. .. Perspectives,

. .. Improving-existing-methods, , p.172

. .. Conclusion, The Impact of Flow in an EEG-based Brain Computer Interface, 2017.

E. Christophe, J. Frey, R. Kronland, J. Micoulaud, J. Mladenovic et al.,

M. Ystad and . Aramaki, Evaluation of a Congruent Auditory Feedback for Motor Imagery BCI, Poster at BCI Meeting, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01794900

J. Mladenovic, M. Joffily, J. Frey, F. Lotte, and J. Mattout, Endowing The Machine with Active Inference: A generic Framework to Implement Adaptive BCI, Oral Presentation, NaT Conference, 2017.

J. Mladenovic, J. Frey, E. Maby, M. Joffily, F. Lotte et al., Active Inference as a Unifying, Generic and Adaptive Framework for P300-based BCI, Poster at BCI Meeting, vol.DOI, 2018.
URL : https://hal.archives-ouvertes.fr/halshs-02396876

. Ahn, High theta and low alpha powers may be indicative of bci-illiteracy in motor imagery, PloS one, vol.8, issue.11, p.80886, 2013.

[. Alimardani, Effect of biased feedback on motor imagery learning in BCI-teleoperation system, Frontiers in systems neuroscience, vol.8, p.52, 2014.

L. Allal and G. P. Ducrey, Assessment of-or in-the zone of proximal development. Learning and instruction, vol.10, pp.137-152, 2000.

A. Neuper-;-allison, B. Z. Neuper, and C. , Could anyone use a bci?, Brain-computer interfaces, pp.35-54, 2010.

. Ang, Filter bank common spatial pattern (fbcsp) in brain-computer interface, IEEE International Joint Conference on Neural Networks (IEEE World Congress on Computational Intelligence), pp.2390-2397, 2008.

G. Ang, K. K. Ang, and C. Guan, Brain-computer interface in stroke rehabilitation, 2013.

M. Anshel, M. H. Anshel, and D. Marisi, Effect of music and rhythm on physical performance, Research quarterly, vol.49, issue.2, pp.109-122, 1978.

[. Astolfi, Comparison of different cortical connectivity estimators for high-resolution eeg recordings, Human brain mapping, vol.28, issue.2, pp.143-157, 2007.

J. Z. Bakdash and L. R. Marusich, Repeated measures correlation, Frontiers in Psychology, vol.8, p.456, 2017.

[. Barachant, Classification de potentiels évoqués P300 par géométrie riemannienne pour les interfaces cerveau-machine EEG, p.394, 2013.

G. Barbero, A. Grosse-wentrup, and M. , Biased feedback in brain-computer interfaces, Journal of neuroengineering and rehabilitation, vol.7, p.34, 2010.

[. Batail, Eeg neurofeedback research: A fertile ground for psychiatry? L'Encéphale, 2019.

[. Baykara, Effects of training and motivation on auditory p300 brain-computer interface performance, Clinical Neurophysiology, vol.127, issue.1, pp.379-387, 2016.

[. Bechara, Emotion, decision making and the orbitofrontal cortex, Cerebral cortex, 2000.

. Bengtsson, Listening to rhythms activates motor and premotor cortices, cortex, vol.45, issue.1, pp.62-71, 2009.

[. Bennett, Functional gastrointestinal disorders: psychological, social, and somatic features, Gut, vol.42, issue.3, pp.414-420, 1998.

H. Berger, Psyche (s. 5/6), 1940.

G. Berger, H. Berger, and P. Gloor, Über das Elektrenkephalogramm des Menschen. Hans Berger on the electroencephalogramm of man: the fourteen original reports on the human electroencephalogram, 1969.

[. Birbaumer, The thought translation device (ttd) for completely paralyzed patients, IEEE Transactions on rehabilitation Engineering, vol.8, issue.2, pp.190-193, 2000.

[. Blankertz, The bci competition 2003: progress and perspectives in detection and discrimination of eeg single trials, IEEE transactions on biomedical engineering, vol.51, issue.6, pp.1044-1051, 2004.

[. Blankertz, Optimizing spatial filters for robust eeg single-trial analysis, IEEE Signal processing magazine, vol.25, issue.1, pp.41-56, 2007.

[. Blei, Variational inference: A review for statisticians, Journal of the American Statistical Association, vol.112, issue.518, pp.859-877, 2017.

[. Blumberg, Adaptive classification for brain computer interfaces, 29th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, pp.2536-2539, 2007.

[. Bonnet, Two brains, one game: Design and evaluation of a multiuser bci video game based on motor imagery, IEEE Transactions on Computational Intelligence and AI in Games, vol.5, issue.2, pp.185-198, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00784886

C. L. Borgman, The user's mental model of an information retrieval system: an experiment on a prototype online catalog, International Journal of man-machine studies, vol.24, issue.1, pp.47-64, 1986.

[. Braun, Embodied neurofeedback with an anthropomorphic robotic hand, Scientific reports, vol.6, p.37696, 2016.

[. Brouwer, Estimating workload using eeg spectral power and erps in the n-back task, Journal of neural engineering, vol.9, issue.4, p.45008, 2012.

[. Brouwer, V. Erp, A. Brouwer, and J. B. Van-erp, A tactile p300 brain-computer interface, Frontiers in neuroscience, vol.4, p.19, 2010.

[. Brunia, Negative slow waves as indices of anticipation: the bereitschaftspotential, the contingent negative variation, and the stimulus-preceding negativity, The Oxford handbook of event-related potential components, 2012.

V. Bulitko and M. Brown, Flow Maximization as a Guide to Optimizing Performance : A Computational Model, Advances in Cognitive Systems, vol.1, pp.1-18, 2012.

