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Details of Grant 

EPSRC Reference: EP/I005102/1
Title: The Neural Marketplace
Principal Investigator: Harris, Professor KD
Other Investigators:
Researcher Co-Investigators:
Project Partners:
Department: Bioengineering
Organisation: Imperial College London
Scheme: Leadership Fellowships
Starts: 01 October 2010 Ends: 30 September 2012 Value (£): 1,134,774
EPSRC Research Topic Classifications:
Artificial Intelligence Biomedical neuroscience
EPSRC Industrial Sector Classifications:
No relevance to Underpinning Sectors
Related Grants:
Panel History:
Panel DatePanel NameOutcome
09 Jun 2010 EPSRC Fellowships 2010 Interview Panel F Announced
Summary on Grant Application Form
Modern computers are more powerful than many ever dared expect. So it is remarkable how much today's computers still can't do. Strangely, some of the hardest tasks for computers are effortless to humans. Problems like vision, natural language comprehension, and walking control will undoubtedly require massive computing power. But the real difficulty is our inability to write down sets of rules that a computer can follow to perform these tasks. The only solution may be to develop computer systems that, like us, learn by example and by trial and error, without needing explicit instructions. The brain contains roughly as many neurons as there are transistors in a modern supercomputer. These cells are computationally more sophisticated than was once believed. But what is most amazing is their ability to organize into large, functionally coherent networks, that constantly learn and adapt to an animal's changing circumstances. This happens with no central point of control, suggesting that something about neurons causes them to automatically assemble into information-processing systems. This fellowship proposal is based on a new hypothesis, derived from neurobiological research, for how this self-organization occurs through competitive processes analogous to those of a market economy. A typical neuron in the cerebral cortex receives about 10,000 inputs, which it integrates to produce a single output, broadcast in turn to about 10,000 targets. Our new hypothesis is for a mechanism by which a neuron receives feedback from its targets, signalling how useful the information it carries is to the rest of the network. Several lines of evidence suggest that in the brain, molecules called neurotrophins can act as carriers of this feedback signal. According to the hypothesis, neurons throughout the brain constantly experiment with new information processing strategies. In most cases, the new information will not be required by the neuron's targets, no feedback will be received, and the neuron will return to its prior state. A few neurons, however, will happen upon information that is useful to the larger network, and will receive feedback causing the recent changes to be retained. In a market economy, interactions like this allow autonomous agents (people and firms) to organize into networks. A firm that makes cars buys parts from suppliers, who buy components from their own suppliers, and so on. At each stage of the supply chain, multiple firms compete to produce the best products, experimenting with new designs that, if successful, will increase market share. The decisions required to build a good car are thus distributed over a large number of agents. No one person has to understand every part of the manufacturing process; instead, decisions made by multiple individual agents cause the system to organize itself. Improvements and adaptations occur by experiments with new approaches at all levels. Scale this picture up, and you have a global economy encompassing billions of individuals. Could similar interactions organize the billions of cells in the brain into a single coherent system? And could they allow us to build scalable learning machines to solve currently intractable problems in computing?The current proposal will answer these questions by constructing a series of increasingly large market-based neural network systems, to solve a series of increasingly challenging tasks from speech recognition and robot control. This research will have impact far beyond these domains, informing the construction of learning systems for applications as diverse as vision and medical diagnosis, as well as to domains such as internet routing that require scalable self-organization of multiple computing devices. Confirming the computational validation of the hypothesis would also provide a step-change in our understanding of how the brain processes information, potentially yielding new approaches to disorders of brain organization.
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