J. F. Ackermann and M. S. Landy, Suboptimal decision criteria are predicted 754 by subjectively weighted probabilities and rewards. Attention, Perception, and Psy-755 chophysics, vol.77, pp.638-658, 2015.

W. T. Adler and W. J. Ma, Comparing Bayesian and non-Bayesian accounts of 757 human confidence reports, PLoS Computational Biology, vol.14, issue.11, p.1006572, 2018.

S. Baldassi, N. Megna, and D. C. Burr, Visual clutter causes high-magnitude 759 errors, PLoS Biology, vol.4, issue.3, p.56, 2006.

J. W. Bang, M. Shekhar, and D. Rahnev, Sensory noise increases meta-cognitive 761 e ciency, Journal of Experimental Psychology: General, vol.148, issue.3, pp.437-452, 2019.

M. J. Beran, J. L. Brandl, J. Perner, J. , and P. , , p.763, 2012.

D. H. Brainard, The psychophysics toolbox, Spatial Vision, vol.10, pp.433-436, 1997.

J. R. Busemeyer and I. J. Myung, An adaptive approach to human decision 766 making: Learning theory, decision theory, and human performance, Journal of Exper-767 imental Psychology: General, vol.121, issue.2, pp.177-194, 1992.

L. Charles, C. Chardin, and P. Haggard, Evidence for metacognitive bias in 769 perception of voluntary action, Cognition, vol.194, p.104041, 2020.

F. R. Clarke, T. G. Birdsall, and W. P. Tanner, Two types of ROC curves and 771 definitions of parameters, The Journal of the Acoustical Society of America, vol.31, issue.5, pp.629-772, 1959.

D. Dunning, D. W. Gri-n, J. D. Milojkovic, R. , and L. , The overconfidence 774 e?ect in social prediction, Journal of Personality and Social Psychology, vol.58, issue.4, pp.568-581, 1990.

S. M. Fleming and N. D. Daw, Self-evaluation of decision-making: A general 776, 2017.

, Bayesian framework for metacognitive computation, Psychological Review, vol.124, issue.1, pp.91-777

S. M. Fleming and R. J. Dolan, Neural basis of metacognition, Royal Society B Biological Sciences, vol.367, pp.1338-1349, 1594.

S. M. Fleming and H. C. Lau, How to measure metacognition, Frontiers in, p.781, 2014.

, Human Neuroscience, vol.8, p.443

S. J. Galvin, J. V. Podd, V. Drga, and J. Whitmore, Type 2 tasks in the 783 theory of signal detectability: Discrimination between correct and incorrect decisions, p.784, 2003.

, Psychonomic Bullentin & Review, vol.10, issue.4, pp.843-876

D. M. Green and J. A. Swets, Signal Detection Theory and Psychophysics, p.786, 1966.

A. F. Healy and M. Kubovy, The e?ects of payo?s and prior probabilities on in-788 dices of performance and cuto? location in recognition memory, Memory & Cognition, 789, vol.6, issue.5, pp.544-553, 1978.

A. F. Healy and M. Kubovy, Probability matching and the formation of conser-791 vative decision rules in a numerical analog of signal detection, Psychology: Human Learning and Memory, vol.792, issue.5, pp.344-354, 1981.

T. S. Horowitz, Prevalence in visual search: From the clinic to the lab and back 794 again, Japanese Psychological Research, vol.59, issue.2, pp.65-108, 2017.

M. Hu and D. Rahnev, Predictive cues reduce but do not eliminate intrinsic 796 response bias, Cognition, vol.192, p.104004, 2019.

R. Kiani and M. N. Shadlen, Representation of confidence associated with a 798 decision by neurons in the parietal cortex, Science, vol.324, issue.5928, pp.759-764, 2009.

M. Kleiner, D. Brainard, D. Pelli, A. Ingling, R. Murray et al., , p.800, 2007.

, What's new in psychtoolbox-3? Perception, vol.36, pp.1-16

M. Kubovy, A possible basis for conservatism in signal detection and probabilistic 802 categorization tasks, Perception & Psychophysics, vol.22, issue.3, pp.277-281, 1977.

M. Lebreton, S. Langdon, M. J. Slieker, J. S. Nooitgedacht, A. E. Goudriaan et al., , p.804

D. Van-holst, R. J. Luigjes, and J. , Two sides of the same coin: Monetary 805 incentives concurrently improve and bias confidence judgments, Science Advances, vol.806, issue.5, p.668, 2018.

