K. C. Squires, C. Wickens, N. K. Squires, and E. Donchin, The effect of stimulus sequence on the waveform of the cortical event-related potential, Science, vol.193, p.959831, 1976.

S. A. Huettel, P. B. Mack, and G. Mccarthy, Perceiving patterns in random series: dynamic processing of sequence in prefrontal cortex, Nat Neurosci, vol.5, pp.485-490, 2002.

A. Bendixen, U. Roeber, and E. Schröger, Regularity Extraction and Application in Dynamic Auditory Stimulus Sequences, J Cogn Neurosci, vol.19, pp.1664-1677, 2007.

R. B. Mars, S. Debener, T. E. Gladwin, L. M. Harrison, P. Haggard et al., Trial-by-Trial Fluctuations in the Event-Related Electroencephalogram Reflect Dynamic Changes in the Degree of Surprise, J Neurosci, vol.28, p.19020046, 2008.

T. A. Bekinschtein, S. Dehaene, B. Rohaut, F. Tadel, L. Cohen et al., Neural signature of the conscious processing of auditory regularities, Proc Natl Acad Sci, vol.106, p.19164526, 2009.
URL : https://hal.archives-ouvertes.fr/hal-01865884

M. Kimura, E. Schröger, I. Czigler, and H. Ohira, Human visual system automatically encodes sequential regularities of discrete events, J Cogn Neurosci, vol.22, p.19583466, 2010.
DOI : 10.1162/jocn.2009.21299

C. Wacongne, J. Changeux, and S. Dehaene, A Neuronal Model of Predictive Coding Accounting for the Mismatch Negativity, J Neurosci, vol.32, pp.3665-3678, 2012.
URL : https://hal.archives-ouvertes.fr/cea-00842907

A. Yaron, I. Hershenhoren, and I. Nelken, Sensitivity to Complex Statistical Regularities in Rat Auditory Cortex, Neuron, vol.76, p.23141071, 2012.
DOI : 10.1016/j.neuron.2012.08.025

URL : https://doi.org/10.1016/j.neuron.2012.08.025

A. Kolossa, T. Fingscheidt, K. Wessel, and B. Kopp, A Model-Based Approach to Trial-By-Trial P300 Amplitude Fluctuations, Front Hum Neurosci, vol.6, 2013.
DOI : 10.3389/fnhum.2012.00359

URL : https://www.frontiersin.org/articles/10.3389/fnhum.2012.00359/pdf

F. Lieder, J. Daunizeau, M. I. Garrido, K. J. Friston, and K. E. Stephan, Modelling Trial-by-Trial Changes in the Mismatch, PLoS Comput Biol, vol.9, p.23436989, 2013.
DOI : 10.1371/journal.pcbi.1002911

URL : https://journals.plos.org/ploscompbiol/article/file?id=10.1371/journal.pcbi.1002911&type=printable

M. Strauss, J. D. Sitt, J. King, M. Elbaz, L. Azizi et al., Disruption of hierarchical predictive coding during sleep, Proc Natl Acad Sci U S A, vol.112, p.25737555, 2015.
DOI : 10.1073/pnas.1501026112

URL : http://www.pnas.org/content/112/11/E1353.full.pdf

R. Hyman, Stimulus information as a determinant of reaction time, J Exp Psychol, vol.45, p.13052851, 1953.

P. Bertelson, Sequential redundancy and speed in a serial two-choice responding task, Q J Exp Psychol, vol.13, pp.90-102, 1961.
DOI : 10.1080/17470216108416478

S. G. Tune, Response preferences: A review of some relevant literature, Psychol Bull, vol.61, p.14140335, 1964.

H. Rouanet, Les modèles stochastiques d'apprentissage, Recherches et perspectives, 1967.
DOI : 10.1515/9783111540979

URL : http://www.numdam.org/article/MSH_1964__5__3_0.pdf

R. W. Schvaneveldt and W. G. Chase, Sequential effects in choice reaction time, J Exp Psychol, vol.80, pp.1-8, 1969.
DOI : 10.1037/h0027144

