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Models of neural networks II : temporal aspects of coding and information processing in biological systems / editors, E. Domany, J.L. van Hemmen, K. Schulten

Contributor(s): Series: Physics of neural networksPublication details: New York : Springer-Verlag, ©1994Description: volumes : ill. ; 24 cmISBN:
  • 0387943625
Subject(s): Genre/Form: Additional physical formats: Online version:: Models of neural networksDDC classification:
  • W 26.55 A7 M689 1994 A7 M689 1994
Contents:
Contents 1. Coding and Information Processing in Neural Networks. 1.1 Description of Neural Activity. 1.1.1 Spikes, Rates, and Neural Assemblies. 1.2 Oscillator Models. 1.2.1 The Kuramoto Model. 1.2.2 Oscillator Models in Action. 1.3 Spiking Neurons. 1.3.1 Hodgkin-Huxley Model. 1.3.2 Integrate-and-Fire Model. 1.3.3 Spike Response Model. 1.4 A Network of Spiking Neurons. 1.4.1 Stationary Solutions - Incoherent Firing. 1.4.2 Coherent Firing - Oscillatory Solutions. 1.5 Hebbian Learning of Spatio-Temporal Spike Patterns. 1.5.1 Synaptic Organization of a Model Network. 1.5.2 Hebbian Learning. 1.5.3 Low-Activity Random Patterns. 1.5.4 Discussion. 1.6 Summary and Conclusions.- References. 2. The Correlation Theory of Brain Function. Foreword. 2.1 Introduction. 2.2 Conventional Brain Theory. 2.2.1 Localization Theory. 2.2.2 The Problem of Nervous Integration. 2.2.3 Proposed Solutions. 2.3 The Correlation Theory of Brain Function. 2.3.1 Modifications of Conventional Theory. 2.3.2 Elementary Discussion. 2.3.3 Network Structures. 2.3.4 Applications of Correlation Theory. 2.4 Discussion. 2.4.1 The Text Analogy. 2.4.2 The Bandwidth Problem. 2.4.3 Facing Experiment. 2.4.4 Conclusions.- References. 3. Firing Rates and Well-Timed Events in the Cerebral Cortex. 3.1 Measuring the Activity of Nerve Cells. 3.2 Rate Functions and Stationary Point Processes. 3.3 Rate Functions for Nonstationary Point Processes 3.4 Rate Functions and Singular Events.- References. 4. The Role of Synchrony in Neocortical Processing and Synaptic Plasticity. 4.1 Introduction. 4.2 Pattern Processing and the Binding Problem. 4.3 Evidence for Dynamic Interactions Between Spatially Distributed Neurons.- 4.4 Stimulus-Dependent Changes of Synchronization Probability. 4.5 Synchronization Between Areas. 4.6 The Synchronizing Connections. 4.7 Experience-Dependent Modifications of Synchronizing Connections and Synchronization Probabilities. 4.8 Correlation Between Perceptual Deficits and Response Synchronization in Strabismic Amblyopia. 4.9 The Relation Between Synchrony and Oscillations. 4.10 Rhythm Generating Mechanisms. 4.11 The Duration of Coherent States. 4.12 Synchronization and Attention. 4.13 The Role of Synchrony in Synaptic Plasticity. 4.14 The Role of Oscillations in Synaptic Plasticity. 4.15 Outlook. 4.16 Concluding Remarks.- References. 5. Associative Binding and Segregation in a Network of Spiking Neurons. 5.1 Introduction. 5.2 Spike Response Model. 5.2.1 Starting Point. 5.2.2 Neurons and Synapses. 5.3 Theory of Locking. 5.3.1 Equation of Motion. 5.3.2 Stationary States. 5.3.3 Oscillatory States. 5.3.4 A Locking Condition. 5.3.5 Weak Locking. 5.4 Simulation Results. 5.4.1 Three Scenarios. 5.4.2 Interpretation. 5.4.3 Spike Raster. 5.4.4 Synchronization Between Two Hemispheres. 5.5 Application to Binding and Segmentation. 5.5.1 Feature Linking 201. 5.5.2 Pattern Segmentation. 