Alink, A., C.M. Schwiedrzik, A. Kohler, W. Singer, and L. Muckli. 2010. Stimulus predictability reduces responses in primary visual cortex. Journal of Neuroscience 30: 2960–2966.
Averbeck, B.B., P.E. Latham, and A. Pouget. 2006. Neural correlations, population coding and computation. Nature Reviews Neuroscience 7: 358–366.
Bar-Hillel, Y., and Carnap, R. 1964. An outline of a theory of semantic information. Language and information pp. 221–74. Addison-Wesley: Reading, MA.
Barlow, H.B. 1969. Pattern recognition and the responses of sensory neurons. Annals of the New York Academy of Sciences 156: 872–881.
Carhart-Harris, R., R. Leech, P. Hellyer, M. Shanahan, A. Feilding, E. Tagliazucchi, D. Chialvo, et al. 2014. The entropic brain: A theory of conscious states informed by neuroimaging research with psychedelic drugs. Frontiers in Human Neuroscience 8: 1–22.
Chang, D., D. Song, J. Zhang, Y. Shang, Q. Ge, and Z. Wang. 2018. Caffeine caused a widespread increase in brain entropy. Scientific Reports 8: 2700.
Clark, A. 2013. Whatever next? Predictive brains, situated agents, and the future of cognitive science. Behavioral and Brain Sciences 36: 181–253.
Colombo, M., and P. Seriès. 2012. Bayes on the brain—on Bayesian modelling in neuroscience. The British Journal for the Philosophy of Science 63: 697–723.
Colombo, M., and Wright, C. 2018. First principles in the life sciences: The free-energy principle, organicism, and mechanism, Synthese. https://doi.org/10.1007/s11229-018-01932-w.
de Finetti, B. 1990. Theory of probability. Vol. 1. New York: Wiley.
Deneve, S. 2008. Bayesian spiking neurons I: Inference. Neural Computation 20: 91–117.
Dretske, F. 1981. Knowledge and the flow of information. Cambridge: MIT Press.
Dretske, F. 1983. Précis of Knowledge and the flow of information. Behavioral and Brain Sciences 6: 55–90.
Dretske, F. 1988. Explaining behavior. Cambridge: MIT Press.
Dretske, F. 1995. Naturalizing the mind. Cambridge: MIT Press.
Egan, F. 2010. Computational models: A modest role for content. Studies in History and Philosophy of Science 41: 253–259.
Egner, T., J.M. Monti, and C. Summerfield. 2010. Expectation and surprise determine neural population responses in the ventral visual system. Journal of Neuroscience 30: 16601–16608.
Eliasmith, C. 2005a. A new perspective on representational problems. Journal of Cognitive Science 6: 97–123.
Eliasmith, C. 2005b. Neurosemantics and categories. In Handbook of categorization in cognitive science, ed. H. Cohen and C. Lefebvre, 1035–1055. Amsterdam: Elsevier.
Feldman, J. 2000. Minimization of Boolean complexity in human concept learning. Nature 407: 630–633.
Feldman, J. 2012. Symbolic representation of probabilistic worlds. Cognition 123: 61–83.
Fiser, J., P. Berkes, G. Orbán, and M. Lengyel. 2010. Statistically optimal perception and learning: From behavior to neural representations. Trends in Cognitive Sciences 14: 119–130.
Floridi, L. 2011. The philosophy of information. Oxford: Oxford University Press.
Friston, K. 2009. The free-energy principle: A rough guide to the brain? Trends in Cognitive Sciences 13: 293–301.
Friston, K. 2010. The free-energy principle: A unified brain theory? Nature Reviews Neuroscience 11: 127–138.
Friston, K. 2013. Life as we know it. Journal of the Royal Society Interface 10: 20130475.
Friston, K., and K.E. Stephan. 2007. Free-energy and the brain. Synthese 159: 417–458.
Gallistel, C.R., and J.T. Wilkes. 2016. Minimum description length model selection in associative learning. Current Opinion in Behavioral Sciences 11: 8–13.
Grice, P. 1957. Meaning. Philosophical Review 66: 377–388.
Griffiths, T.L., N. Chater, C. Kemp, A. Perfors, and J.B. Tenenbaum. 2010. Probabilistic models of cognition: Exploring representations and inductive biases. Trends in Cognitive Sciences 14: 357–364.
Griffiths, T.L., E. Vul, and A.N. Sanborn. 2012. Bridging levels of analysis for probabilistic models of cognition. Current Directions in Psychological Science 21: 263–268.
