
Modeling Brain Function
The World of Attractor Neural Networks
Paperback | 21 December 1992
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524 Pages
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| Preface | p. xiii |
| Introduction | p. 1 |
| Philosophy and Methodology | p. 1 |
| Reduction to physics and physics modeling analogues | p. 1 |
| Methods for mind and matter | p. 3 |
| Some methodological questions | p. 5 |
| Neurophysiological Background | p. 9 |
| Building blocks for neural networks | p. 9 |
| Dynamics of neurons and synapses | p. 12 |
| More complicated building blocks | p. 15 |
| From biology to information processing | p. 17 |
| Modeling Simplified Neurophysiological Information | p. 18 |
| Neuron as perceptron and formal neuron | p. 18 |
| Digression on formal neurons and perceptrons | p. 20 |
| Beyond the basic perceptron | p. 25 |
| Building blocks for attractor neural networks (ANN) | p. 27 |
| The Network and the World | p. 31 |
| Neural states, network states and state space | p. 31 |
| Digression on the relation between measures | p. 33 |
| Representations on network states | p. 35 |
| Thinking about output mechanism | p. 38 |
| Spontaneous Computation vs. Cognitive Processing | p. 44 |
| Input systems, transducers, transformers | p. 44 |
| ANN's as computing elements -- a position | p. 45 |
| ANN's and computation of mental representations | p. 48 |
| Bibliography | p. 53 |
| The Basic Attractor Neural Network | p. 58 |
| Networks of Analog, Discrete, Noisy Neurons | p. 58 |
| Analog neurons, spike rates, two-state neural models | p. 58 |
| Binary representation of single neuron activity | p. 63 |
| Noisy dynamics of discrete two-state neurons | p. 65 |
| Dynamical Evolution of Network States | p. 68 |
| Network dynamics of discrete-neurons | p. 68 |
| Synchronous dynamics | p. 70 |
| Asynchronous dynamics | p. 72 |
| Sample trajectories and lessons about dynamics | p. 74 |
| Types of trajectories and possible interpretation - a summary | p. 79 |
| On Attractors | p. 81 |
| The landscape metaphor | p. 81 |
| Perception, recognition and recall | p. 84 |
| Perception errors due to spurious states - possible role of noise | p. 85 |
| Psychiatric speculations and images | p. 87 |
| The role of noise and simulated annealing | p. 89 |
| Frustration and diversity of attractors | p. 91 |
| Bibliography | p. 95 |
| General Ideas Concerning Dynamics | p. 97 |
| The Stochastic Process, Ergodicity and Beyond | p. 97 |
| Stochastic equation and apparent ergodicity | p. 97 |
| Two ways of evading ergodicity | p. 101 |
| Cooperativity as an Emergent Property in Magnetic Analog | p. 105 |
| Ising model for a magnet - spin, field and interaction | p. 105 |
| Dynamics and equilibrium properties | p. 108 |
| Noiseless, short range ferromagnet | p. 112 |
| Fully connected Ising model: real non-ergodicity | p. 119 |
| From Dynamics to Landscapes - The Free Energy | p. 125 |
| Energy as Lyapunov function for noiseless dynamics | p. 125 |
| Parametrized attractor distributions with noise | p. 126 |
| Free-energy landscapes - a noisy Lyapunov function | p. 127 |
| Free-energy minima, non-ergodicity, order-parameters | p. 129 |
| Free-Energy of Fully Connected Ising Model | p. 131 |
| From minimization equation to the free-energy | p. 131 |
| The analytic way to the free-energy | p. 133 |
| Attractors at metastable states | p. 140 |
| Synaptic Symmetry and Landscapes | p. 141 |
| Noiseless asynchronous dynamics - energy | p. 141 |
| Detailed balance for noisy asynchronous dynamics | p. 142 |
| Noiseless synchronous dynamics - Lyapunov function | p. 143 |
| Detailed balance for noisy synchronous dynamics | p. 145 |
| Appendix: Technical Details for Stochastic Equations | p. 146 |
| The maximal eigen-value and the associated vector | p. 146 |
| Differential equation for mean magnetization | p. 147 |
| The minimization of the dynamical free-energy | p. 150 |
| Legendre transform for the free-energy | p. 152 |
| Bibliography | p. 153 |
| Symmetric Neural Networks at Low Memory Loading | p. 155 |
| Motivations and List of Results | p. 155 |
| Simplifying assumptions and specific questions | p. 155 |
| Specific answers for low loading of random memories | p. 158 |
| Properties of the noiseless network | p. 162 |
| Properties of the network in the presence of fast noise | p. 166 |
| Explicit Construction of Synaptic Efficacies | p. 169 |
