, Database Benchmarking for Supporting Real-Time InteractiveQuerying of Large Data, 2020.

S. Agarwal, B. Mozafari, A. Panda, and H. Milner, 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.

S. Albers, Online algorithms: a survey, Mathematical Programming, vol.97, pp.3-26, 2003.

S. Alspaugh, N. Zokaei, A. Liu, C. Jin, and M. A. Hearst, Futzing and moseying: Interviews with professional data analysts on exploration practices, IEEE Trans. Vis. Comput. Graphics, vol.25, pp.22-31, 2018.

N. Sriram-karthik-badam, J. Elmqvist, and . Fekete, Steering the craft: UI elements and visualizations for supporting progressive visual analytics, Computer Graphics Forum, vol.36, pp.491-502, 2017.

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 (HILDA'18), 2018.
URL : https://hal.archives-ouvertes.fr/hal-01786507

L. Battle, R. Chang, J. Heer, and M. Stonebraker, Position statement: The case for a visualization performance benchmark, Data Systems for Interactive Analysis (DSIA), pp.1-5, 2017.

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 (SIGMOD '16), pp.1363-1375, 2016.

L. Battle and J. Heer, Characterizing Exploratory Visual Analysis: A Literature Review and Evaluation of Analytic Provenance in Tableau, Computer Graphics Forum, vol.38, pp.145-159, 2019.

A. Peter, M. Boncz, N. Zukowski, and . Nes, MonetDB/X100: Hyper-Pipelining Query Execution, Cidr, vol.5, pp.225-237, 2005.

A. Eli-t-brown, H. Ottley, Q. Zhao, R. Lin, A. Souvenir et al., Finding waldo: Learning about users from their interactions, IEEE Trans. Vis. Comput. Graphics, vol.20, pp.1663-1672, 2014.

, Readings in Information Visualization: Using Vision to Think, 1999.

S. Chaudhuri, G. Das, and V. Narasayya, Optimized stratified sampling for approximate query processing, ACM Transactions on Database Systems (TODS), vol.32, p.9, 2007.

S. Chaudhuri, B. Ding, and S. Kandula, Approximate Query Processing: No Silver Bullet, Proceedings of the 2017 ACM International Conference on Management of Data (SIGMOD '17), pp.511-519, 2017.

A. Crotty, A. Galakatos, E. Zgraggen, C. Binnig, and T. Kraska, Vizdom: Interactive Analytics Through Pen and Touch. Proc. VLDB Endow, 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 (HILDA '16), vol.6, 2016.

P. Eichmann, C. Binnig, T. Kraska, and E. Zgraggen, IDEBench: A Benchmark for Interactive Data Exploration, 2018.

P. Eichmann, E. Zgraggen, Z. Zhao, C. Binnig, and T. Kraska, Towards a Benchmark for Interactive Data Exploration, IEEE Data Eng. Bull, vol.39, issue.4, pp.50-61, 2016.

J. Fekete, D. Fisher, A. Nandi, and M. Sedlmair, Progressive Data Analysis and Visualization (Dagstuhl Seminar 18411), Dagstuhl Reports, vol.8, pp.1-40, 2019.

M. Feng, E. Peck, and L. Harrison, Patterns and pace: Quantifying diverse exploration behavior with visualizations on the web, IEEE Trans. Vis. Comput. Graphics, vol.25, pp.501-511, 2018.

M. Feng, E. Peck, and L. Harrison, Patterns and Pace: Quantifying Diverse Exploration Behavior with Visualizations on the Web, IEEE Trans. Vis. Comput. Graphics, vol.25, pp.501-511, 2019.

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

P. Godfrey, J. Gryz, and P. Lasek, Interactive visualization of large data sets, IEEE Transactions on Knowledge and Data Engineering, vol.28, pp.2142-2157, 2016.

D. Gotz and M. X. Zhou, Characterizing users' visual analytic activity for insight provenance, Information Visualization, vol.8, pp.42-55, 2009.

R. Joseph-m-hellerstein, A. Avnur, C. Chou, C. Hidber, V. Olston et al., Interactive data analysis: The control project, Computer, vol.32, pp.51-59, 1999.

. Joseph-m-hellerstein, J. Peter, H. J. Haas, and . Wang, Online aggregation, Acm Sigmod Record, vol.26, pp.171-182, 1997.