J. C. Burguillo, Using game theory and competition-based learning to stimulate student motivation and performance, Computers & education, vol.55, issue.2, pp.566-575, 2010.

A. ;. Burnham, K. P. Burnham, and D. R. Anderson, A practical information-theoretic approach. Model selection and multimodel inference, 2002.

[. Buttfield, Towards a robust bci: error potentials and online learning, IEEE Transactions on Neural Systems and Rehabilitation Engineering, vol.14, issue.2, pp.164-168, 2006.

[. Campisi, Eeg for automatic person recognition, Computer, vol.45, issue.7, pp.87-89, 2012.

S. K. Card and . Cardellicchio, The psychology of human-computer interaction, Neuropsychologia, vol.49, issue.5, pp.1369-1372, 2011.

M. Carroll, J. Carroll, and R. Mack, Learning to use a word processor: By doing, by thinking, and by knowing, Human factors in computer systems, pp.13-51, 1984.

R. Caton-;-caton, Electrical currents of the brain, The Journal of Nervous and Mental Disease, vol.2, issue.4, p.610, 1875.

P. Cattell, R. B. Cattell, P. Cattell, and H. E. , Personality structure and the new fifth edition of the 16pf, Educational and Psychological Measurement, vol.55, issue.6, pp.926-937, 1995.

[. Chao, L. L. Martin-;-chao, and A. Martin, Representation of manipulable man-made objects in the dorsal stream, Neuroimage, vol.12, issue.4, pp.478-484, 2000.

[. Cho, Neurofeedback Training with Virtual Reality for Inattention and Impulsiveness, CyberPsychology & Behavior, vol.7, issue.5, pp.519-526, 2004.

[. Cinel, Possible sources of perceptual errors in p300-based speller paradigm, 2004.

[. Clement, Multi-Armed Bandits for Intelligent Tutoring Systems, Journal of Educational Data Mining, vol.7, issue.2, pp.20-48, 2015.
URL : https://hal.archives-ouvertes.fr/hal-00913669

[. Costa, E. J. Costa, and E. F. Cabral, Eeg-based discrimination between imagination of left and right hand movements using adaptive gaussian representation, Medical engineering & physics, vol.22, issue.5, pp.345-348, 2000.

K. J. Craik, Music practice and participation for psychological well-being: A review of how music influences positive emotion, engagement, relationships, meaning, and accomplishment, Musicae Scientiae, vol.445, issue.1, pp.44-64, 1952.

[. Cruz, Double errp detection for automatic error correction in an erp-based bci speller, IEEE Transactions on Neural Systems and Rehabilitation Engineering, vol.26, issue.1, pp.26-36, 2018.

M. Csíkszentmihályi, Beyond boredom and anxiety, 1975.

M. Csikszentmihalyi, Flow: The psychology of happiness, 2013.

[. Csikszentmihalyi, M. Lefevre-;-csikszentmihalyi, and J. Lefevre, Optimal experience in work and leisure, Journal of Personality and Social Psychology, vol.56, issue.5, pp.815-822, 1989.

E. A. Curran and M. J. Stokes, Learning to control brain activity: A review of the production and control of eeg components for driving brain-computer interface (bci) systems, Brain and cognition, vol.51, issue.3, pp.326-336, 2003.

[. Daly, Investigating music tempo as a feedback mechanism for closed-loop bci control, Brain-Computer Interfaces, vol.1, issue.3-4, pp.158-169, 2014.

. De-gortari, A. B. Griffiths-;-de-gortari, and M. D. Griffiths, Auditory experiences in game transfer phenomena: An empirical self-report study, International Journal of Cyber Behavior, vol.4, issue.1, pp.59-75, 2014.

K. Deisseroth, B. Efron, and R. J. Tibshirani, An introduction to the bootstrap, Optogenetics. Nature methods, vol.8, issue.1, 1994.

. Enzmann, D. Pelc-;-enzmann, and N. Pelc, Brain motion: measurement with phase-contrast mr imaging, Radiology, vol.185, issue.3, pp.653-660, 1992.

. Esteban-millat, Modelling students' flow experiences in an online learning environment, Computers & Education, vol.71, pp.111-123, 2014.

H. ;. Fairclough, S. H. Fairclough, and K. Houston, A metabolic measure of mental effort, Biological psychology, vol.66, issue.2, pp.177-90, 2004.

[. Faller, Autocalibration and Recurrent Adaptation: Towards a Plug and Play Online ERD-BCI, IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, issue.3, p.20, 2012.

[. Faradji, Plausibility assessment of a 2-state self-paced mental task-based bci using the no-control performance analysis, Journal of neuroscience methods, vol.180, issue.2, pp.330-339, 2009.

[. Farb, Interoception, contemplative practice, and health, Front. Psychol, vol.6, p.763, 2015.

L. A. Farwell and E. Donchin, Talking off the top of your head: toward a mental prosthesis utilizing event-related brain potentials, Electroencephalography and clinical Neurophysiology, vol.70, issue.6, pp.510-523, 1988.

. Fazel-rezai, P300 brain computer interface: current challenges and emerging trends, Frontiers in neuroengineering, vol.5, p.14, 2012.

[. Fitzgerald, Active inference, evidence accumulation, and the urn task, Neural computation, vol.27, issue.2, pp.306-328, 2015.

[. Franchak, Learning by doing: Action performance facilitates affordance perception, Vision research, vol.50, issue.24, pp.2758-2765, 2010.

[. Frey, Framework for electroencephalography-based evaluation of user experience, Proceedings of the 2016 CHI Conference on Human Factors in Computing Systems, pp.2283-2294, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01251014

[. Friedrich, Whatever Works: A Systematic User-Centered Training Protocol to Optimize Brain-Computer Interfacing Individually, vol.8, pp.19-22, 2013.

