data exploration accelerators (ideas), Proceedings of the Workshop on Human-In-the-Loop Data Analytics, vol.11, pp.1-11, 2016.

K. Dursun, C. Binnig, U. Cetintemel, and T. Kraska, Revisiting reuse in main memory database systems, Proceedings of the 2017 ACM International Conference on Management of Data, pp.1275-1289, 2017.

P. Eichmann, E. Zgraggen, Z. Zhao, C. Binnig, and T. Kraska, Towards a benchmark for interactive data exploration, IEEE Data Eng. Bull, vol.39, pp.50-61, 2016.

G. Evangelopoulos, S. Voinea, C. Zhang, L. Rosasco, and T. Poggio, Learning an invariant speech representation, 2014.

J. Fekete and R. Primet, Progressive analytics: A computation paradigm for exploratory data analysis, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01361430

A. Galakatos, A. Crotty, E. Zgraggen, C. Binnig, and T. Kraska, Revisiting reuse for approximate query processing, PVLDB, vol.10, pp.1142-1153, 2017.

J. Gama, I. ?liobait?, A. Bifet, M. Pechenizkiy, and A. Bouchachia, A survey on concept drift adaptation, ACM computing surveys (CSUR), vol.46, p.44, 2014.

Y. Guo, C. Binnig, and T. Kraska, What you see is not what you get!: Detecting simpson's paradoxes during data exploration, Proceedings of the 2Nd Workshop on Human-In-the-Loop Data Analytics, vol.2, pp.1-2, 2017.

J. M. Hellerstein, P. J. Haas, and H. J. Wang, Online aggregation, Proceedings of the 1997 ACM SIGMOD International Conference on Management of Data, pp.171-182, 1997.

T. Höllt, N. Pezzotti, V. Van-unen, F. Koning, E. Eisemann et al., Cytosplore: Interactive immune cell phenotyping for large single-cell datasets, Computer Graphics Forum, vol.35, pp.171-180, 2016.

S. Idreos, Big Data Exploration, pp.274-293, 2013.

S. Idreos, S. Manegold, and G. Graefe, Adaptive indexing in modern database kernels, Proceedings of the 15th International Conference on Extending Database Technology, pp.566-569, 2012.

Z. Jin, M. R. Anderson, M. Cafarella, H. V. Jagadish, and . Foofah, Transforming data by example, Proceedings of the 2017 ACM International Conference on Management of Data, pp.683-698, 2017.

J. Jo, J. Seo, J. Fekete, and . Panene, A progressive algorithm for indexing and querying approximate k-nearest neighbors, IEEE Transactions on Visualization and Computer Graphics, pp.1-1, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01855672

N. Kamat, P. Jayachandran, K. Tunga, and A. Nandi, Distributed and interactive cube exploration, 2014 IEEE 30th International Conference on Data Engineering, pp.472-483, 2014.

S. Kandel, J. Heer, C. Plaisant, J. Kennedy, F. Van-ham et al., Research directions in data wrangling: Visualizations and transformations for usable and credible data, Information Visualization, vol.10, pp.271-288, 2011.

S. Kandel, A. Paepcke, J. Hellerstein, and J. Heer, Wrangler: Interactive visual specification of data transformation scripts, Proceedings of the SIGCHI Conference on Human Factors in Computing Systems, pp.3363-3372, 2011.

S. Kandel, A. Paepcke, J. M. Hellerstein, and J. Heer, Enterprise data analysis and visualization: An interview study, IEEE Transactions on Visualization and Computer Graphics, vol.18, pp.2917-2926, 2012.

T. Kraska, Northstar: An interactive data science system, PVLDB, vol.11, pp.2150-2164, 2018.

H. Kriegel, M. Schubert, and . Kdd-pipeline, Encyclopedia of Database Systems, pp.1-2, 2013.

V. Le, S. Gulwani, and . Flashextract, A framework for data extraction by examples, SIGPLAN Not, vol.49, issue.6, pp.542-553, 2014.

M. Lissandrini, D. Mottin, T. Palpanas, and Y. Velegrakis, Data Exploration Using Example-Based Methods, 2018.

M. Lissandrini, D. Mottin, T. Palpanas, and Y. Velegrakis, Multi-example search in rich information graphs, 34th IEEE International Conference on Data Engineering, pp.809-820, 2018.

V. Losing, B. Hammer, and H. Wersing, Knn classifier with self adjusting memory for heterogeneous concept drift, 2016 IEEE 16th International Conference on Data Mining (ICDM), pp.291-300, 2016.