K. Hu, N. Gaikwad, M. Bakker, M. Hulsebos, E. Zgraggen et al., VizNet: Towards a large-scale visualization learning and benchmarking repository, Proceedings of the 2019 Conference on Human Factors in Computing Systems (CHI) (CHI '19), vol.12, 2019.

S. Idreos, O. Papaemmanouil, and S. Chaudhuri, Overview of data exploration techniques, Proceedings of the, 2015.

, ACM SIGMOD International Conference on Management of Data, pp.277-281

L. Jiang, P. Rahman, and A. Nandi, Evaluating interactive data systems: Workloads, metrics, and guidelines, Proceedings of the 2018 International Conference on Management of Data, pp.1637-1644, 2018.

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

M. Kay and J. Heer, Beyond weber's law: A second look at ranking visualizations of correlation, IEEE Trans. Vis. Comput. Graphics, vol.22, pp.469-478, 2015.

H. Lam, A Framework of Interaction Costs in Information Visualization, IEEE Trans. Vis. Comput. Graphics, vol.14, pp.1149-1156, 2008.

H. Lam, E. Bertini, P. Isenberg, C. Plaisant, and S. Carpendale, Empirical studies in information visualization: Seven scenarios, IEEE Trans. Vis. Comput. Graphics, vol.18, pp.1520-1536, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00932606

H. Lam, M. Tory, and T. Munzner, Bridging from goals to tasks with design study analysis reports, IEEE Trans. Vis. Comput. Graphics, vol.24, pp.435-445, 2017.

Q. Li, X. Bao, C. Song, J. Zhang, and C. North, Dynamic Query Sliders vs. Brushing Histograms, CHI '03 Extended Abstracts on Human Factors in Computing Systems (CHI EA '03), pp.834-835, 2003.

L. Lins, T. James, C. Klosowski, and . Scheidegger, Nanocubes for real-time exploration of spatiotemporal datasets, IEEE Trans. Vis. Comput. Graphics, vol.19, pp.2456-2465, 2013.

Z. Liu and J. Heer, The Effects of Interactive Latency on Exploratory Visual Analysis, IEEE Trans. Vis. Comput. Graphics, vol.20, pp.2122-2131, 2014.

Z. Liu, B. Jiang, and J. Heer, imMens: Real-time Visual Querying of Big Data, Computer Graphics Forum, vol.32, p.3, 2013.

R. B. Miller, Response Time in Man-computer Conversational Transactions, Proc. of the Fall Joint Computer Conference, Part I. ACM, pp.267-277, 1968.

T. Milo and A. Somech, Next-step suggestions for modern interactive data analysis platforms, Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, pp.576-585, 2018.

D. Moritz, B. Howe, and J. Heer, Falcon: Balancing Interactive Latency and Resolution Sensitivity for Scalable Linked Visualizations, Proceedings of the SIGCHI Conference on Human Factors in Computing Systems (CHI '19), p.11, 2019.

J. Nielsen, Response Times: The 3 Important Limits, 2016.

D. R. Olsen and J. , Developing User Interfaces, 1998.

E. Oren, C. Guéret, and S. Schlobach, Anytime query answering in RDF through evolutionary algorithms, International Semantic Web Conference, pp.98-113, 2008.

A. Ottley, R. Garnett, and R. Wan, Follow The Clicks: Learning and Anticipating Mouse Interactions During Exploratory Data Analysis, Computer Graphics Forum, vol.38, pp.41-52, 2019.

O. Patrick, E. O. Neil, X. Neil, S. Chen, and . Revilak, The star schema benchmark and augmented fact table indexing, Technology Conference on Performance Evaluation and Benchmarking, pp.237-252, 2009.

E. Patrick, E. J. Neil, X. O'neil, and . Chen, The star schema benchmark (SSB), p.50, 2007.

T. Palpanas, N. Koudas, and A. Mendelzon, Using datacube aggregates for approximate querying and deviation detection, IEEE transactions on knowledge and data engineering, vol.17, p.11, 2005.

Y. Park, B. Mozafari, J. Sorenson, and J. Wang, VerdictDB: Universalizing Approximate Query Processing, Proceedings of the 2018 International Conference on Management of Data (SIGMOD '18), pp.1461-1476, 2018.

A. William, J. Pike, R. Stasko, T. Chang, and . Connell, The science of interaction, Information Visualization, vol.8, p.4, 2009.