5.5.3 Switching Between Patterns. 5.6 Context Sensitive Binding in a Layered Network with Feedback. 5.7 Discussion. 5.8 Conclusions.- References. 6. Modeling the Sensory Computations of the Olfactory Bulb. 6.1 Introduction. 6.2 Anatomical and Physiological Background. 6.3 Modeling the Neural Oscillations in the Olfactory Bulb. 6.3.1 General Model Structure. 6.3.2 The Olfactory Bulb as a Group of Coupled Nonlinear Oscillators. 6.3.3 Explanation of Bulbar Activities. 6.4 A Model of Odor Recognition and Segmentation in the Olfactory Bulb. 6.4.1 Emergence of Oscillations Detects Odors: Patterns of Oscillations Code the Odor Identity and Strength. 6.4.2 Odor Segmentation in the Olfactory Bulb - Olfactory Adaptation. 6.4.3 Olfactory Psychophysics - Cross-Adaptation, Sensitivity Enhancement, and Cross-Enhancement. 6.5 A Model of Odor Segmentation Through Odor Fluctuation Analysis. 6.5.1 A Different Olfactory Environment and a Different Task. 6.5.2 Odor Segmentation in an Adaptive Network. 6.6 Discussion.- References. 7. Detecting Coherence in Neuronal Data. 7.1 Introduction. 7.1.1 Correlations and Statistical Dependency. 7.2 Time Resolved Detection of Coherence. 7.2.1 Statistical Dependency of Continuous Signals. 7.2.2 Detection of Coherent Patterns of Activities. 7.3 Memory and Switching in Local Field Potentials from Cat Visual Cortex. 7.3.1 Temporal Coherence of Local Field Potentials. 7.3.2 Spatial Coherence of Local Field Potentials. 7.4 A Model-Dependent Approach. 7.4.1 Renewal Dynamics. 7.4.2 Switching in the Assembly Dynamics. 7.4.3 Network States are Hidden. 7.4.4 Model Identification from Multiunit Activities. 7.5 Memory and Switching in Multiunit Activities from Cat Visual Cortex. 7.5.1 Identifying the Local Pool Dynamics. 7.5.2 Testing the Assembly Hypothesis. 7.6 Reconstruction of Synchronous Network States. 7.7 Summary.- References. 8. Hebbian Synaptic Plasticity: Evolution of the Contemporary Concept. 8.1 Concept of a Hebbian Synapse. 8.1.1 Contemporary Concept of a Hebbian Synaptic Modification. 8.2 Experimental Evidence for Hebbian Synaptic Mechanisms. 8.2.1 Induction of Hippocampal LTP. 8.3 Biophysical Models of LTP Induction.- 8.3.1 Second-Generation Spine Model. 8.4 Bidirectional Regulation of Synaptic Strength. 8.4.1 Theoretical Representations of Generalized Hebbian Modifications. 8.4.2 Experimental Evidence for Long-Term Synaptic Depression. 8.5 Interaction Between Dendritic Signaling and Hebbian.- Learning.- References. 9. Reentry and Dynamical Interactions of Cortical Networks. 9.1 Introduction. 9.2 Models of Cortical Integration. 9.2.1 Dynamic Behavior of Single Neuronal Groups. 9.2.2 Coupled Neuronal Groups. 9.2.3 Figure-Ground Segregation. 9.2.4 Cooperative Interactions Among Multiple Cortical Areas. 9.3 Summary and Conclusion. 9.3.1 Cortical Integration at Multiple Levels. 9.3.2 Temporal Dynamics. 9.3.3 Correlations and Behavior. 9.3.4 Functions of Reentry.
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Item type Current library Call number Copy number Status Date due Barcode
Book Open Access Book Open Access Health Sciences Library W 26.55 A7 M689 1994 (Browse shelf(Opens below)) 1 Available MBAL22010884
Book Open Access Book Open Access Health Sciences Library W 26.55 A7 M689 1994 (Browse shelf(Opens below)) 2 Available MBAL22010978
Book Open Access Book Open Access Health Sciences Library W 26.55 A7 M689 1994 (Browse shelf(Opens below)) 3 Available MBAL22010977