[. Friedrich, Brain-computer interface game applications for combined neurofeedback and biofeedback treatment for children on the autism spectrum, Frontiers in neuroengineering, vol.7, p.21, 2014.

K. Friston, The free-energy principle: a unified brain theory?, Nature reviews neuroscience, vol.11, issue.2, p.127, 2010.

[. Friston, The anatomy of choice: dopamine and decisionmaking, Phil. Trans. R. Soc. B, vol.369, p.20130481, 1655.

[. Fruitet, Automatic motor task selection via a bandit algorithm for a brain-controlled button, Journal of neural engineering, vol.10, issue.1, p.16012, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00798561

[. Fryer, Audio drama and the imagination, Journal of Media Psychology, 2013.

[. Gallivan, Neuroimaging reveals enhanced activation in a reach-selective brain area for objects located within participants' typical hand workspaces, Neuropsychologia, vol.49, issue.13, pp.3710-3721, 2011.

J. Q. Gan and . Gateau, In silico versus over the clouds: On-the-fly mental state estimation of aircraft pilots, using a functional near infrared spectroscopy based passive-bci, Frontiers in human neuroscience, vol.12, p.187, 2006.

[. Gayraud, Optimal transport applied to transfer learning for p300 detection, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01556603

[. George, Freeze the bci until the user is ready: a pilot study of a bci inhibitor, 2011.
URL : https://hal.archives-ouvertes.fr/inria-00634556

[. Gerjets, Cognitive state monitoring and the design of adaptive instruction in digital environments: lessons learned from cognitive workload assessment using a passive brain-computer interface approach, Frontiers in neuroscience, vol.8, p.385, 2014.

. Gharibans, Artifact rejection methodology enables continuous, noninvasive measurement of gastric myoelectric activity in ambulatory subjects, Scientific reports, vol.8, issue.1, p.5019, 2018.

[. Ghaziri, J. Thibault-;-ghaziri, and R. T. Thibault, Neurofeedback: An inside perspective, Casting Light on the Dark Side of Brain Imaging, pp.113-116, 2019.

J. J. Gibson-;-gibson, Visually controlled locomotion and visual orientation in animals, British journal of psychology, vol.49, issue.3, pp.182-194, 1958.

[. Grizou, Calibration-free bci based control, Twenty-Eighth AAAI Conference on Artificial Intelligence, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00984068

M. Grosse-wentrup-;-grosse-wentrup, Fronto-parietal gamma-oscillations are a cause of performance variation in brain-computer interfacing, 5th International IEEE/EMBS Conference on Neural Engineering, pp.384-387, 2011.

. Grosse-wentrup, M. Schölkopf-;-grosse-wentrup, and B. Schölkopf, High gamma-power predicts performance in sensorimotor-rhythm brain-computer interfaces, Journal of neural engineering, vol.9, issue.4, p.46001, 2012.

J. D. Hadfield, MCMC methods for multi-respoinse generalized linear mixed models: The MCMCglmm R package, Journal of Statistical Software, vol.33, issue.2, pp.1-22, 2010.

[. Hammer, Psychological predictors of smr-bci performance, Biological psychology, vol.89, issue.1, pp.80-86, 2012.

L. Hardy, M. W. Hardy, and A. B. Lagasse, Rhythm, movement, and autism: using rhythmic rehabilitation research as a model for autism, Frontiers in integrative neuroscience, vol.7, p.19, 2013.

[. Harrison, The embodiment of emotional feelings in the brain, J. Neurosci, issue.38, p.30, 2010.

S. Hart, S. G. Hart, and L. E. Staveland, Development of nasa-tlx (task load index): Results of empirical and theoretical research, Advances in psychology, vol.52, pp.139-183, 1988.

B. Hendrix, C. Hendrix, and W. Barfield, The sense of presence within auditory virtual environments, Presence: Teleoperators & Virtual Environments, vol.5, issue.3, pp.290-301, 1996.

[. Heutte, The EduFlow Model: A Contribution Toward the Study of Optimal Learning Environments, Flow Experience, pp.127-143, 2016.
URL : https://hal.archives-ouvertes.fr/halshs-01941592

[. Hitziger, Jitter-adaptive dictionary learning-application to multi-trial neuroelectric signals, 2013.
URL : https://hal.archives-ouvertes.fr/hal-01094619

J. U. Hjorth, Computer intensive statistical methods: Validation, model selection, and bootstrap, 2017.

[. Hochberg, Neuronal ensemble control of prosthetic devices by a human with tetraplegia, Nature, vol.442, issue.7099, p.164, 2006.

. Houston, Revising the competitiveness index using factor analysis, Psychological Reports, vol.90, issue.1, pp.31-34, 2002.

. Huettel, Functional magnetic resonance imaging, vol.1, pp.188-205, 1884.

C. Jeunet, Why Standard Brain-Computer Interface (BCI) Training Protocols Should be Changed: An Experimental Study, pp.1-24, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01302154

[. Jeunet, Advances in user-training for mental-imagery-based BCI control, pp.3-35, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01302138

[. Jeunet, Predicting Mental Imagery-Based BCI Performance from Personality, Cognitive Profile and Neurophysiological Patterns, PLoS ONE, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01177685

[. Jeunet, Continuous tactile feedback for motor-imagery based brain-computer interaction in a multitasking context, IFIP Conference on Human-Computer Interaction, pp.488-505, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01159146

[. Jin, Targeting an efficient targetto-target interval for p300 speller brain-computer interfaces, Medical & biological engineering & computing, vol.50, issue.3, pp.289-296, 2012.