H. Piringer, C. Tominski, P. Muigg, and W. Berger, A Multi-Threading Architecture to Support Interactive Visual Exploration, IEEE Trans. Vis. Comput. Graphics, vol.15, issue.6, pp.1113-1120, 2009.

C. Plaisant, J. Fekete, and G. Grinstein, Promoting insight-based evaluation of visualizations: From contest to benchmark repository, IEEE Trans. Vis. Comput. Graphics, vol.14, pp.120-134, 2007.
URL : https://hal.archives-ouvertes.fr/hal-00701742

F. Psallidas and E. Wu, Provenance for Interactive Visualizations, Proceedings of the Workshop on Human-In-the-Loop Data Analytics (HILDA'18), vol.8, 2018.

F. Psallidas and E. Wu, Smoke: Fine-grained lineage at interactive speed, Proceedings of the VLDB Endowment, vol.11, issue.6, 2018.

M. Raasveldt and H. Mühleisen, DuckDB: An Embeddable Analytical Database, Proceedings of the 2019 International Conference on Management of Data (SIGMOD '19), 1981.

B. Shneiderman, Response Time and Display Rate in Human Performance with Computers, ACM Comput. Surv, vol.16, pp.265-285, 1984.

B. Shneiderman, Dynamic Queries for Visual Information Seeking, IEEE Softw, vol.11, issue.6, pp.70-77, 1994.

, Spotfire 1995. TICO Spotfire, 2019.

C. Stolte, D. Tang, and P. Hanrahan, Polaris: A system for query, analysis, and visualization of multidimensional relational databases, IEEE Trans. Vis. Comput. Graphics, vol.8, pp.52-65, 2002.

, Tableau 2003. Tableau Software, 2019.

N. Tang, E. Wu, and G. Li, Towards Democratizing Relational Data Visualization, Proceedings of the 2019 International Conference on Management of Data, pp.2025-2030, 2019.

E. Tanin, R. Beigel, and B. Shneiderman, Incremental Data Structures and Algorithms for Dynamic Query Interfaces, SIGMOD Rec, vol.25, pp.21-24, 1996.

W. Tao, X. Liu, Y. Wang, L. Battle, Ç. Demiralp et al., Kyrix: Interactive Pan/Zoom Visualizations at Scale, Computer Graphics Forum, vol.38, pp.529-540, 2019.

. Tpc-ds, TPC-DS, pp.2017-2028, 2016.

. Tpc-h, , pp.2017-2028, 2016.

W. John and . Tukey, Exploratory data analysis, vol.2, 1977.

L. Tweedie, B. Spence, D. Williams, and R. Bhogal, The Attribute Explorer, Conference Companion on Human Factors in Computing Systems (CHI '94), pp.435-436, 1994.

M. Vartak, S. Rahman, and S. Madden, Seedb: Efficient data-driven visualization recommendations to support visual analytics, Proceedings of the VLDB Endowment International Conference on Very Large Data Bases, vol.8, p.2182, 2015.

C. Weaver, Multidimensional visual analysis using cross-filtered views, 2008 IEEE Symposium on Visual Analytics Science and Technology. 163-170, 2008.

K. Wongsuphasawat, D. Moritz, A. Anand, J. Mackinlay, B. Howe et al., Voyager: Exploratory Analysis via Faceted Browsing of Visualization Recommendations, IEEE Trans. Vis. Comput. Graphics, vol.22, pp.649-658, 2016.

K. Wongsuphasawat, Z. Qu, D. Moritz, R. Chang, F. Ouk et al., Augmenting Visual Analysis with Partial View Specifications, Proceedings of the SIGCHI Conference on Human Factors in Computing Systems (CHI '17), vol.2, pp.2648-2659, 2017.

E. Zgraggen, A. Galakatos, A. Crotty, J. Fekete, and T. Kraska, How Progressive Visualizations Affect Exploratory Analysis, IEEE Trans. Vis. Comput. Graphics, vol.23, pp.1977-1987, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01377896

E. Zgraggen, Z. Zhao, R. Zeleznik, and T. Kraska, Investigating the Effect of the Multiple Comparisons Problem in Visual Analysis, Proceedings of the 2018 CHI Conference on Human Factors in Computing Systems (CHI '18), vol.479, 2018.