Amplification of trial-to-trial response variability by neurons in visual cortex.

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Published in PLoS Biol on August 24, 2004

Authors

Matteo Carandini1

Author Affiliations

1: Smith-Kettlewell Eye Research Institute, San Francisco, California, USA. matteo@ski.org

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