F. F. Jobsis, Noninvasive, infrared monitoring of cerebral and myocardial oxygen sufficiency and circulatory parameters, Science, vol.198, issue.4323, pp.1264-1267, 1977.

[. Johnsen, A neuroanatomical dissociation for emotion induced by music, International Journal of Psychophysiology, vol.72, issue.1, pp.24-33, 2009.

J. and P. N. , Mental models: Towards a cognitive science of language, inference, and consciousness, 1983.

J. , B. , P. N. Byrne, and R. M. , , 1991.

[. Kalika, Adaptive stimulus selection in erp-based brain-computer interfaces by maximizing expected discrimination gain, 2017 IEEE International Conference on, pp.1405-1410, 2017.

I. Kant, Critique of pure reason, 1998.

D. Kaplan-;-kaplan, Structural equation modeling: Foundations and extensions, vol.10, 2008.

[. Karageorghis, Psychological effects of music tempi during exercise, International Journal of Sports Medicine, vol.29, issue.7, pp.613-619, 2008.

[. Karageorghis, Ergogenic and psychological effects of synchronous music during circuit-type exercise, Psychology of Sport and Exercise, vol.11, issue.6, pp.551-559, 2010.

[. Karageorghis, Development and initial validation of an instrument to assess the motivational qualities of music in exercise and sport: The Brunel Music Rating Inventory, Journal of Sports Sciences, vol.17, issue.9, pp.713-724, 1999.

[. Kaufmann, Flashing characters with famous faces improves erp-based brain-computer interface performance, Journal of neural engineering, vol.8, issue.5, p.56016, 2011.

. Kellaris, Decibels, disposition, and duration: the impact of musical loudness and internal states on time perceptions, 1996.

. Keller and J. Keller, Challenges in Learner Motivation: A Holistic, Integrative Model for Research and Design on Learner Motivation, New Educational Paradigm for Learning and Instruction, pp.1-18, 2010.

J. M. Keller-;-keller, Development and use of the ARCS model of instructional design, Journal of Instructional Development, vol.10, issue.3, pp.2-10, 1987.

T. Kenyon, G. P. Kenyon, and M. H. Thaut, A measure of kinematic limb instability modulation by rhythmic auditory stimulation, Journal of Biomechanics, vol.33, issue.10, pp.1319-1323, 2000.

. Kindermans, True Zero-Training Brain-Computer Interfacing -An Online Study, 2014.

. Kindermans, Integrating dynamic stopping, transfer learning and language models in an adaptive zero-training erp speller, Journal of neural engineering, vol.11, issue.3, p.35005, 2014.

. Kindermans, A p300 bci for the masses: Prior information enables instant unsupervised spelling, Advances in Neural Information Processing Systems, pp.710-718, 2012.

[. Kleih, Motivation modulates the P300 amplitude during brain-computer interface use, Clinical Neurophysiology, vol.121, issue.7, pp.1023-1031, 2010.

S. ;. Koch, K. L. Koch, and R. M. Stern, , 2004.

[. Krucoff, Enhancing nervous system recovery through neurobiologics, neural interface training, and neurorehabilitation, Frontiers in neuroscience, vol.10, p.584, 2016.

. Lagasse, A. B. Hardy-;-lagasse, and M. W. Hardy, Rhythm, movement, and autism: using rhythmic rehabilitation research as a model for autism, Frontiers in integrative neuroscience, vol.7, p.19, 2013.

[. Larsson, Perception of self-motion and presence in auditory virtual environments, Proceedings of seventh annual workshop presence, pp.252-258, 2004.

[. Lécuyer, Brain-computer interfaces, virtual reality, and videogames, Computer, vol.41, issue.10, pp.66-72, 2008.

O. Ledoit and M. Wolf, A well-conditioned estimator for large-dimensional covariance matrices, Journal of multivariate analysis, vol.88, issue.2, pp.365-411, 2004.

[. Levine, A direct brain interface based on event-related potentials, IEEE Transactions on Rehabilitation Engineering, vol.8, issue.2, pp.180-185, 2000.

[. Li, A self-training semi-supervised svm algorithm and its application in an eeg-based brain computer interface speller system, Pattern Recognition Letters, vol.29, issue.9, pp.1285-1294, 2008.

[. Livet, Transgenic strategies for combinatorial expression of fluorescent proteins in the nervous system, Nature, vol.450, issue.7166, p.56, 2007.

F. Lotte-;-lotte, A tutorial on eeg signal-processing techniques for mental-state recognition in brain-computer interfaces, Guide to Brain-Computer Music Interfacing, pp.133-161, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01055103

F. Lotte-;-lotte, Signal processing approaches to minimize or suppress calibration time in oscillatory activity-based brain-computer interfaces, Proceedings of the IEEE, vol.103, issue.6, pp.871-890, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01159171

[. Lotte, A review of classification algorithms for eeg-based brain-computer interfaces: a 10 year update, Journal of neural engineering, vol.15, issue.3, p.31005, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01846433

L. , J. Lotte, F. Jeunet, and C. , Online classification accuracy is a poor metric to study mental imagery-based bci user learning: an experimental demonstration and new metrics, 7th International BCI Conference, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01519478

L. , J. Lotte, F. Jeunet, and C. , Defining and quantifying users' mental imagery-based bci skills: a first step, Journal of neural engineering, vol.15, issue.4, p.46030, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01846434

[. Lotte, Flaws in current human training protocols for spontaneous Brain-Computer Interfaces: lessons learned from instructional design, Frontiers in Human Neuroscience, vol.7, p.568, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00862716

[. Lotte, Introduction: Evolution of brain-computer interfaces, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01656743

[. Lu, Designing children's software to ensure productive interactivity through collaboration in the zone of proximal development (zpd), 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, pp.57-85, 2001.