Includes references and index

Contents

1. Coding and Information Processing in Neural Networks.
1.1 Description of Neural Activity.
1.1.1 Spikes, Rates, and Neural Assemblies.
1.2 Oscillator Models.
1.2.1 The Kuramoto Model.
1.2.2 Oscillator Models in Action.
1.3 Spiking Neurons.
1.3.1 Hodgkin-Huxley Model.
1.3.2 Integrate-and-Fire Model.
1.3.3 Spike Response Model.
1.4 A Network of Spiking Neurons.
1.4.1 Stationary Solutions - Incoherent Firing.
1.4.2 Coherent Firing - Oscillatory Solutions.
1.5 Hebbian Learning of Spatio-Temporal Spike Patterns.
1.5.1 Synaptic Organization of a Model Network.
1.5.2 Hebbian Learning.
1.5.3 Low-Activity Random Patterns.
1.5.4 Discussion.
1.6 Summary and Conclusions.- References.

2. The Correlation Theory of Brain Function.
Foreword.
2.1 Introduction.
2.2 Conventional Brain Theory.
2.2.1 Localization Theory.
2.2.2 The Problem of Nervous Integration.
2.2.3 Proposed Solutions.
2.3 The Correlation Theory of Brain Function.
2.3.1 Modifications of Conventional Theory.
2.3.2 Elementary Discussion.
2.3.3 Network Structures.
2.3.4 Applications of Correlation Theory.
2.4 Discussion.
2.4.1 The Text Analogy.
2.4.2 The Bandwidth Problem.
2.4.3 Facing Experiment.
2.4.4 Conclusions.- References.

3. Firing Rates and Well-Timed Events in the Cerebral Cortex.
3.1 Measuring the Activity of Nerve Cells.
3.2 Rate Functions and Stationary Point Processes.
3.3 Rate Functions for Nonstationary Point Processes
3.4 Rate Functions and Singular Events.- References.

4. The Role of Synchrony in Neocortical Processing and Synaptic Plasticity.
4.1 Introduction.
4.2 Pattern Processing and the Binding Problem.
4.3 Evidence for Dynamic Interactions Between Spatially Distributed Neurons.- 4.4 Stimulus-Dependent Changes of Synchronization Probability.
4.5 Synchronization Between Areas.
4.6 The Synchronizing Connections.
4.7 Experience-Dependent Modifications of Synchronizing Connections and Synchronization Probabilities.
4.8 Correlation Between Perceptual Deficits and Response Synchronization in Strabismic Amblyopia.
4.9 The Relation Between Synchrony and Oscillations.
4.10 Rhythm Generating Mechanisms.
4.11 The Duration of Coherent States.
4.12 Synchronization and Attention.
4.13 The Role of Synchrony in Synaptic Plasticity.
4.14 The Role of Oscillations in Synaptic Plasticity.
4.15 Outlook.
4.16 Concluding Remarks.- References.

5. Associative Binding and Segregation in a Network of Spiking Neurons.
5.1 Introduction.
5.2 Spike Response Model.
5.2.1 Starting Point.
5.2.2 Neurons and Synapses.
5.3 Theory of Locking.
5.3.1 Equation of Motion.
5.3.2 Stationary States.
5.3.3 Oscillatory States.
5.3.4 A Locking Condition.
5.3.5 Weak Locking.
5.4 Simulation Results.
5.4.1 Three Scenarios.
5.4.2 Interpretation.
5.4.3 Spike Raster.
5.4.4 Synchronization Between Two Hemispheres.
5.5 Application to Binding and Segmentation.
5.5.1 Feature Linking 201.
5.5.2 Pattern Segmentation.
5.5.3 Switching Between Patterns.
5.6 Context Sensitive Binding in a Layered Network with Feedback.
5.7 Discussion.
5.8 Conclusions.- References.