T. Mühlbacher, H. Piringer, S. Gratzl, M. Sedlmair, and M. Streit, Opening the black box: Strategies for increased user involvement in existing algorithm implementations, IEEE Transactions on Visualization and Computer Graphics, vol.20, pp.1643-1652, 2014.

S. J. Pan and Q. Yang, A survey on transfer learning, IEEE Transactions on knowledge and data engineering, vol.22, pp.1345-1359, 2010.

N. Pezzotti, T. Hllt, B. Lelieveldt, E. Eisemann, and A. Vilanova, Hierarchical stochastic neighbor embedding, Computer Graphics Forum, vol.35, pp.21-30, 2016.

N. Pezzotti, B. P. Lelieveldt, L. Van-der-maaten, T. Höllt, E. Eisemann et al., Approximated and user steerable tsne for progressive visual analytics, IEEE Transactions on Visualization and Computer Graphics, vol.23, pp.1739-1752, 2017.

V. Raveneau, J. Blanchard, and Y. Prié, Progressive sequential pattern mining: steerable visual exploration of patterns with PPMT, Visualization in Data Science (VDS at IEEE VIS 2018, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01901000

A. A. Rusu, N. C. Rabinowitz, G. Desjardins, H. Soyer, J. Kirkpatrick et al., Progressive neural networks, 2016.

F. Rusu, C. Qin, and M. Torres, Scalable analytics model calibration with online aggregation, IEEE Data Eng. Bull, vol.38, pp.30-43, 2015.

H. Schulz, M. Angelini, G. Santucci, and H. Schumann, An enhanced visualization process model for incremental visualization, IEEE transactions on visualization and computer graphics, vol.22, pp.1830-1842, 2016.

S. Servan-schreiber, M. Riondato, E. Zgraggen, and . Prosecco, Progressive sequence mining with convergence guarantees, Proceedings of the IEEE International Conference on Data Mining, 2018.

C. D. Stolper, A. Perer, and D. Gotz, Progressive visual analytics: User-driven visual exploration of in-progress analytics, IEEE Transactions on Visualization and Computer Graphics, vol.20, pp.1653-1662, 2014.

C. Sun, N. Rampalli, F. Yang, A. Doan, and . Chimera, Large-scale classification using machine learning, rules, and crowdsourcing, vol.7, pp.1529-1540, 2014.

J. Tang, S. Alelyani, and H. Liu, Feature selection for classification: A review, pp.37-70, 2014.

O. Troyanskaya, M. Cantor, G. Sherlock, P. Brown, T. Hastie et al., Missing value estimation methods for dna microarrays, Bioinformatics, vol.17, issue.6, pp.520-525, 2001.

C. Turkay, E. Kaya, S. Balcisoy, and H. Hauser, Designing progressive and interactive analytics processes for high-dimensional data analysis, IEEE Transactions on Visualization and Computer Graphics, vol.23, pp.131-140, 2017.

M. Vartak, S. Rahman, S. Madden, A. Parameswaran, and N. Polyzotis, See db: efficient data-driven visualization recommendations to support visual analytics, Proceedings of the VLDB Endowment, vol.8, pp.2182-2193, 2015.

J. Wang, S. Krishnan, M. J. Franklin, K. Goldberg, T. Kraska et al., A sample-and-clean framework for fast and accurate query processing on dirty data, Proceedings of the 2014 ACM SIGMOD International Conference on Management of Data, pp.469-480, 2014.

A. Wasay, X. Wei, N. Dayan, and S. Idreos, Data canopy: Accelerating exploratory statistical analysis, Proceedings of the 2017 ACM International Conference on Management of Data, pp.557-572, 2017.

M. Williams and T. Munzner, Steerable, progressive multidimensional scaling, Proceedings of the IEEE Symposium on Information Visualization, pp.57-64, 2004.

J. Zacharias, M. Barz, and D. Sonntag, A survey on deep learning toolkits and libraries for intelligent user interfaces, 2018.

E. Zgraggen, A. Galakatos, A. Crotty, J. Fekete, and T. Kraska, How progressive visualizations affect exploratory analysis, IEEE Transactions on Visualization and Computer Graphics, vol.23, pp.1977-1987, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01377896

K. Zoumpatianos, S. Idreos, and T. Palpanas, Ads: the adaptive data series index, The VLDB Journal, vol.25, pp.843-866, 2016.