[. Lumsden, Gamification of Cognitive Assessment and Cognitive Training: A Systematic Review of Applications and Efficacy. JMIR serious games, vol.4, p.11, 2016.

[. Luo, Musical training induces functional plasticity in perceptual and motor networks: Insights from resting-state fMRI, PLoS ONE, vol.7, issue.5, pp.1-10, 2012.

[. Ma, Inverted u-shaped curvilinear relationship between challenge and one's intrinsic motivation: Evidence from event-related potentials, Frontiers in neuroscience, vol.11, p.131, 2017.

E. Maby-;-maby, Technical Requirements for High-quality EEG Acquisition, Brain-Computer Interfaces, vol.2, pp.143-161, 2016.

M. Kay-;-mackay, D. J. , M. Kay, and D. J. , Information theory, inference and learning algorithms, 2003.

[. Mainsah, Optimizing the stimulus presentation paradigm design for the p300-based braincomputer interface using performance prediction, Journal of neural engineering, vol.14, issue.4, p.46025, 2017.

[. Mainsah, Moving away from error-related potentials to achieve spelling correction in p300 spellers, IEEE Transactions on Neural Systems and Rehabilitation Engineering, vol.23, issue.5, pp.737-743, 2015.

[. Makeig, Evolving Signal Processing for Brain-Computer Interfaces, Proceedings of the IEEE, vol.100, pp.1567-1584, 2012.

T. W. Malone and M. R. Lepper, Making learning fun: A taxonomy of intrinsic motivations for learning, 1987.

[. Margaux, Objective and subjective evaluation of online error correction during p300-based spelling, Advances in Human-Computer Interaction, p.4, 2012.

H. Markram, The blue brain project, Nature Reviews Neuroscience, vol.7, issue.2, p.153, 2006.

[. Martín, User modeling and adaptation for daily routines: providing assistance to people with special and specific needs, International Conference on User Modeling, Adaptation, and Personalization, pp.304-308, 2011.

G. Martin, J. J. Martin, and D. L. Gill, The relationships among competitive orientation, sport-confidence, self-efficacy, anxiety, and performance, Journal of Sport and Exercise Psychology, vol.13, issue.2, pp.149-159, 1991.

[. Mattout, Probabilistic classification models for brain computer interfaces, Proceedings of the Human Brain Mapping Conference, p.1519, 2008.

[. Mattout, Improving bci performance through co-adaptation: applications to the p300-speller. Annals of physical and rehabilitation medicine, vol.58, pp.23-28, 2015.

S. Mayer, A. Mayer, and C. Saper, Non-conscious brain processing indexed by psychophysiological measures. The biological basis for mind body interactions, 2000.

R. E. Mayer-;-mayer, Models for understanding, Review of educational research, vol.59, issue.1, pp.43-64, 1989.

[. Mccraty, The coherent heart: Heart-brain interactions, psychophysiological coherence, and the emergence of system-wide order, Integral Review, vol.5, issue.2, pp.10-115, 2009.

[. Mccreadie, Sensorimotor learning with stereo auditory feedback for a brain-computer interface, Medical & biological engineering & computing, vol.51, issue.3, pp.285-293, 2013.

[. Mcfarland, Spatial filter selection for eeg-based communication, Electroencephalography and clinical Neurophysiology, vol.103, issue.3, pp.386-394, 1997.

[. Mcfarland, Electroencephalographic (eeg) control of three-dimensional movement, Journal of neural engineering, vol.7, issue.3, p.36007, 2010.

[. Mcfarland, Should the parameters of a bci translation algorithm be continually adapted, Journal of neuroscience methods, vol.199, issue.1, pp.103-107, 2011.

M. G. Mckee-;-mckee, Biofeedback: An overview in the context of heart-brain medicine, Cleveland Clinic Journal of Medicine, vol.75, issue.2, pp.31-34, 2008.

[. Meng, Noninvasive electroencephalogram based control of a robotic arm for reach and grasp tasks, Scientific Reports, vol.6, p.38565, 2016.

[. Middendorf, Brain-computer interfaces based on the steady-state visual-evoked response, IEEE transactions on rehabilitation engineering, vol.8, issue.2, pp.211-214, 2000.

[. Mika, Fisher discriminant analysis with kernels, Neural networks for signal processing IX: Proceedings of the 1999 IEEE signal processing society workshop (cat. no. 98th8468), pp.41-48, 1999.

C. Milan, J. D. Milan, and J. M. Carmena, Invasive or noninvasive: Understanding brain-machine interface technology, 2010.

, IEEE Engineering in Medicine and Biology Magazine, vol.29, issue.1, pp.16-22

E. R. Miranda, Brain-computer music interfacing: interdisciplinary research at the crossroads of music, science and biomedical engineering, Guide to Brain-Computer Music Interfacing, pp.1-27, 2014.

[. Mladenovi?, Endowing the machine with active inference: A generic framework to implement adaptive bci, NeuroAdaptive Technology Conference'17, 2017.

[. Mladenovi?, A generic framework for adaptive eeg-based bci training and operation, 2017.

[. Moraveji, Peripheral Paced Respiration: Influencing User Physiology During Information Work, UIST '11, 2011.

. Müller-putz, Towards noninvasive hybrid brain-computer interfaces: framework, practice, clinical application, and beyond, Proceedings of the IEEE, vol.103, issue.6, pp.926-943, 2015.

[. Münßinger, Brain painting: first evaluation of a new brain-computer interface application with als-patients and healthy volunteers, Frontiers in neuroscience, vol.4, p.182, 2010.

A. Murray, T. Murray, I. Arroyo, J. Nakamura, and M. Csikszentmihalyi, Toward measuring and maintaining the zone of proximal development in adaptive instructional systems, International Conference on Intelligent Tutoring Systems, pp.89-105, 2002.

