Download presentation
Published byAron Hunter Modified over 9 years ago
1
Neural Networks with Short-Term Synaptic Dynamics (Leiden, May ) Misha Tsodyks, Weizmann Institute Mathematical Models of Short-Term Synaptic plasticity Computations in Neural Networks with Short-Term Synaptic Plasticity Experiments: Henry Markram, Eli Nelken Theory: Klaus Pawelzik, Alex Loebel
2
Multineuron Recording
4
Principles of Time-Dependency of Release
Synaptic Facilitation Synaptic Depression Three Laws of Release Limited Synaptic Resources Release Dependent Depression Release Independent Facilitation AP onset Facilitation Four Parameters of Release Absolute strength Probability of release Depression time constant Facilitation time constant Depression
5
A Phenomenological Approach to Dynamic Synaptic Transmission
4 Key Synaptic Parameters Absolute strength Probability of release Depression time constant Facilitation time constant
7
Phenomenological model of synaptic depression (deterministic)
8
Stochastic transmission
.
9
Binomial model of synaptic release
Loebel et al, submitted
10
The fitting process (deterministic model)
11
Testing the Model experiment experiment model model
12
Frequency-dependence of post-synaptic response
13
Frequency-dependence of post-synaptic response
14
Frequency-dependence of post-synaptic response
15
Frequency-dependence of post-synaptic response
Tsodyks et al, PNAS 1997
16
The 1/f Law of Release
17
Redistribution of Synaptic Efficacy
18
Frequency Dependence of Synaptic Modification
19
RSE
20
Shifting the Distribution of Release Probabilities
21
Population signal Tsodyks et al, Neural Computation 1998
22
Population signal
23
Population signal ‘High-pass filtering’ of the input rate
24
Steady-state signal
25
Tsodyks et al PNAS 1997
26
Synchronous change in pre-synaptic rates
27
Synchronous change in pre-synaptic rates
28
Synchronous change in pre-synaptic rates
Abbott et al Science 1997
31
Modeling synaptic facilitation (deterministic)
Markram, Wang & Tsodyks PNAS 1998
32
Facilitation
33
Frequency-dependence of post-synaptic response
34
Frequency-dependence of post-synaptic response
35
Frequency-dependence of post-synaptic response
37
Population signal Tsodyks et al 1998
38
Steady-state signal
39
Signaling with Facilitating Synapses
SYNAPSES AS CONTEXTUAL FILTERS
40
A Small Circuit
41
Recurrent networks with synaptic depression
Tsodyks et al, J. Neurosci. 2000 Loebel & Tsodyks JCNS 2002 Loebel, Nelken & Tsodyks, Frontiers in Neurosci. 2007
43
Simulation of Network Activity
44
Simulation of Network Activity
45
Origin of Population Spikes
46
Network response to stimulation
47
Experimental evidence for population spikes
DeWeese & Zador 2006
48
(no inhibition, uniform connections, rate equations)
Simplified model (no inhibition, uniform connections, rate equations) i J J
49
The rate model equations
There are two sets of equations representing the excitatory units firing rate, E , and their depression factor, R :
51
Tone The tonic stimuli is represented by a constant shift of the {e}’s, that, when large enough, causes the network to spike and reach a new steady state
52
DeWeese, …, Zador 2003
54
Noise amplitude (Nelken et al, Nature 1999)
55
Extended model Loebel, Nelken & Tsodyks, 2007
56
Forward suppression Rotman et al, 2001
57
Network response to complex stimuli
58
Network response to complex stimuli
59
Neural Network Models of Working Memory Misha Tsodyks Weizmann Institute of Science
Barak Blumenfeld, Son Preminger & Dov Sagi Gianluigi Mongillo & Omri Barak
60
Delayed memory experiments – sample to match
Miyashita et al, Nature 1988
61
Persistent activity (Fuster ’73)
Miyashita et al, Nature 1988
62
Neural network models of associative memory (Hopfield ’82)
Memories are represented as attractors (stable states) of network dynamics. Attractor = internal representation (memory) of a stimulus in the form of stable network activity pattern Synaptic modifications => Changes in attractor landscape = long-term changes in memory Convergence to an attractor = recall of item from long-term memory into a working form
63
Associative memory model
Hopfield Model (1982): Neurons: Memory patterns: Synaptic connections: Network dynamics:
64
Associative memory model
Hopfield Model (1982): Neurons: Memory patterns: Synaptic modifications:
