Bayesian inference with probabilistic population codes (original) (raw)
References
Knill, D.C. & Richards, W. Perception as Bayesian Inference (Cambridge Univ. Press, New York, 1996). Book Google Scholar
van Beers, R.J., Sittig, A.C. & Gon, J.J. Integration of proprioceptive and visual position-information: an experimentally supported model. J. Neurophysiol.81, 1355–1364 (1999). ArticleCAS Google Scholar
Ernst, M.O. & Banks, M.S. Humans integrate visual and haptic information in a statistically optimal fashion. Nature415, 429–433 (2002). ArticleCAS Google Scholar
Kording, K.P. & Wolpert, D.M. Bayesian integration in sensorimotor learning. Nature427, 244–247 (2004). Article Google Scholar
Stocker, A.A. & Simoncelli, E.P. Noise characteristics and prior expectations in human visual speed perception. Nat. Neurosci.9, 578–585 (2006). ArticleCAS Google Scholar
Tolhurst, D., Movshon, J. & Dean, A. The statistical reliability of signals in single neurons in cat and monkey visual cortex. Vision Res.23, 775–785 (1982). Article Google Scholar
Stevens, C.F. Neurotransmitter release at central synapses. Neuron40, 381–388 (2003). ArticleCAS Google Scholar
Foldiak, P. in Computation and Neural Systems (eds. Eeckman, F. & Bower, J.) 55–60 (Kluwer Academic Publishers, Norwell, Massachusetts, 1993). Book Google Scholar
Sanger, T. Probability density estimation for the interpretation of neural population codes. J. Neurophysiol.76, 2790–2793 (1996). ArticleCAS Google Scholar
Salinas, E. & Abbot, L. Vector reconstruction from firing rate. J. Comput. Neurosci.1, 89–107 (1994). ArticleCAS Google Scholar
Zemel, R., Dayan, P. & Pouget, A. Probabilistic interpretation of population code. Neural Comput.10, 403–430 (1998). ArticleCAS Google Scholar
Anderson, C. in Computational Intelligence Imitating Life (eds. Zurada, J.M., Marks, R.J., II & Robinson, C.J.) 213–222 (IEEE Press, New York, 1994). Google Scholar
Seung, H. & Sompolinsky, H. Simple model for reading neuronal population codes. Proc. Natl. Acad. Sci. USA90, 10749–10753 (1993). ArticleCAS Google Scholar
Snippe, H.P. Parameter extraction from population codes: a critical assessment. Neural Comput.8, 511–529 (1996). ArticleCAS Google Scholar
Wu, S., Nakahara, H. & Amari, S. Population coding with correlation and an unfaithful model. Neural Comput.13, 775–797 (2001). ArticleCAS Google Scholar
Hinton, G.E. in Proceedings of the Ninth International Conference on Artificial Neural Network 1–6 (IEEE, London, England, 1999). Google Scholar
Clark, J.J. & Yuille, A.L. Data Fusion for Sensory Information Processing Systems (Kluwer Academic, Boston, 1990). Book Google Scholar
Knill, D.C. Discrimination of planar surface slant from texture: human and ideal observers compared. Vision Res.38, 1683–1711 (1998). ArticleCAS Google Scholar
Gepshtein, S. & Banks, M.S. Viewing geometry determines how vision and haptics combine in size perception. Curr. Biol.13, 483–488 (2003). ArticleCAS Google Scholar
Gur, M. & Snodderly, D.M. High response reliability of neurons in primary visual cortex (V1) of alert, trained monkeys. Cereb Cortex16, 888–895 (2006). Article Google Scholar
Platt, M.L. & Glimcher, P.W. Neural correlates of decision variables in parietal cortex. Nature400, 233–238 (1999). ArticleCAS Google Scholar
Basso, M.A. & Wurtz, R.H. Modulation of neuronal activity by target uncertainty. Nature389, 66–69 (1997). ArticleCAS Google Scholar
Series, P., Latham, P. & Pouget, A. Tuning curve sharpening for orientation selectivity: coding efficiency and the impact of correlations. Nat. Neurosci.7, 1129–1135 (2004). ArticleCAS Google Scholar
Stein, B.E. & Meredith, M.A. The Merging of the Senses (MIT Press, Cambridge, Massachusetts, 1993). Google Scholar
Stanford, T.R., Quessy, S. & Stein, B.E. Evaluating the operations underlying multisensory integration in the cat superior colliculus. J. Neurosci.25, 6499–6508 (2005). ArticleCAS Google Scholar