6. Modeling the Sensory Computations of the Olfactory Bulb.
6.1 Introduction.
6.2 Anatomical and Physiological Background.
6.3 Modeling the Neural Oscillations in the Olfactory Bulb.
6.3.1 General Model Structure.
6.3.2 The Olfactory Bulb as a Group of Coupled Nonlinear Oscillators.
6.3.3 Explanation of Bulbar Activities.
6.4 A Model of Odor Recognition and Segmentation in the Olfactory Bulb.
6.4.1 Emergence of Oscillations Detects Odors: Patterns of Oscillations Code the Odor Identity and Strength.
6.4.2 Odor Segmentation in the Olfactory Bulb - Olfactory Adaptation.
6.4.3 Olfactory Psychophysics - Cross-Adaptation, Sensitivity Enhancement, and Cross-Enhancement.
6.5 A Model of Odor Segmentation Through Odor Fluctuation Analysis.
6.5.1 A Different Olfactory Environment and a Different Task.
6.5.2 Odor Segmentation in an Adaptive Network.
6.6 Discussion.- References.

7. Detecting Coherence in Neuronal Data.
7.1 Introduction.
7.1.1 Correlations and Statistical Dependency.
7.2 Time Resolved Detection of Coherence.
7.2.1 Statistical Dependency of Continuous Signals.
7.2.2 Detection of Coherent Patterns of Activities.
7.3 Memory and Switching in Local Field Potentials from Cat Visual Cortex.
7.3.1 Temporal Coherence of Local Field Potentials.
7.3.2 Spatial Coherence of Local Field Potentials.
7.4 A Model-Dependent Approach.
7.4.1 Renewal Dynamics.
7.4.2 Switching in the Assembly Dynamics.
7.4.3 Network States are Hidden.
7.4.4 Model Identification from Multiunit Activities.
7.5 Memory and Switching in Multiunit Activities from Cat Visual Cortex.
7.5.1 Identifying the Local Pool Dynamics.
7.5.2 Testing the Assembly Hypothesis.
7.6 Reconstruction of Synchronous Network States.
7.7 Summary.- References.

8. Hebbian Synaptic Plasticity: Evolution of the Contemporary Concept.
8.1 Concept of a Hebbian Synapse.
8.1.1 Contemporary Concept of a Hebbian Synaptic Modification.
8.2 Experimental Evidence for Hebbian Synaptic Mechanisms.
8.2.1 Induction of Hippocampal LTP.
8.3 Biophysical Models of LTP Induction.-
8.3.1 Second-Generation Spine Model.
8.4 Bidirectional Regulation of Synaptic Strength.
8.4.1 Theoretical Representations of Generalized Hebbian Modifications.
8.4.2 Experimental Evidence for Long-Term Synaptic Depression.
8.5 Interaction Between Dendritic Signaling and Hebbian.- Learning.- References.

9. Reentry and Dynamical Interactions of Cortical Networks.
9.1 Introduction.
9.2 Models of Cortical Integration.
9.2.1 Dynamic Behavior of Single Neuronal Groups.
9.2.2 Coupled Neuronal Groups.
9.2.3 Figure-Ground Segregation.
9.2.4 Cooperative Interactions Among Multiple Cortical Areas.
9.3 Summary and Conclusion.
9.3.1 Cortical Integration at Multiple Levels.
9.3.2 Temporal Dynamics.
9.3.3 Correlations and Behavior.
9.3.4 Functions of Reentry.

Latest issue consulted: 4, published in 2002.

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