TY - JOUR
T1 - A normalization model of multisensory integration
AU - Ohshiro, Tomokazu
AU - Angelaki, Dora E.
AU - Deangelis, Gregory C.
N1 - Funding Information:
We would like to thank R. Jacobs, A. Pouget, J. Drugowitsch, D. Barany, A. Anzai, T. Sanada, R. Sasaki and H. Kim for helpful discussions and comments on the manuscript. This work was supported by US National Institutes of Health R01 grants EY016178 to G.C.D. and EY019087 to D.E.A.
PY - 2011/6
Y1 - 2011/6
N2 - Responses of neurons that integrate multiple sensory inputs are traditionally characterized in terms of a set of empirical principles. However, a simple computational framework that accounts for these empirical features of multisensory integration has not been established. We propose that divisive normalization, acting at the stage of multisensory integration, can account for many of the empirical principles of multisensory integration shown by single neurons, such as the principle of inverse effectiveness and the spatial principle. This model, which uses a simple functional operation (normalization) for which there is considerable experimental support, also accounts for the recent observation that the mathematical rule by which multisensory neurons combine their inputs changes with cue reliability. The normalization model, which makes a strong testable prediction regarding cross-modal suppression, may therefore provide a simple unifying computational account of the important features of multisensory integration by neurons.
AB - Responses of neurons that integrate multiple sensory inputs are traditionally characterized in terms of a set of empirical principles. However, a simple computational framework that accounts for these empirical features of multisensory integration has not been established. We propose that divisive normalization, acting at the stage of multisensory integration, can account for many of the empirical principles of multisensory integration shown by single neurons, such as the principle of inverse effectiveness and the spatial principle. This model, which uses a simple functional operation (normalization) for which there is considerable experimental support, also accounts for the recent observation that the mathematical rule by which multisensory neurons combine their inputs changes with cue reliability. The normalization model, which makes a strong testable prediction regarding cross-modal suppression, may therefore provide a simple unifying computational account of the important features of multisensory integration by neurons.
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U2 - 10.1038/nn.2815
DO - 10.1038/nn.2815
M3 - Article
C2 - 21552274
AN - SCOPUS:79960758877
SN - 1097-6256
VL - 14
SP - 775
EP - 782
JO - Nature Neuroscience
JF - Nature Neuroscience
IS - 6
ER -