W. Lee and T. R. Zentall, Factorial e?ects in the categorization of externally 808 distributed stimulus samples, Perception & Psychophysics, vol.1, issue.2, pp.120-124, 1966.

N. A. Macmillan and C. D. Creelman, Detection Theory: A User's Guide, p.810, 2005.

W. T. Maddox, Toward a unified theory of decision criterion learning in perceptual 812 categorization, Journal of the Experimental Analysis of Behavior, vol.78, issue.3, pp.567-595, 2002.

W. T. Maddox and C. J. Bohil, Base-rate and payo? e?ects in multidimensional 814 perceptual categorization, Journal of Experimental Psychology: Learning, Memory, 815 and Cognition, vol.24, issue.6, pp.1459-1482, 1998.

W. T. Maddox and C. J. Bohil, Costs and benefits in perceptual categorization, p.817, 2000.

, Memory & Cognition, vol.28, issue.4, pp.597-615

W. T. Maddox and C. J. Bohil, A theoretical framework for understanding 819 the e?ects of simultaneous base-rate and payo? manipulations on decision criterion 820 learning in perceptual categorization, Journal of Experimental Psychology, p.821, 2003.

, Memory, and Cognition, vol.29, issue.2, pp.307-320

W. T. Maddox and J. L. Dodd, On the relation between base-rate and cost-823 benefit learning in simulated medical diagnosis, Journal of Experimental Psychology, p.824, 2001.

M. Learning and C. , , vol.27, pp.1367-1384

P. Mamassian, Overconfidence in an objective anticipatory motor task. Psycho-826 logical Science, vol.19, pp.601-606, 2008.

P. Mamassian, Visual confidence. Annual Review of Vision Science, vol.2, pp.459-481, 2016.
URL : https://hal.archives-ouvertes.fr/hal-02383550

M. Manis, I. Dovalina, N. E. Avis, C. , and S. , Base rates can a?ect 829 individual predictions, Journal of Personality and Social Psychology, vol.38, issue.2, pp.231-248, 1980.

B. Maniscalco and H. Lau, The signal processing architecture underlying sub-831 jective reports of sensory awareness, vol.2016, pp.1-17, 2016.

B. Maniscalco and H. C. Lau, A signal detection theoretic approach for estimat-833 ing metacognitive sensitivity from confidence ratings, Consciousness and Cognition, vol.834, pp.422-430, 2012.

B. Maniscalco and H. C. Lau, Signal detection theory analysis of type 1 and type 836 2 data: meta-d 0 , response-specific meta-d 0 , and the unequal variance SDT model, p.837, 2014.

S. M. Fleming and C. D. Frith, The Cognitive Neuroscience of Metacognition, vol.838, pp.25-66

J. Metcalfe and A. P. Shimamura, Metacogntion: Knowing about Know-840 ing, 1994.

E. H. Norton, S. M. Fleming, N. D. Daw, and M. S. Landy, Suboptimal Cri-842 terion Learning in Static and Dynamic Environments, PLOS Computational Biology, vol.843, issue.1, p.1005304, 2017.

D. G. Pelli, The VideoToolbox software for visual psychophysics: Transforming 845 numbers into movies, Spatial Vision, vol.10, issue.4, pp.437-442, 1997.

N. Persaud, P. Mcleod, and A. Cowey, Post-decision wagering objectively 847 measures awareness, Nature Neuroscience, vol.10, issue.2, pp.257-261, 2007.

M. A. Peters, T. Thesen, Y. D. Ko, B. Maniscalco, C. Carlson et al., , p.849

W. Kuzniecky, R. Devinsky, O. Halgren, E. Lau, and H. , , 2017.

, dence neglects decision-incongruent evidence in the brain, Nature Human Behaviour, vol.851, issue.7, p.139

A. Pouget, J. Drugowitsch, and A. Kepecs, Confidence and certainty: distinct 853 probabilistic quantities for di?erent goals, Nature Neuroscience, vol.19, issue.3, pp.366-374, 2016.

D. Rahnev, D. E. Nee, J. Riddle, A. S. Larson, and M. Esposito, Causal 855 evidence for frontal cortex organization for perceptual decision making, Proceedings of, p.856, 2016.