T. S. Nelsen and S. Kohatsu, Clinical electrogastrography and its relationship to gastric surgery, The American Journal of Surgery, 1968.

C. Nelson, R. R. Nelson, and P. H. Cheney, Training end users: An exploratory study, MIS quarterly, vol.11, issue.4, pp.547-559, 1987.

[. Neuper, Imagery of motor actions: Differential effects of kinesthetic and visual-motor mode of imagery in single-trial eeg, Cognitive brain research, vol.25, issue.3, pp.668-677, 2005.

[. Neuper, Motor imagery and action observation: modulation of sensorimotor brain rhythms during mental control of a brain-computer interface, Clinical neurophysiology, vol.120, issue.2, pp.239-247, 2009.

. Nichols, Measurement of presence and its consequences in virtual environments, International Journal of Human-Computer Studies, vol.52, issue.3, pp.471-491, 2000.

[. Niedermeyer, E. Da-silva-;-niedermeyer, and F. L. Da-silva, Electroencephalography: basic principles, clinical applications, and related fields, 2005.

[. Nijboer, An auditory brain-computer interface (bci), Journal of neuroscience methods, vol.167, issue.1, pp.43-50, 2008.

. Ninaus, Game elements improve performance in a working memory training task, International Journal of Serious Games, vol.2, issue.1, pp.3-16, 2015.

[. Nkambou, Advances in intelligent tutoring systems, vol.308, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00699845

W. S. Noble, How does multiple testing correction work?, Nature biotechnology, vol.27, issue.12, pp.1135-1137, 2009.

D. A. Norman, Some observations on mental models, Mental models, pp.15-22, 2014.

P. L. Nunez, The brain wave equation: a model for the eeg, Mathematical Biosciences, vol.21, issue.3-4, pp.279-297, 1974.

[. Orsborn, Closed-loop decoder adaptation shapes neural plasticity for skillful neuroprosthetic control, Neuron, vol.82, issue.6, pp.1380-1393, 2014.

, Pre-Competition Imagery and Music: The Impact on Flow and Performance in Competitive Soccer, pp.212-232, 2011.

[. Pates, Effects of asynchronous music on flow states and shooting performance among netball players, vol.4, pp.415-427, 2003.

. Perdikis, Context-aware adaptive spelling in motor imagery bci, Journal of neural engineering, vol.13, issue.3, p.36018, 2016.

[. Pfurtscheller, The hybrid bci, Frontiers in neuroscience, vol.4, p.3, 2010.

[. Pfurtscheller, Mu rhythm (de) synchronization and eeg single-trial classification of different motor imagery tasks, NeuroImage, vol.31, issue.1, pp.153-159, 2006.

[. Pfurtscheller, D. Silva-;-pfurtscheller, G. Da-silva, and F. L. , Eventrelated eeg/meg synchronization and desynchronization: basic principles, Clinical neurophysiology, vol.110, issue.11, pp.1842-1857, 1999.

G. Pfurtscheller and C. Neuper, Motor imagery and direct brain-computer communication, Proceedings of the IEEE, vol.89, pp.1123-1134, 2001.

[. Pillette, Peanut: Personalised emotional agent for neurotechnology user-training, 7th International BCI Conference, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01519480

A. M. Proverbio, Tool perception suppresses 10-12 hz µ rhythm of eeg over the somatosensory area, Biological psychology, vol.91, issue.1, pp.1-7, 2012.

[. Qu, A novel three-dimensional p300 speller based on stereo visual stimuli, IEEE Transactions on Human-Machine Systems, 2018.

. Ramos-murguialday, , 2012.

, Proprioceptive feedback and brain computer interface (bci) based neuroprostheses, PloS one, vol.7, issue.10, p.47048

[. Ramoser, Optimal spatial filtering of single trial EEG during imagined hand movement, IEEE Trans Rehabil Eng, vol.8, issue.4, pp.441-446, 2000.

A. B. Randolph, Not all created equal: individual-technology fit of brain-computer interfaces, 45th Hawaii International Conference on System Sciences, pp.572-578, 2012.

B. Rao, R. P. Rao, and D. H. Ballard, Predictive coding in the visual cortex: a functional interpretation of some extra-classical receptive-field effects, Nature neuroscience, vol.2, issue.1, p.79, 1999.

[. Regenberg, The groove move: Action affordances produce fluency and positive affect, Experimental psychology, vol.59, issue.1, p.30, 2012.

[. Rivet, xdawn algorithm to enhance evoked potentials: application to brain-computer interface, IEEE Transactions on Biomedical Engineering, vol.56, issue.8, pp.2035-2043, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00454568

[. Roc, Would motorimagery based bci user training benefit from more women experimenters?, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02128898

R. Ron-angevin, Brain-computer interface: Changes in performance using virtual reality techniques, vol.449, pp.123-127, 2009.

[. Roo, Inner Garden: Connecting Inner States to a Mixed Reality Sandbox for Mindfulness, CHI '17, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01455174

[. Rowe, Objects rapidly prime the motor system when located near the dominant hand, Brain and cognition, vol.113, pp.102-108, 2017.

[. Saeedi, Adaptive assistance, pp.32-39, 2016.

. Salvaris, M. Sepulveda-;-salvaris, and F. Sepulveda, Visual modifications on the p300 speller bci paradigm, Journal of neural engineering, vol.6, issue.4, p.46011, 2009.

[. Sannelli, Ensembles of adaptive spatial filters increase bci performance: an online evaluation, Journal of neural engineering, vol.13, issue.4, p.46003, 2016.