N. H. Kirby, Sequential effects in two-choice reaction time: automatic facilitation or subjective expectancy?, J Exp Psychol Hum Percept Perform, vol.2, p.1011006, 1976.
DOI : 10.1037//0096-1523.2.4.567

E. Soetens, C. , and E. , Expectancy or automatic facilitation? Separating sequential effects in two-choice reaction time, J Exp Psychol Hum Percept Perform, vol.11, pp.598-616, 1985.
DOI : 10.1037/0096-1523.11.5.598

W. Sommer, H. Leuthold, and E. Soetens, Covert signs of expectancy in serial reaction time tasks revealed by event-related potentials, Percept Psychophys, vol.61, p.10089765, 1999.

R. Y. Cho, L. E. Nystrom, E. T. Brown, A. D. Jones, T. S. Braver et al., Mechanisms underlying dependencies of performance on stimulus history in a two-alternative forced-choice task, Cogn Affect Behav Neurosci, vol.2, p.12641174, 2002.

O. V. Lungu, T. Wächter, T. Liu, D. T. Willingham, and J. Ashe, Probability detection mechanisms and motor learning, Exp Brain Res, vol.159, pp.135-150, 2004.
DOI : 10.1007/s00221-004-1945-7

P. Perruchet, A. Cleeremans, and A. Destrebecqz, Dissociating the effects of automatic activation and explicit expectancy on reaction times in a simple associative learning task, J Exp Psychol Learn Mem Cogn, vol.32, pp.955-965, 2006.

A. J. Yu and J. D. Cohen, Sequential effects: Superstition or rational behavior?, Adv Neural Inf Process Syst, vol.21, p.26412953, 2008.

Y. Kareev, Positive bias in the perception of covariation, Psychol Rev, vol.102, pp.490-502, 1995.

R. Falk and C. Konold, Making sense of randomness: Implicit encoding as a basis for judgment, Psychol Rev, vol.104, p.301, 1997.

U. Hahn and P. A. Warren, Perceptions of randomness: Why three heads are better than four, Psychol Rev, vol.116, pp.454-461, 2009.
DOI : 10.1037/a0015241

Y. Sun and H. Wang, Perception of randomness: On the time of streaks, Cognit Psychol, vol.61, pp.333-342, 2010.

T. W. Fawcett, B. Fallenstein, A. D. Higginson, A. I. Houston, D. Mallpress et al., The evolution of decision rules in complex environments, Trends Cogn Sci, vol.18, p.24467913, 2014.

Y. Sun, R. C. O'reilly, R. Bhattacharyya, J. W. Smith, X. Liu et al., Latent structure in random sequences drives neural learning toward a rational bias, Proc Natl Acad Sci, vol.112, p.25775565, 2015.
DOI : 10.1073/pnas.1422036112

URL : http://www.pnas.org/content/112/12/3788.full.pdf

S. Deneve, P. E. Latham, and A. Pouget, Reading population codes: a neural implementation of ideal observers, Nat Neurosci, vol.2, pp.740-745, 1999.
DOI : 10.1038/11205

R. P. Rao, An optimal estimation approach to visual perception and learning, Vision Res, vol.39, p.10343783, 1999.
DOI : 10.1016/s0042-6989(98)00279-x

URL : https://doi.org/10.1016/s0042-6989(98)00279-x

M. O. Ernst and M. S. Banks, Humans integrate visual and haptic information in a statistically optimal fashion, Nature, vol.415, pp.429-433, 2002.
DOI : 10.1038/415429a

J. M. Beck, W. J. Ma, R. Kiani, T. Hanks, A. K. Churchland et al., Probabilistic Population Codes for Bayesian Decision Making, Neuron, vol.60, pp.1142-1152, 2008.
DOI : 10.1016/j.neuron.2008.09.021

URL : https://doi.org/10.1016/j.neuron.2008.09.021

L. T. Maloney and H. Zhang, Decision-theoretic models of visual perception and action, Vision Res, vol.50, p.20932856, 2010.
DOI : 10.1016/j.visres.2010.09.031

URL : https://doi.org/10.1016/j.visres.2010.09.031

P. Berkes, G. Orbán, M. Lengyel, and J. Fiser, Spontaneous cortical activity reveals hallmarks of an optimal internal model of the environment, Science, vol.331, p.21212356, 2011.