A. Resulaj, R. Kiani, D. M. Wolpert, and M. N. Shadlen, Changes of mind in 858 decision-making, Nature, vol.461, pp.263-266, 2009.

L. Rigoux, K. E. Stephan, K. J. Friston, and J. Daunizeau, Bayesian model 860 selection for group studies-Revisited, NeuroImage, vol.84, pp.971-985, 2014.

M. Shekhar and D. Rahnev, Distinguishing the Roles of Dorsolateral and Anterior 862 PFC in Visual Metacognition, The Journal of Neuroscience, vol.38, issue.22, pp.5078-5087, 2018.

M. T. Sherman, A. K. Seth, A. B. Barrett, and R. Kanai, Prior expectations 864 facilitate metacognition for perceptual decision, Consciousness and Cognition, vol.35, pp.53-865, 2015.

W. E. Shields, D. E. Smith, K. Guttmannova, and D. A. Washburn, Confidence 867 Judgments by Humans and Rhesus Monkeys, The Journal of General Psychology, vol.868, issue.2, pp.165-186, 2005.

A. P. Shimamura, Toward a cognitive neuroscience of metacognition, Conscious-870 ness and Cognition, vol.9, pp.313-323, 2000.

J. D. Smith, W. E. Shields, and D. A. Washburn, The comparative psychology of 872 uncertainty monitoring and metacognition, Behavioral and Brain Sciences, vol.26, issue.3, pp.317-873, 2003.

K. E. Stephan, W. D. Penny, J. Daunizeau, R. J. Moran, and K. J. Friston, , p.875, 2009.

, Bayesian model selection for group studies, NeuroImage, vol.46, issue.4, pp.1004-1017

M. K. Stevenson, J. R. Busemeyer, and J. C. Naylor, Judgement and decision-877 making theory, Handbook of Industrial 878 and Organizational Psychology, pp.283-374, 1990.

Z. J. Ulehla, Optimality of perceptual decision criteria, Journal of Experimental 881 Psychology, vol.71, issue.4, pp.564-569, 1966.

J. M. Wolfe, T. S. Horowitz, and N. M. Kenner, Rare items often missed in 883 visual searches, Nature, vol.435, pp.439-440, 2005.

A. J. Yu and J. D. Cohen, Sequential e?ects: Superstition or rational behavior, p.885, 2009.

, Advances in Neural Information Processing Systems 17 (NIPS 2008), pp.1873-886

A. Zylberberg, P. R. Roelfsema, and M. Sigman, Variance misperception ex-888 plains illusions of confidence in simple perceptual decisions, Consciousness and Cogni-889 tion, vol.27, pp.246-253, 2014.

A. Zylberberg, D. M. Wolpert, and M. N. Shadlen, Counterfactual reasoning 891 underlies the learning of priors in decision making, Neuron, vol.99, issue.5, pp.1083-1097, 2018.

, Across participants, we saw a variability in Type 1 sensitivity of? Type1 = 0, vol.37

B. Carpenter, A. Gelman, M. D. Ho?man, D. Lee, B. Goodrich et al., Stan: A probabilistic programming language, Journal of Statistical Software, vol.76, issue.1, pp.1-32, 2017.

S. M. Fleming and H. C. Lau, How to measure metacognition, Frontiers in Human Neuroscience, vol.8, p.443, 2014.

M. Hu and D. Rahnev, Predictive cues reduce but do not eliminate intrinsic response bias, Cognition, vol.192, p.104004, 2019.

W. T. Maddox and C. J. Bohil, Base-rate and payo? e?ects in multidimensional perceptual categorization, Journal of Experimental Psychology: Learning, Memory, and Cognition, vol.24, issue.6, pp.1459-1482, 1998.

B. Maniscalco and H. Lau, The signal processing architecture underlying subjective reports of sensory awareness, vol.2016, pp.1-17, 2016.

B. Maniscalco and H. C. Lau, A signal detection theoretic approach for estimating metacognitive sensitivity from confidence ratings, Consciousness and Cognition, vol.21, pp.422-430, 2012.

L. Rigoux, K. E. Stephan, K. J. Friston, and J. Daunizeau, Bayesian model selection for group studies-Revisited, NeuroImage, vol.84, pp.971-985, 2014.