R. Santhanam and M. K. Sein, Improving end-user proficiency: Effects of conceptual training and nature of interaction, Information Systems Research, vol.5, issue.4, pp.378-399, 1994.

[. Satti, A covariate shift minimisation method to alleviate non-stationarity effects for an adaptive brain-computer interface, 20th International Conference on Pattern Recognition, pp.105-108, 2010.

. Schendan, Early brain potentials link repetition blindness, priming and novelty detection, Neuroreport, vol.8, issue.8, pp.1943-1948, 1997.

[. Scherer, Games for BCI Skill Learning, Handbook of Digital Games and Entertainment Technologies, pp.1-19, 2015.

, 19 evaluation criteria for bci research, 2007.

. Schlogl, Adaptive Methods in BCI Research -An Introductory Tutorial, 2010.

G. D. Schott-;-schott, Penfield's homunculus: a note on cerebral cartography, Journal of neurology, vol.56, issue.4, p.329, 1993.

[. Schuch, Attention modulates motor system activation during action observation: evidence for inhibitory rebound, Experimental Brain Research, vol.205, issue.2, pp.235-249, 2010.

[. Schumacher, Towards explanatory feedback for user training in brain-computer interfaces, 2015 IEEE International Conference on Systems, Man, and Cybernetics, pp.3169-3174, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01179329

M. K. Sein and R. P. Bostrom, Individual differences and conceptual models in training novice users, Human-computer interaction, vol.4, issue.3, pp.197-229, 1989.

[. Sein, Conceptual models in training novice users, Human-Computer Interaction-INTERACT'87, pp.861-867, 1987.

[. Sellers, A p300 event-related potential brain-computer interface (bci): the effects of matrix size and inter stimulus interval on performance, Biological psychology, vol.73, issue.3, pp.242-252, 2006.

[. Shenoy, Towards adaptive classification for BCI, Journal of neural engineering, vol.3, issue.1, pp.13-23, 2006.

S. D. Simpson and C. I. Karageorghis, The effects of synchronous music on 400-m sprint performance, Journal of Sports Sciences, vol.24, issue.10, pp.1095-1102, 2006.

[. Sitaram, Closed-loop brain training: the science of neurofeedback, Nature Reviews Neuroscience, vol.18, issue.2, p.86, 2017.

B. F. Skinner-;-skinner, The behavior of organisms: an experimental analysis, 1938.

[. Snyder, Virtual and live social facilitation while exergaming: competitiveness moderates exercise intensity, Journal of Sport and Exercise Psychology, vol.34, issue.2, pp.252-259, 2012.

. Soekadar, Brain-machine interfaces in neurorehabilitation of stroke, Neurobiology of disease, vol.83, pp.172-179, 2015.

[. Song, Adaptive common spatial pattern for single-trial eeg classification in multisubject bci, 6th International IEEE/EMBS Conference on Neural Engineering (NER), pp.411-414, 2013.

[. Spence, Behavior theory and conditioning, vol.35, 1956.

V. Straebel and W. Thoben, Alvin lucier's music for solo performer: experimental music beyond sonification, Organised Sound, vol.19, issue.1, pp.17-29, 2014.

[. Sudo, Postnatal microbial colonization programs the hypothalamicpituitary-adrenal system for stress response in mice, J. Physiol, 2004.

S. Sun and C. Zhang, Adaptive feature extraction for eeg signal classification, Medical and Biological Engineering and Computing, vol.44, issue.10, pp.931-935, 2006.

B. Sutton, R. S. Sutton, and A. G. Barto, Reinforcement learning: An introduction, 2018.

J. A. Suykens and J. Vandewalle, Least squares support vector machine classifiers. Neural processing letters, vol.9, pp.293-300, 1999.

[. Sweller, Cognitive Architecture and Instructional Design, Educational Psychology Review, vol.10, issue.3, pp.251-296, 1998.

[. Sykacek, Adaptive bci based on variational bayesian kalman filtering: an empirical evaluation, IEEE Transactions on biomedical engineering, vol.51, issue.5, pp.719-727, 2004.

. Symes, Visual object affordances: Object orientation, Acta psychologica, vol.124, issue.2, pp.238-255, 2007.

N. Tan, D. Tan, A. Nijholt, and . Tan, Effect of mindfulness meditation on brain computer interface performance, Brain-Computer Interfaces, vol.23, pp.12-21, 2010.

. Teillet, Towards a spatial ability training to improve mental imagery based brain-computer interface (mi-bci) performance: A pilot study, 2016 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.3664-003669, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01341042

[. Thaut, The connection between rhythmicity and brain function, IEEE Engineering in Medicine and Biology Magazine, vol.18, issue.2, pp.101-108, 1999.

[. Thaut, Distinct corticocerebellar activations in rhythmic auditory motor synchronization, Cortex, vol.45, issue.1, pp.44-53, 2009.

. Thomas, Coadapt p300 speller: optimized flashing sequences and online learning, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01103441

. Thomas, An analysis of performance evaluation for motor-imagery based bci, Journal of neural engineering, vol.10, issue.3, p.31001, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00821971

. Thomas, Combining erd and ers features to create a system-paced bci, Journal of neuroscience methods, vol.216, issue.2, pp.96-103, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00821973

[. Thompson, Personal computing: toward a conceptual model of utilization, MIS quarterly, pp.125-143, 1991.

E. L. Thorndike, The elements of psychology, 1905.

[. Tidoni, Audio-visual feedback improves the bci performance in the navigational control of a humanoid robot, Frontiers in neurorobotics, vol.8, p.20, 2014.
URL : https://hal.archives-ouvertes.fr/lirmm-01058974

[. Tomioka, Spectrally weighted common spatial pattern algorithm for single trial eeg classification, vol.40, 2006.

