E. Akbari-azirani, F. Goasdoué, I. Manolescu, and A. Roatis, Efficient OLAP Operations For RDF Analytics, DESWeb, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01187448

D. Bleco and Y. Kotidis, Using entropy metrics for pruning very large graph cubes, Information Systems, vol.81, 2019.

D. Bursztyn, F. Goasdoué, and I. Manolescu, Teaching an RDBMS about ontological constraints, vol.9, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01354592

Y. Diao, I. Manolescu, and S. Shang, Dagger: Digging for interesting aggregates in RDF graphs, ISWC Posters & Demonstrations and Industry Tracks, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01577464

F. Goasdoué, P. Guzewicz, and I. Manolescu, Incremental structural summarization of RDF graphs (demo), EDBT, 2019.

K. Gouda and M. J. Zaki, Efficiently mining maximal frequent itemsets, ICDM, pp.163-170, 2001.

V. Harinarayan, A. Rajaraman, and J. D. Ullman, Implementing data cubes efficiently, SIGMOD, 1996.

J. M. Hellerstein, P. J. Haas, and H. J. Wang, Online aggregation, SIGMOD, 1997.

Y. Luo, X. Qin, N. Tang, G. Li, and X. Wang, DeepEye: Creating good data visualizations by keyword search, SIGMOD, 2018.

I. Manolescu and M. Mazuran, Speeding up RDF aggregate discovery through sampling, BigVis, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02065993

B. Tang, S. Han, M. L. Yiu, R. Ding, and D. Zhang, Extracting top-k insights from multi-dimensional data, SIGMOD, 2017.

M. Vartak, S. Rahman, S. Madden, A. G. Parameswaran, and N. Polyzotis, SEEDB: efficient data-driven visualization recommendations to support visual analytics, vol.8, 2015.

Y. Wen, X. Zhu, S. Roy, and J. Yang, Qagview: Interactively summarizing high-valued aggregate query answers, SIGMOD, pp.1709-1712, 2018.

Y. Zhao, P. Deshpande, and J. F. Naughton, An array-based algorithm for simultaneous multidimensional aggregates, SIGMOD, 1997.