A. R. Girshick, M. S. Landy, and E. P. Simoncelli, Cardinal rules: visual orientation perception reflects knowledge of environmental statistics, Nat Neurosci, vol.14, p.21642976, 2011.
DOI : 10.1038/nn.2831

URL : http://europepmc.org/articles/pmc3125404?pdf=render

A. O. Diaconescu, C. Mathys, L. Weber, J. Daunizeau, L. Kasper et al., Inferring on the intentions of others by hierarchical Bayesian learning, PLoS Comput Biol, vol.10, p.25187943, 2014.

P. O. Hoyer and A. Hyvärinen, Interpreting Neural Response Variability as Monte Carlo Sampling of the Posterior, Advances in Neural Information Processing Systems, 2002.

T. S. Lee and D. Mumford, Hierarchical Bayesian inference in the visual cortex, J Opt Soc Am A Opt Image Sci Vis, vol.20, p.12868647, 2003.
DOI : 10.1364/josaa.20.001434

URL : https://dash.harvard.edu/bitstream/1/3637109/1/Mumford_HierarchBayesInfer.pdf

D. C. Knill and A. Pouget, The Bayesian brain: the role of uncertainty in neural coding and computation, Trends Neurosci, vol.27, pp.712-719, 2004.

W. J. Ma, J. M. Beck, P. E. Latham, and A. Pouget, Bayesian inference with probabilistic population codes, Nat Neurosci, vol.9, p.17057707, 2006.
DOI : 10.1038/nn1790

J. Fiser, P. Berkes, G. Orbán, and M. Lengyel, Statistically optimal perception and learning: from behavior to neural representations, Trends Cogn Sci, vol.14, 2010.
DOI : 10.1016/j.tics.2010.01.003

URL : http://europepmc.org/articles/pmc2939867?pdf=render

W. J. Ma and M. Jazayeri, Neural coding of uncertainty and probability, Annu Rev Neurosci, vol.37, pp.205-220, 2014.
DOI : 10.1146/annurev-neuro-071013-014017

E. T. Jaynes, Probability Theory: The Logic of Science, 2003.

K. Friston, Learning and inference in the brain, Neural Netw Off J Int Neural Netw Soc, vol.16, pp.1325-1352, 2003.

K. Friston, The free-energy principle: a unified brain theory?, Nat Rev Neurosci, vol.11, pp.127-138, 2010.

S. Dehaene, F. Meyniel, C. Wacongne, L. Wang, and C. Pallier, The Neural Representation of Sequences: From Transition Probabilities to Algebraic Patterns and Linguistic Trees, Neuron, vol.88, pp.2-19, 2015.

M. Wilder, M. Jones, and M. C. Mozer, Sequential effects reflect parallel learning of multiple environmental regularities, Advances in Neural Information Processing Systems, vol.22, pp.2053-2061, 2009.

C. E. Shannon, A mathematical theory of communication, Bell Syst Tech J, vol.27, pp.379-423, 1948.

A. Gelman, J. B. Carlin, H. S. Stern, D. B. Dunson, A. Vehtari et al., Bayesian Data Analysis, Third Edition, 2013.

R. P. Rao and T. J. Sejnowski, Predictive coding, cortical feedback, and spike-timing dependent plasticity. Statistical Theories of the Brain, 2000.

K. Friston, A theory of cortical responses, Philos Trans R Soc Lond B Biol Sci, vol.360, pp.815-836, 2005.

D. M. Wolpert and Z. Ghahramani, Computational principles of movement neuroscience, Nat Neurosci, vol.3, pp.1212-1217, 2000.

