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A learning rule that explains how rewards teach attention
Authors:Jaldert O. Rombouts  Sander M. Bohte  Julio Martinez-Trujillo
Affiliation:1. Department of Life Sciences, Centrum Wiskunde &2. Informatica, Amsterdam, The Netherlands;3. Cognitive Neurophysiology Laboratory, Department of Physiology, McGill University, Montreal, QC, Canada
Abstract:Many theories propose that top-down attentional signals control processing in sensory cortices by modulating neural activity. But who controls the controller? Here we investigate how a biologically plausible neural reinforcement learning scheme can create higher order representations and top-down attentional signals. The learning scheme trains neural networks using two factors that gate Hebbian plasticity: (1) an attentional feedback signal from the response-selection stage to earlier processing levels; and (2) a globally available neuromodulator that encodes the reward prediction error. We demonstrate how the neural network learns to direct attention to one of two coloured stimuli that are arranged in a rank-order. Like monkeys trained on this task, the network develops units that are tuned to the rank-order of the colours and it generalizes this newly learned rule to previously unseen colour combinations. These results provide new insight into how individuals can learn to control attention as a function of reward contingency.
Keywords:Attention  Reinforcement learning  Neural networks  Neuronal plasticity  Top-down
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