A. Newell, You can't play 20 questions with nature and win: Projective comments on the papers of this symposium, Visual information processing, 1973.

A. Knops, B. Thirion, E. M. Hubbard, V. Michel, and S. Dehaene, Recruitment of an area involved in eye movements during mental arithmetic, Science, vol.324, p.19423779, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00504101

N. U. Dosenbach, D. A. Fair, F. M. Miezin, A. L. Cohen, K. K. Wenger et al., Distinct brain networks for adaptive and stable task control in humans, P Natl Acad Sci Usa, vol.104, pp.11073-11078, 2007.

D. Bzdok, G. Hartwigsen, A. Reid, A. R. Laird, P. T. Fox et al., Left inferior parietal lobe engagement in social cognition and language, Neurosci & Biobehav Rev, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01350512

C. J. Price and K. J. Friston, Cognitive conjunction: a new approach to brain activation experiments, Neuroimage, vol.5, p.9345555, 1997.

B. Thyreau, Y. Schwartz, B. Thirion, V. Frouin, E. Loth et al., Very large fMRI study using the IMAGEN database: Sensitivity-specificity and population effect modeling in relation to the underlying anatomy, NeuroImage, vol.61, p.22425669, 2012.

R. Henson, Forward inference using functional neuroimaging: Dissociations versus associations, Trends Cogn Sci, vol.10, p.16406759, 2006.

R. Poldrack, Can cognitive processes be inferred from neuroimaging data?, Trends Cogn Sci, vol.10, p.16406760, 2006.

T. Yarkoni, R. Poldrack, T. Nichols, D. V. Essen, and T. Wager, Large-scale automated synthesis of human functional neuroimaging data, Nat Methods, vol.8, p.21706013, 2011.

T. D. Wager, L. Y. Atlas, M. M. Botvinick, L. J. Chang, R. C. Coghill et al., Pain in the ACC?, Proc Natl Acad Sci USA, vol.113, p.27095849, 2016.

M. D. Lieberman, S. M. Burns, T. J. Eisenberger, N. I. Reply, and . Wager, Pain and the dACC: The importance of hit rate-adjusted effects and posterior probabilities with fair priors, Proc Natl Acad Sci USA, p.201603186, 2016.

R. A. Poldrack, Y. O. Halchenko, and S. J. Hanson, Decoding the large-scale structure of brain function by classifying mental states across individuals, Psychol Sci, vol.20, p.1364, 2009.

C. J. Price and K. J. Friston, Functional ontologies for cognition: The systematic definition of structure and function, Cognitive Neuropsychology, vol.22, p.21038249, 2005.

R. A. Poldrack, A. Kittur, D. Kalar, E. Miller, C. Seppa et al., The cognitive atlas: toward a knowledge foundation for cognitive neuroscience, Front neuroinform, vol.5, p.21922006, 2011.

J. Turner and A. Laird, The cognitive paradigm ontology: design and application, Neuroinformatics, vol.10, p.21643732, 2012.

T. D. Wager, L. Y. Atlas, M. A. Lindquist, M. Roy, C. W. Woo et al., An fMRI-based neurologic signature of physical pain, N Engl J Med, vol.368, p.1388, 2013.

M. Glasser, T. Coalson, R. E. Hacker, C. Harwell, J. Yacoub et al., A Multi-modal parcellation of human cerebral cortex, Nature, vol.536, p.27437579, 2016.

A. Laird, J. Lancaster, and F. P. Brainmap, Neuroinformatics, vol.3, 2005.

S. M. Smith, P. T. Fox, K. L. Miller, D. C. Glahn, P. M. Fox et al., Correspondence of the brain's functional architecture during activation and rest, Proc Natl Acad Sci, vol.106, p.19620724, 2009.

A. R. Laird, P. M. Fox, S. B. Eickhoff, J. A. Turner, K. L. Ray et al., Behavioral interpretations of intrinsic connectivity networks, J cog neurosci, vol.23, p.4022, 2011.

L. J. Chang, T. Yarkoni, M. W. Khaw, and A. G. Sanfey, Decoding the role of the insula in human cognition: functional parcellation and large-scale reverse inference, Cereb Cortex, p.65, 2012.

D. Bzdok, A. Heeger, R. Langner, A. R. Laird, P. T. Fox et al., Subspecialization in the human posterior medial cortex, Neuroimage, vol.106, p.25462801, 2015.

M. W. Cole, D. S. Bassett, J. D. Power, T. S. Braver, and S. E. Petersen, Intrinsic and task-evoked network architectures of the human brain, Neuron, vol.83, p.238, 2014.

R. A. Poldrack, D. Barch, J. Mitchell, T. Wager, A. Wagner et al., Towards open sharing of taskbased fMRI data: The OpenfMRI project, Front Neuroinform, vol.7, p.23847528, 2013.

L. Breiman, Stacked regressions. Machine learning, vol.24, p.49, 1996.

S. Haufe, F. Meinecke, K. Görgen, S. Dä-hne, J. D. Haynes et al., On the interpretation of weight vectors of linear models in multivariate neuroimaging, Neuroimage, vol.87, p.24239590, 2014.

W. Sebastian, M. Timm, S. Zdenizci-ozan, B. Bernhard, G. Tonio et al., Causal interpretation rules for encoding and decoding models in neuroimaging, NeuroImage, vol.110, p.25623501, 2015.

L. Cohen and S. Dehaene, Specialization within the ventral stream: the case for the visual word form area, NeuroImage, vol.22, p.15110040, 2004.

P. Belin, R. J. Zatorre, P. Lafaille, P. Ahad, and B. Pike, Voice-selective areas in human auditory cortex, Nature, vol.403, p.10659849, 2000.

P. Pinel and S. Dehaene, Genetic and environmental contributions to brain activation during calculation, NeuroImage, vol.81, p.23664947, 2013.
URL : https://hal.archives-ouvertes.fr/inserm-00832572

M. Andres, X. Seron, and E. Olivier, Hemispheric lateralization of number comparison, Cognitive Brain Research, vol.25, p.16005617, 2005.

W. Grodd, E. Hulsmann, M. Lotze, D. Wildgruber, and M. Erb, Sensorimotor mapping of the human cerebellum: fMRI evidence of somatotopic organization, Hum brain mapp, vol.13, p.11346886, 2001.

C. J. Stoodley and J. D. Schmahmann, Functional topography in the human cerebellum: a meta-analysis of neuroimaging studies, Neuroimage, vol.44, p.18835452, 2009.

C. Durisko and J. A. Fiez, Functional activation in the cerebellum during working memory and simple speech tasks, Cortex, vol.46, p.896, 2010.

L. Zago, M. Pesenti, E. Mellet, F. Crivello, B. Mazoyer et al., Neural correlates of simple and complex mental calculation, Neuroimage, vol.13, p.11162272, 2001.
URL : https://hal.archives-ouvertes.fr/hal-01382905

R. A. Poldrack and T. Yarkoni, From brain maps to cognitive ontologies: Informatics and the search for mental structure, Annual review of psychology, vol.67, p.26393866, 2016.

B. Danilo and Y. Thomas, Inference in the age of big data: Future perspectives on neuroscience, NeuroImage, vol.155, p.28456584, 2017.

R. A. Poldrack and K. J. Gorgolewski, Making big data open: data sharing in neuroimaging, Nat neurosci, vol.17, p.25349916, 2014.