E. Todorov, Optimality principles in sensorimotor control, Nat Neurosci, vol.7, pp.907-915, 2004.

R. S. Sutton and A. G. Barto, Introduction to Reinforcement Learning, 1998.

T. Behrens, M. W. Woolrich, M. E. Walton, and M. Rushworth, Learning the value of information in an uncertain world, Nat Neurosci, vol.10, pp.1214-1221, 2007.

M. R. Nassar, K. M. Rumsey, R. C. Wilson, K. Parikh, B. Heasly et al., Rational regulation of learning dynamics by pupil-linked arousal systems, Nat Neurosci, vol.15, p.22660479, 2012.

O. Ossmy, R. Moran, T. Pfeffer, K. Tsetsos, M. Usher et al., The Timescale of Perceptual Evidence Integration Can Be Adapted to the Environment, Curr Biol, vol.23, pp.981-986, 2013.

J. T. Mcguire, M. R. Nassar, J. I. Gold, and J. W. Kable, Functionally Dissociable Influences on Learning Rate in a Dynamic Environment, Neuron, vol.84, pp.870-881, 2014.

F. Meyniel, D. Schlunegger, and S. Dehaene, The Sense of Confidence during Probabilistic Learning: A Normative Account, PLoS Comput Biol, vol.11, 2015.
URL : https://hal.archives-ouvertes.fr/inserm-02141610

X. Wang, Probabilistic Decision Making by Slow Reverberation in Cortical Circuits, Neuron, vol.36, p.12467598, 2002.

C. J. Honey, T. Thesen, T. H. Donner, L. J. Silbert, C. E. Carlson et al., Slow Cortical Dynamics and the Accumulation of Information over Long Timescales, Neuron, vol.76, p.23083743, 2012.

C. R. Gallistel, M. Krishan, Y. Liu, R. Miller, and P. E. Latham, The perception of probability, Psychol Rev, vol.121, pp.96-123, 2014.

C. Kemp and J. B. Tenenbaum, The discovery of structural form, Proc Natl Acad Sci U S A, vol.105, pp.10687-10692, 2008.

J. R. Saffran, R. N. Aslin, and E. L. Newport, Statistical learning by 8-month-old infants, Science, vol.274, p.8943209, 1996.

T. Meyer, S. Ramachandran, and C. R. Olson, Statistical Learning of Serial Visual Transitions by Neurons in Monkey Inferotemporal Cortex, J Neurosci, vol.34, p.25009266, 2014.

S. Ramachandran, T. Meyer, and C. R. Olson, Prediction suppression in monkey inferotemporal cortex depends on the conditional probability between images, J Neurophysiol, vol.115, pp.355-362, 2016.

C. Summerfield, E. H. Trittschuh, J. M. Monti, M. Mesulam, and T. Egner, Neural repetition suppression reflects fulfilled perceptual expectations, Nat Neurosci, vol.11, pp.1004-1006, 2008.

A. Todorovic, F. Van-ede, M. E. De-lange, and F. P. , Prior Expectation Mediates Neural Adaptation to Repeated Sounds in the Auditory Cortex: An MEG Study, J Neurosci, vol.31, p.21697363, 2011.

A. M. Bornstein and N. D. Daw, Cortical and Hippocampal Correlates of Deliberation during Model-Based Decisions for Rewards in Humans, PLoS Comput Biol, vol.9, 2013.

M. Rose, H. Haider, and C. Büchel, Unconscious detection of implicit expectancies, J Cogn Neurosci, vol.17, pp.918-927, 2005.

T. L. Van-zuijen, V. L. Simoens, P. Paavilainen, R. Näätänen, and M. Tervaniemi, Implicit, Intuitive, and Explicit Knowledge of Abstract Regularities in a Sound Sequence: An Event-related Brain Potential Study, J Cogn Neurosci, vol.18, pp.1292-1303, 2006.

A. Atas, N. Faivre, B. Timmermans, A. Cleeremans, and S. Kouider, Nonconscious Learning From Crowded Sequences, Psychol Sci, vol.25, pp.113-119, 2014.

G. Schwarz, Estimating the Dimension of a Model, Ann Stat, vol.6, pp.461-464, 1978.