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Cortical prediction markets

Authors :
Balduzzi, David
Publication Year :
2014

Abstract

We investigate cortical learning from the perspective of mechanism design. First, we show that discretizing standard models of neurons and synaptic plasticity leads to rational agents maximizing simple scoring rules. Second, our main result is that the scoring rules are proper, implying that neurons faithfully encode expected utilities in their synaptic weights and encode high-scoring outcomes in their spikes. Third, with this foundation in hand, we propose a biologically plausible mechanism whereby neurons backpropagate incentives which allows them to optimize their usefulness to the rest of cortex. Finally, experiments show that networks that backpropagate incentives can learn simple tasks.<br />Comment: To appear, AAMAS 2014

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1401.1465
Document Type :
Working Paper