[. Ullén, Proneness for psychological flow in everyday life: Associations with personality and intelligence, Personality and Individual Differences, vol.52, issue.2, pp.167-172, 2012.

. Van-de-laar, Experiencing bci control in a popular computer game, IEEE Transactions on Computational Intelligence and AI in Games, vol.5, issue.2, pp.176-184, 2013.

. Van-de-laar, Experiencing bci control in a popular computer game, IEEE TCIAIG, vol.5, issue.2, pp.176-184, 2013.

. Van-erp, Braincomputer interfaces: Beyond medical applications, Computer, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00688344

D. Västfjäll, The subjective sense of presence, emotion recognition, and experienced emotions in auditory virtual environments, CyberPsychology & Behavior, vol.6, issue.2, pp.181-188, 2003.

[. Verhoeven, Towards a symbiotic brain-computer interface: exploring the application-decoder interaction, Journal of neural engineering, vol.12, issue.6, p.66027, 2015.

[. Verron, A 3-d immersive synthesizer for environmental sounds, IEEE Transactions on Audio, Speech, and Language Processing, vol.18, issue.6, pp.1550-1561, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00462544

[. Verschore, Dynamic stopping improves the speed and accuracy of a p300 speller, International Conference on Artificial Neural Networks, p.61, 2006.

J. J. Vidal-;-vidal, Toward direct brain-computer communication, Annual review of Biophysics and Bioengineering, vol.2, issue.1, pp.157-180, 1973.

[. Vidaurre, Toward unsupervised adaptation of lda for brain-computer interfaces, IEEE Transactions on Biomedical Engineering, vol.58, issue.3, pp.587-597, 2010.

[. Vidaurre, Co-adaptive calibration to improve bci efficiency, Journal of neural engineering, vol.8, issue.2, p.25009, 2011.

C. Vidaurre and A. Schlogl, Comparison of adaptive features with linear discriminant classifier for brain computer interfaces, 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, pp.173-176, 2008.

[. Vidaurre, Study of on-line adaptive discriminant analysis for eeg-based brain computer interfaces, IEEE Transactions on Biomedical Engineering, vol.54, issue.3, pp.550-556, 2007.

. Von-bartheld, The search for true numbers of neurons and glial cells in the human brain: A review of 150 years of cell counting, Journal of Comparative Neurology, vol.524, issue.18, pp.3865-3895, 2016.

. Vourvopoulos, Neurow: An immersive vr environment for motor-imagery training with the use of brain-computer interfaces and vibrotactile feedback, PhyCS, pp.43-53, 2016.

A. Vuckovic, Interaction of BCI with the underlying neurological conditions in patients: pros and cons, vol.7, pp.1-3, 2014.

A. Vujic, Gut Brain Computer Interfacing, International BCI Meeting '18 Master Class, 2018.

L. S. Vygotsky, Mind in Society: Development of Higher Psychological Processes, 1978.

[. Wamain, Eeg µ rhythm in virtual reality reveals that motor coding of visual objects in peripersonal space is task dependent, Cortex, vol.74, pp.20-30, 2016.
URL : https://hal.archives-ouvertes.fr/hal-02450493

N. R. Waytowich and D. J. Krusienski, Development of an extensible ssvep-bci software platform and application to wheelchair control, 2017 8th International IEEE/EMBS Conference on Neural Engineering (NER), pp.259-532, 2017.

[. Webster, The dimensionality and correlates of flow in human-computer interactions, Computers in Human Behavior, vol.9, issue.4, pp.411-426, 1993.

[. Witte, Control beliefs can predict the ability to up-regulate sensorimotor rhythm during neurofeedback training, Frontiers in human neuroscience, vol.7, p.8, 2013.

[. Woehrle, An adaptive spatial filter for user-independent single trial detection of event-related potentials, IEEE Transactions on Biomedical Engineering, vol.62, issue.7, pp.1696-1705, 2015.

. Woll, S. B. Woll, M. E. Mcfall, J. Wolpaw, and E. W. Wolpaw, The effects of false feedback on attributed arousal and rated attractiveness in female subjects 1, J. Pers, 1979.

[. Wolpaw, Independent home use of a brain-computer interface by people with amyotrophic lateral sclerosis, Neurology, vol.91, issue.3, pp.258-267, 2018.

[. Wolpaw, Brain-computer interfaces for communication and control. Clin. Neurophy, 2002.

[. Wolpaw, Brain-computer interfaces for communication and control, Clinical Neurophysiology, vol.113, pp.767-791, 2002.

. Wolpaw, J. R. Mcfarland-;-wolpaw, and D. J. Mcfarland, Multichannel EEG-based brain-computer communication, vol.90, pp.444-449, 1994.

[. Yin, Inhibitory effects of stress on postprandial gastric myoelectrical activity and vagal tone in healthy subjects, Neurogastroenterology & Motility, 2004.

[. Yuan, A study of the existing problems of estimating the information transfer rate in online brain-computer interfaces, Journal of neural engineering, vol.10, issue.2, p.26014, 2013.

K. Zander, T. O. Zander, and C. Kothe, Towards passive braincomputer interfaces: applying brain-computer interface technology to humanmachine systems in general, Journal of neural engineering, vol.8, issue.2, p.25005, 2011.

[. Zhao, Fv 10. motor imagery supported by neurofeedback: Age-related changes in eeg and fnirs lateralization patterns, IEEE International Joint Conference on Neural Networks (IEEE World Congress on Computational Intelligence), vol.127, p.215, 2008.

[. Zimmerman, Design and operation of stable rf-biased superconducting point-contact quantum devices, and a note on the properties of perfectly clean metal contacts, Journal of Applied Physics, vol.41, issue.4, pp.1572-1580, 1970.