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Connected Populations: oscillations, competition and spatial continuum (field equations) Lecture 12 Course: Neural Networks and Biological Modeling Wulfram Gerstner, EPFL Book: W. Gerstner and W. Kistler, Spiking Neuron Models Chapter 9.1
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Population of neurons h(t) I(t) ? A(t) potential A(t) t population activity Blackboard: Pop. activity
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Signal transmission in populations of neurons Connections 4000 external 4000 within excitatory 1000 within inhibitory Population - 50 000 neurons - 20 percent inhibitory - randomly connected -low rate -high rate input
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Population - 50 000 neurons - 20 percent inhibitory - randomly connected Signal transmission in populations of neurons 100 200 time [ms] Neuron # 32374 50 u [mV] 100 0 10 A [Hz] Neuron # 32340 32440 100 200 time [ms] 50 -low rate -high rate input
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Theory of transients low noise I(t) h(t) noise-free (escape noise/fast noise) noise model A low noise fast transient noise model A I(t) h(t) (escape noise/fast noise) high noise slow transient But transient oscillations
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High-noise activity equation noise model A I(t) h(t) (escape noise/fast noise) high noise slow transient Population activity Membrane potential caused by input blackboard In the limit of high noise,
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Full connectivity Part I: Single Population - Population Activity, definition - high noise - full connectivity
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Fully connected network All spikes, all neurons Synaptic coupling fully connected N >> 1 blackboard
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All spikes, all neurons fully connected All neurons receive the same total input current (‘mean field’) Index i disappears
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Stationary solution fully connected N >> 1 Homogeneous network, stationary, All neurons are identical, Single neuron rate = population rate
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Exercises 1, now Next lecture 10:15 Exercise 1: homogeneous stationary solution fully connected N >> 1 Homogeneous network All neurons are identical, Single neuron rate = population rate
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Connected Populations: Part I: Single Population - Population Activity, definition - high noise - full connectivity - stationary state - mean rate in stationary state What is this function g? Wulfram Gerstner, EPFL
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Stationary State/Asynchronous State fully connected coupling J/N input potential frequency (single neuron) blackboard Homogeneous network All neurons are identical, Single neuron rate = population rate A(t)= A 0 = const Single neuron
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High-noise activity equation noise model A I(t) h(t) (escape noise/fast noise) high noise slow transient Population activity Membrane potential caused by input Note: total membrane potential Effect of last spike What is this function g?
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Spike Response Model i j Spike reception: EPSP Spike emission: AP Firing: Spike emission Last spike of i All spikes, all neurons h i (t)
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Fully connected network Spike emission: AP All spikes, all neurons Synaptic coupling fully connected N >> 1
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Stationary State/Asynchronous State fully connected coupling J/N input potential A(t)=const frequency (single neuron) typical mean field (Curie Weiss) Homogeneous network All neurons are identical, Single neuron rate = population rate
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High-noise activity equation noise model A I(t) h(t) (escape noise/fast noise) high noise slow transient Population activity Membrane potential caused by input 1 population = 1 differential equation
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Connected Populations: Part I: Single Population - Population Activity, definition - high noise - full connectivity - stationary state - mean rate in stationary state Part II: Multiple Population - Spatial coupling - Background: cortical populations - Continuum model - Stationary state Wulfram Gerstner EPFL
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Microscopic vs. Macroscopic Coupling I(t)
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Cortical columns: Orientation tuning (and coarse coding)
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Detour: Receptive fields (see also lecture 4) visual cortex electrode
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Detour: Receptive field development visual cortex
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Detour: Receptive field development Receptive fields: Retina, LGN - + -
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Detour: Receptive field development Receptive fields: Retina, LGN Receptive fields: visual cortex V1 Orientation selective
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Detour: Receptive field development Receptive fields: visual cortex V1 Orientation selective
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Detour: orientation selective receptive fields Receptive fields: visual cortex V1 Orientation selective 0 rate Stimulus orientation
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Detour: Receptive fields visual cortex Neighboring cells in visual cortex Have similar preferred orientation: cortical orientation map
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Detour: orientation selective receptive fields Receptive fields: visual cortex V1 Orientation selective 0 rate Stimulus orientation Cell 1
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Detour: orientation selective receptive fields 0 rate Cell 1 Cell 5 Oriented stimulus Course coding Many cells respond to a single stimulus with different rate
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Continuous Networks
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Several populations Continuum Blackboard
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Part I: Single Population - Population Activity, definition - high noise - full connectivity - stationary state - mean rate in stationary state Part II: Multiple Population - Background: cortical populations - spatial coupling - continuum model - stationary state - application: head direction cells Field equations and continuum Models for coupled populations
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Continuum: stationary profile
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Head direction cells (and line attractor)
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Neurophysiology of the Rat Hippocampus rat brain CA1 CA3 DG pyramidal cells soma axon dendrites synapses electrode Place fields
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Hippocampal Place Cells Main property: encoding the animal’s location place field
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Head-direction Cells Main property: encoding the animal ’s heading Preferred firing direction r ( i i
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Head-direction Cells Main property: encoding the animal ’s allocentric heading Preferred firing direction r ( i i 0 90 180 270 300
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Basic phenomenology 0 A(theta) I: Bump formation strong lateral connectivity Possible interpretation of head direction cells: always some cells active indicate current orientation Field Equations: Wilson and Cowan, 1972
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Basic phenomenology 0 A(x) II. Edge enhancement Weaker lateral connectivity I(x) Possible interpretation of visual cortex cells: contrast enhancement in - orientation - location Field Equations: Wilson and Cowan, 1972
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Continuum: stationary profile Comparison simulation of neurons and macroscopic field equation Spiridon&Gerstner See: Chapter 9, book: Spiking Neuron Models, W. Gerstner and W. Kistler, 2002
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Exercises 2,3,4 from 11:15-12:45 Exercise 1: homogeneous stationary solution Exercise 2: bump solution Exercise 3: bump formation Blob forms where the input is x x
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Part I: Single Population - Population Activity, definition - high noise - full connectivity - stationary state - mean rate in stationary state Part II: Multiple Population - Background: cortical populations - spatial coupling - continuum model - stationary state Part III: Beware of Pitfalls - oscillations - low noise Field equations and continuum Models for coupled populations
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Book: Spiking Neuron Models. W. Gerstner and W. Kistler Chapter 8 Oscillations
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Stability of Asynchronous State Search for bifurcation points linearize h: input potential A(t) fully connected coupling J/N
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Stability of Asynchronous State A(t) delay period 0 for stable noise s (Gerstner 2000)
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High-noise activity equation noise model A I(t) h(t) (escape noise/fast noise) high noise slow transient Population activity Membrane potential caused by input Attention: - valid for high noise only, else transients might be wrong - valid for high noise only, else spontaneous oscillations may arise
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Random connectivity
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Random Connectivity/Asynchronous State randomly connected A(t)=const frequency (single neuron) improved mean field C inputs per neuron mean drive variance (Amit&Brunel 1997, Brunel 2000) Analogous for column of 1 exc. + 1 inhib. Pop.
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The end
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Liquid state/ Information buffering
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Ultra-short-term information buffering (‘echo’) I(t) How much information in out(t) about signal ? (Maass et al., 2002, H.Jäger 2004) 640 excitatory n. 160 inhibitory n. 20ms time constant 50 connections/n. population activity bias N parameters
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Ultra-short-term information buffering (‘echo’) I(t) (Mayor&Gerstner) bias mean-field readout microscopic readout
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