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Articles, Systems/Circuits

Goal-Directed Decision Making with Spiking Neurons

Johannes Friedrich and Máté Lengyel
Journal of Neuroscience 3 February 2016, 36 (5) 1529-1546; https://doi.org/10.1523/JNEUROSCI.2854-15.2016
Johannes Friedrich
1Computational and Biological Learning Laboratory, Department of Engineering, University of Cambridge, Cambridge CB2 1PZ, United Kingdom, and
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Máté Lengyel
1Computational and Biological Learning Laboratory, Department of Engineering, University of Cambridge, Cambridge CB2 1PZ, United Kingdom, and
2Department of Cognitive Science, Central European University, Budapest 1051, Hungary
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Abstract

Behavioral and neuroscientific data on reward-based decision making point to a fundamental distinction between habitual and goal-directed action selection. The formation of habits, which requires simple updating of cached values, has been studied in great detail, and the reward prediction error theory of dopamine function has enjoyed prominent success in accounting for its neural bases. In contrast, the neural circuit mechanisms of goal-directed decision making, requiring extended iterative computations to estimate values online, are still unknown. Here we present a spiking neural network that provably solves the difficult online value estimation problem underlying goal-directed decision making in a near-optimal way and reproduces behavioral as well as neurophysiological experimental data on tasks ranging from simple binary choice to sequential decision making. Our model uses local plasticity rules to learn the synaptic weights of a simple neural network to achieve optimal performance and solves one-step decision-making tasks, commonly considered in neuroeconomics, as well as more challenging sequential decision-making tasks within 1 s. These decision times, and their parametric dependence on task parameters, as well as the final choice probabilities match behavioral data, whereas the evolution of neural activities in the network closely mimics neural responses recorded in frontal cortices during the execution of such tasks. Our theory provides a principled framework to understand the neural underpinning of goal-directed decision making and makes novel predictions for sequential decision-making tasks with multiple rewards.

SIGNIFICANCE STATEMENT Goal-directed actions requiring prospective planning pervade decision making, but their circuit-level mechanisms remain elusive. We show how a model circuit of biologically realistic spiking neurons can solve this computationally challenging problem in a novel way. The synaptic weights of our network can be learned using local plasticity rules such that its dynamics devise a near-optimal plan of action. By systematically comparing our model results to experimental data, we show that it reproduces behavioral decision times and choice probabilities as well as neural responses in a rich set of tasks. Our results thus offer the first biologically realistic account for complex goal-directed decision making at a computational, algorithmic, and implementational level.

  • computational modeling
  • decision making
  • neuroeconomics
  • planning
  • reinforcement learning
  • spiking neurons

This is an Open Access article distributed under the terms of the Creative Commons Attribution License Creative Commons Attribution 4.0 International,which permits unrestricted use, distribution and reproduction in any medium provided that the original work is properly attributed.

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The Journal of Neuroscience: 36 (5)
Journal of Neuroscience
Vol. 36, Issue 5
3 Feb 2016
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Goal-Directed Decision Making with Spiking Neurons
Johannes Friedrich, Máté Lengyel
Journal of Neuroscience 3 February 2016, 36 (5) 1529-1546; DOI: 10.1523/JNEUROSCI.2854-15.2016

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Goal-Directed Decision Making with Spiking Neurons
Johannes Friedrich, Máté Lengyel
Journal of Neuroscience 3 February 2016, 36 (5) 1529-1546; DOI: 10.1523/JNEUROSCI.2854-15.2016
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Keywords

  • computational modeling
  • decision making
  • neuroeconomics
  • planning
  • reinforcement learning
  • spiking neurons

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