Gross, C.G. 2007. Single neuron studies of inferior temporal cortex. Neuropsychologia 46: 841–852.
Isaac, A.M.C. 2019. The semantics latent in Shannon information. The British Journal for the Philosophy of Science 70: 103–125.
Kanwisher, N., J. McDermott, and M.M. Chun. 1997. The fusiform face area: A module in human extrastriate cortex specialized for face perception. Journal of Neuroscience 17: 4302–4311.
Kemp, C. 2012. Exploring the conceptual universe. Psychological Review 119: 685–722.
Knill, D.C., and A. Pouget. 2004. The Bayesian brain: The role of uncertainty in neural coding and computation. Trends in Neurosciences 27: 712–719.
Logothetis, N.K., and D.L. Sheinberg. 1996. Visual object recognition. Annual Review of Neuroscience 19: 577–621.
Ma, W.J. 2012. Organizing probabilistic models of perception. Trends in Cognitive Sciences 16: 511–518.
Ma, W.J., J.M. Beck, P.E. Latham, and A. Pouget. 2006. Bayesian inference with probabilistic population codes. Nature Neuroscience 9: 1432–1438.
MacKay, D.J.C. 2003. Information theory, inference, and learning algorithms. Cambridge: Cambridge University Press.
Marr, D. 1982. Vision. San Francisco: W. H. Freeman.
Millikan, R.G. 1984. Language, thought and other biological categories. Cambridge: MIT Press.
Millikan, R.G. 2000. On clear and confused ideas. Cambridge: Cambridge University Press.
Millikan, R.G. 2001. What has natural information to do with intentional representation? In Naturalism, evolution and mind, ed. D. Walsh, 105–125. Cambridge: Cambridge University Press.
Millikan, R.G. 2004. The varieties of meaning. Cambridge: MIT Press.
Papineau, D. 1987. Reality and representation. Oxford: Blackwell.
Piantadosi, S.T., J.B. Tenenbaum, and N.D. Goodman. 2016. The logical primitives of thought: Empirical foundations for compositional cognitive models. Psychological Review 123: 392–424.
Pouget, A., J.M. Beck, W.J. Ma, and P.E. Latham. 2013. Probabilistic brains: Knows and unknowns. Nature Neuroscience 16: 1170–1178.
Rahnev, D. 2017. The case against full probability distributions in perceptual decision making. bioRxiv. https://doi.org/10.1101/108944.
Ramsey, F.P. 1990. Philosophical papers, ed. D.H. Mellor. Cambridge: Cambridge University Press.
Ramsey, W.M. 2016. Untangling two questions about mental representation. New Ideas in Psychology 40: 3–12.
Rieke, F., D. Warland, R.R. van Steveninck, and W. Bialek. 1999. Spikes. Cambridge: MIT Press.
Saxe, G.N., D. Calderone, and L.J. Morale. 2018. Brain entropy and human intelligence: A resting-state fMRI study. PLoS One 13: e0191582.
Scarantino, A., and G. Piccinini. 2010. Information without truth. Metaphilosophy 41: 313–330.
Shea, N. 2007. Consumers need information: Supplementing teleosemantics with an input condition. Philosophy and Phenomenological Research 75: 404–435.
Shea, N. 2014a. Exploitable isomorphism and structural representation. Proceedings of the Aristotelian Society 114: 123–144.
Shea, N. 2014b. Neural signaling of probabilistic vectors. Philosophy of Science 81: 902–913.
Shea, N. 2018. Representation in cognitive science. Oxford: Oxford University Press.
Skyrms, B. 2010. Signals. Oxford: Oxford University Press.
Sprevak, M. 2013. Fictionalism about neural representations. The Monist 96: 539–560.
Stegmann, U.E. 2015. Prospects for probabilistic theories of natural information. Erkenntnis 80: 869–893.
Tenenbaum, J.B., C. Kemp, T.L. Griffiths, and N.D. Goodman. 2011. How to grow a mind: Statistics, structure, and abstraction. Science 331: 1279–1285.
Timpson, C.G. 2013. Quantum information theory and the foundations of quantum mechanics. Oxford: Oxford University Press.
Usher, M. 2001. A statistical referential theory of content: Using information theory to account for misrepresentation. Mind & Language 16: 311–334.
Wiener, N. 1961. Cybernetics. 2nd ed. New York: Wiley.