Perrault, T.J., Jr., Vaughan, J.W., Stein, B.E. & Wallace, M.T. Superior colliculus neurons use distinct operational modes in the integration of multisensory stimuli. J. Neurophysiol.93, 2575–2586 (2005). Article Google Scholar
Shadlen, M.N. & Newsome, W.T. Neural basis of a perceptual decision in the parietal cortex (area LIP) of the rhesus monkey. J. Neurophysiol.86, 1916–1936 (2001). ArticleCAS Google Scholar
Gold, J.I. & Shadlen, M.N. Neural computations that underlie decisions about sensory stimuli. Trends Cogn. Sci.5, 10–16 (2001). Article Google Scholar
Britten, K.H., Shadlen, M.N., Newsome, W.T. & Movshon, J.A. Responses of neurons in macaque MT to stochastic motion signals. Vis. Neurosci.10, 1157–1169 (1993). ArticleCAS Google Scholar
Weiss, Y. & Fleet, D.J. in Probabilistic Models of the Brain: Perception and Neural Function (eds. Rao, R., Olshausen, B. & Lewicki, M.S.) 77–96 (MIT Press, Cambridge, Massachusetts, 2002). Google Scholar
Anderson, J.S., Lampl, I., Gillespie, D.C. & Ferster, D. The contribution of noise to contrast invariance of orientation tuning in cat visual cortex. Science290, 1968–1972 (2000). ArticleCAS Google Scholar
Sclar, G. & Freeman, R. Orientation selectivity in the cat's striate cortex is invariant with stimulus contrast. Exp. Brain Res.46, 457–461 (1982). ArticleCAS Google Scholar
Deneve, S., Latham, P. & Pouget, A. Reading population codes: a neural implementation of ideal observers. Nat. Neurosci.2, 740–745 (1999). ArticleCAS Google Scholar
Deneve, S., Latham, P. & Pouget, A. Efficient computation and cue integration with noisy population codes. Nat. Neurosci.4, 826–831 (2001). ArticleCAS Google Scholar
Barlow, H.B. Pattern recognition and the responses of sensory neurons. Ann. NY Acad. Sci.156, 872–881 (1969). ArticleCAS Google Scholar
Simoncelli, E., Adelson, E. & Heeger, D. in Proceedings 1991 IEEE Computer Society Conference on Computer Vision and Pattern Recognition 310–315 (1991). Book Google Scholar
Koechlin, E., Anton, J.L. & Burnod, Y. Bayesian inference in populations of cortical neurons: a model of motion integration and segmentation in area MT. Biol. Cybern.80, 25–44 (1999). ArticleCAS Google Scholar
Anastasio, T.J., Patton, P.E. & Belkacem-Boussaid, K. Using Bayes' rule to model multisensory enhancement in the superior colliculus. Neural Comput.12, 1165–1187 (2000). ArticleCAS Google Scholar
Hoyer, P.O. & Hyvarinen, A. in Neural Information Processing Systems 277–284 (MIT Press, Cambridge, Massachusetts, 2003). Google Scholar
Sahani, M. & Dayan, P. Doubly distributional population codes: simultaneous representation of uncertainty and multiplicity. Neural Comput.15, 2255–2279 (2003). Article Google Scholar
Rao, R.P. Bayesian computation in recurrent neural circuits. Neural Comput.16, 1–38 (2004). Article Google Scholar
Deneve, S. in Neural Information Processing Systems 353–360 (MIT Press, Cambridge, Massachusetts, 2005). Google Scholar
Jazayeri, M. & Movshon, J.A. Optimal representation of sensory information by neural populations. Nat. Neurosci.9, 690–696 (2006). ArticleCAS Google Scholar
Poggio, T. A theory of how the brain might work. Cold Spring Harb. Symp. Quant. Biol.55, 899–910 (1990). ArticleCAS Google Scholar
Douglas, R.J. & Martin, K.A. A functional microcircuit for cat visual cortex. J. Physiol. (Lond.)440, 735–769 (1991). ArticleCAS Google Scholar
Heeger, D.J. Normalization of cell responses in cat striate cortex. Vis. Neurosci.9, 181–197 (1992). ArticleCAS Google Scholar
Nelson, J.I., Salin, P.A., Munk, M.H., Arzi, M. & Bullier, J. Spatial and temporal coherence in cortico-cortical connections: a cross-correlation study in areas 17 and 18 in the cat. Vis. Neurosci.9, 21–37 (1992). ArticleCAS Google Scholar
Huys, Q., Zemel, R.S., Natarajan, R. & Dayan, P. Fast population coding. Neural Comput. (in the press).