65
Associative memory model
Hopfield Model (1982): Neurons: Memory patterns: Synaptic modifications:
66
Associative memory model
Hopfield Model (1982): Neurons: Memory patterns: Synaptic modifications: (for each ) if Amit, Guetfriend and Sompolinsky et al 1985
67
Network dynamics: Convergence to an attractor
Overlap Memory #
68
Network dynamics: Convergence to an attractor
Overlap Memory #
69
Context-dependent representations: gradual change in the pattern
Intro – morph sequence memory is a dynamics system that is constantly updated based on experience to capture changes in the environment--- morph example. the representation depends not only on the context in which things are acquired but also on the internal context – what other objects or stimuli are represented in the same system together. Visual stimuli that we are exposed to can change the representation of objects that are already stored in the system. Also suggested by associative memory models
70
Long-term memory for faces
Friends Non Friends … … Preminger, Sagi & Tsodyks, Vision Research 2007
71
Experiment – Terminology
Basic Friend or Non-Friend task (FNF task) Face images of faces are flashed for 200 ms for each image the subject is asked whether the image is a friend image (learned in advance) or not. 50% of images are friends, 50% non-friends, in random order; each friend is shown the same number of times. No feedback is given ? ? ? F/NF F/NF F/NF 200ms 200ms 200ms 200ms 200ms 200ms 200ms 200ms 200ms
72
Morph sequence Source (friend) Target (unfamiliar) 1 … 20 … 40 … 60 …
80 … 100 Source (friend) Target (unfamiliar)
73
Morph effect Subject HL -------- (blue-green spectrum) days 1-18
Number of ‘Friend’ responses Bin number Preminger, Sagi & Tsodyks, Vision Research 2007
74
Morphed patterns – Hopfield model
Continuous set of patterns
75
Morphed patterns – Hopfield model
Continuous set of patterns Blumenfeld et al, Neuron 2006
76
Network dynamics: Convergence to the common attractor
Overlap
77
Network dynamics: Convergence to the common attractor
Overlap
78
Working memory in biologically-realistic networks (D. Amit ‘90)
79
Working memory in biologically-realistic networks (D. Amit ‘90)
80
Working memory in biologically-realistic networks (D. Amit ‘90)
Brunel & Wang, J. Comp. Neurosci 2001
81
Working memory in biologically-realistic networks
Brunel & Wang, J. Comp. Neurosci 2001
82
Multi-stability in recurrent networks
83
Multi-stability in recurrent networks
Firing rate (HZ) Synaptic strength (J)
84
Persistent activity is time-dependent.
Rainer & Miller EJN 2002
85
A Phenomenological Approach to Dynamic Synaptic Transmission
4 Key Synaptic Parameters Absolute strength Probability of release Depression time constant Facilitation time constant 2 Synaptic Variables Resources available (x) Release probability (u) Markram, Wang & Tsodyks PNAS 1998
86
Synaptic diversity in the pre-frontal cortex
Wang, Markram et al, Nature Neuroscience 2006
87
New idea To hold short-term memories in synapses too, with pre-synaptic calcium level. Use spiking activity only when the memory is needed for processing, and/or to refresh the synapses (smth like ‘rehearsal’). Mongillo, Barak & Tsodyks 2008
88
Single homogeneous excitatory population – rate model
89
Gain function
90
Bifurcation diagram
91
Bi-stability in networks with synaptic facilitation
92
Attractors in networks with synaptic facilitation
93
Integrate and fire network simulations
94
Integrate and fire network simulations
95
Integrate and fire network simulations
96
Robustness and multi-item memory
97
Robustness and multi-item memory
98
Random overlapping populations
99
Predictions Increased pre-synaptic calcium concentration during the delay period, disassociated from increased firing rate Resistance to temporal cessation of spiking Synchronous spiking activity during the delay period Slow oscillations during the delay period (theta rhythm?).
100
Correlated spiking activity during delay period
Constantinidis et al, J. Neurosci. 2001
101
Theta oscillations and working memory
Lee et al, Neuron 2005
102
Son Preminger (WIS, Rehovot) Dov Sagi (WIS, Rehovot) Barak Blumenfeld (WIS, Rehovot) Omri Barak (WIS, Rehovot) Gianluigi Mongillo (ENS, Paris)
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.