| Choice of memorized patterns | p. 169 |
| Storage prescription - "Hebb's rule" | p. 170 |
| A decorrelating (but nonlocal) storage prescription | p. 172 |
| Stability Considerations at Low Storage | p. 174 |
| Signal to noise analysis - memories, spurious states | p. 174 |
| Basins of attraction and retrieval times | p. 178 |
| Neurophysiological interpretation | p. 180 |
| Mean Field Approach to Attractors | p. 181 |
| Self-consistency and equations for attractors | p. 181 |
| Self-averaging and the final equations | p. 187 |
| Free-energy, extrema, stability | p. 189 |
| Mean-field and free-energy - synchronous dynamics | p. 191 |
| Retrieval States, Spurious States - Noiseless | p. 192 |
| Perfect retrieval of memorized patterns | p. 192 |
| Noiseless, symmetric spurious memories | p. 194 |
| Non-symmetric spurious states | p. 198 |
| Are spurious states a free lunch? | p. 199 |
| Role of Noise at Low Loading | p. 200 |
| Ergodicity at high noise levels - asynchronous | p. 200 |
| Just below the critical noise level | p. 201 |
| Positive role of noise and retrieval with no fixed points | p. 206 |
| Appendix: Technical Details for Low Storage | p. 208 |
| Free-energy at finite p - asynchronous | p. 208 |
| Free-energy and solutions - synchronous dynamics | p. 209 |
| Bound on magnitude of overlaps | p. 211 |
| Asymmetric spurious solution | p. 212 |
| Bibliography | p. 213 |
| Storage and Retrieval of Temporal Sequences | p. 215 |
| Motivations: Introspective, Biological, Philosophical | p. 215 |
| The introspective motivation | p. 215 |
| The biological motivation | p. 216 |
| Philosophical motivations | p. 218 |
| Storing and Retrieving Temporal Sequences | p. 221 |
| Functional asymmetry | p. 221 |
| Early ideas for instant temporal sequences | p. 221 |
| Temporal Sequences by Delayed Synapses | p. 226 |
| A simple generalization and its motivation | p. 226 |
| Dynamics with fast and slow synapses | p. 229 |
| Simulation examples of sequence recall | p. 231 |
| Adiabatically varying energy landscapes | p. 235 |
| Bi-phasic oscillations and CPG's | p. 238 |
| Tentative Steps into Abstract Computation | p. 239 |
| The attempt to reintroduce structured operations | p. 239 |
| Ann counting chimes | p. 241 |
| Counting network - an exercise in connectionist programming | p. 241 |
| The network | p. 243 |
| Its dynamics | p. 245 |
| Simulations | p. 248 |
| Reflections on associated cognitive psychology | p. 251 |
| Sequences Without Synaptic Delays | p. 253 |
| Basic oscillator - origin of cognitive time scale | p. 253 |
| Behavior in the absence of noise | p. 255 |
| The role of noise | p. 256 |
| Synaptic structure and underlying dynamics | p. 259 |
| Network storing sequence with several patterns | p. 262 |
| Appendix: Elaborate Temporal Sequences | p. 262 |
| Temporal sequences by time averaged synaptic inputs | p. 262 |
| Temporal sequences without errors | p. 266 |
| Bibliography | p. 267 |
| Storage Capacity of ANN's | p. 271 |
| Motivation and general considerations | p. 271 |
| Different measures of storage capacity | p. 271 |
| Storage capacity of human brains | p. 273 |
| Intrinsic interest in high storage | p. 275 |
| List of results | p. 275 |
| Statistical Estimates of Storage | p. 278 |
| Statistical signal to noise analysis | p. 278 |
| Absolute informational bounds on storage capacity | p. 283 |
| Coupling (synaptic efficacies) for optimal storage | p. 285 |
| Theory Near Memory Saturation | p. 289 |
| Mean-field equations with replica symmetry | p. 289 |
| Retrieval in the absence of fast noise | p. 294 |
| Analysis of the T = 0 equations | p. 299 |
| Memory Saturation with Noise and Fields | p. 304 |
| A tour in the T-[alpha] phase diagram | p. 304 |
| Effect of external fields - thresholds and PSP's | p. 308 |
| Fields coupled to several patterns | p. 311 |
| Some technical details related to phase diagrams | p. 312 |
| Balance Sheet for Standard ANN | p. 315 |
| Limiting framework and analytic consequences | p. 315 |
| Finite-size effects and basins of attraction: simulations | p. 318 |
| Beyond the Memory Blackout Catastrophe | p. 324 |
| Bounded synapses and palimpsest memory | p. 324 |
| The 7 [plus or minus] 2 rule and palimpsest memories | p. 328 |
| Appendix: Replica Symmetric Theory | p. 330 |
| The replica method | p. 330 |
| The free-energy and the mean-field equations | p. 332 |
| Marginal storage and palimpsests | p. 339 |
| Bibliography | p. 342 |
| Robustness - Getting Closer to Biology | p. 345 |
| Synaptic Noise and Synaptic Dilution | p. 345 |
| Two meanings of robustness | p. 345 |
| Noise in synaptic efficacies | p. 347 |
| Random symmetric dilution of synapses | p. 352 |
| Non-Linear Synapses and Limited Analog Depth | p. 355 |
| Place and role of non-linear synapses | p. 355 |
| Properties of networks with clipped synapses | p. 357 |
| Non-linear storage and the noisy equivalent | p. 359 |
| Clipping at low storage level | p. 362 |
| Random vs. Functional Synaptic Asymmetry | p. 363 |
| Random asymmetry and performance quality | p. 363 |
| Asymmetry, noise and spin-glass suppression | p. 366 |
| Neuronal specificity of synapses - Dale's law | p. 368 |
| Extreme asymmetric dilution | p. 370 |
| Functional asymmetry | p. 375 |
| Effective Cortical Cycle Times | p. 375 |
| Slow bursts and relative refractory period | p. 375 |
| Neuronal memory and expanded scenario | p. 377 |
| Simplified scenario for relative refractory period | p. 378 |
| Appendix: Technical Details | p. 380 |
| Digression - the mean-field equations | p. 380 |
| Dilution requirement | p. 384 |
| Bibliography | p. 385 |
| Memory Data Structures | p. 387 |
| Biological and Computational Motivation | p. 387 |
| Low mean activity level and background-foreground asymmetry | p. 387 |
| Hierarchies for biology and for computation | p. 388 |
| Local Treatment of Low Activity Patterns | p. 389 |
| Demise of naive standard model | p. 389 |
| Modified ANN and a plague of spurious states | p. 391 |
| Constrained dynamics - monitoring thresholds | p. 396 |
| Properties of the constrained biased network | p. 398 |
| Quantity of information in an ANN with low activity | p. 403 |
| More effective storage of low activity (sparse) patterns | p. 405 |
| Hierarchical Data Structures in a Single Network | p. 409 |
| Early proposals | p. 409 |
| Explicit construction of hierarchy in a single ANN | p. 410 |
| Properties of hierarchy in a single network | p. 412 |
| Prosopagnosia and learning class properties | p. 412 |
| Multy-ancestry with many generations | p. 414 |
| Hierarchies in Multi-ANN: Generalization First | p. 418 |
| Organization of the data and the networks | p. 418 |
| Hierarchical dynamics | p. 420 |
| Hierarchy for image vector quantization | p. 422 |
| Appendix: Technical Details for Biased Patterns | p. 423 |
| Noise estimates for biased patterns | p. 423 |
| Mean-field equations in noiseless biased network | p. 424 |
| Retrieval entropy in biased network | p. 424 |
| Mean-square noise in low activity network | p. 425 |
| Bibliography | p. 426 |
| Learning | p. 428 |
| The Context of Learning | p. 428 |
| General Comments and a limited scope | p. 428 |
| Modes, time scales and other constraints | p. 430 |
| The need for learning modes | p. 432 |
| Results for learning in learning modes | p. 433 |
| Learning in Modes | p. 434 |
| Perceptron learning | p. 434 |
| ANN learning by perceptron algorithm | p. 438 |
| Local learning of the Kohonen synaptic matrix | p. 441 |
| Natural Learning - Double Dynamics | p. 443 |
| General features | p. 443 |
| Learning in a network of physiological neurons | p. 444 |
| Learning to form associations | p. 447 |
| Memory generation and maintenance | p. 450 |
| Technical Details in Learning Models | p. 455 |
| Local Iterative Construction of Projector Matrix | p. 455 |
| The free energy and the correlation function | p. 458 |
| Bibliography | p. 458 |
| Hardware Implementations of Neural Networks | p. 461 |
| Situating Artificial Neural Networks | p. 461 |
| The role of hardware implementations | p. 461 |
| Motivations for different designs | p. 462 |
| The VLSI Neural Network | p. 465 |
| High density high speed integrated chip | p. 465 |
| Smaller, more flexible electronic ANN's | p. 469 |
| The Electro-Optical ANN | p. 474 |
| Shift Register (CCD) Implementation | p. 477 |
| Bibliography | p. 479 |
| Glossary | p. 481 |
| Index | p. 487 |
| Table of Contents provided by Syndetics. All Rights Reserved. |
ISBN: 9780521421249
ISBN-10: 0521421241
Published: 21st December 1992
Format: Paperback
Language: English
Number of Pages: 524
Audience: Professional and Scholarly
Publisher: Cambridge University Press
Country of Publication: GB
Dimensions (cm): 22.86 x 15.24 x 2.97
Weight (kg): 0.71
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