NIPS 1987:
Denver, CO, USA
Dana Z. Anderson (Ed.):
Neural Information Processing Systems, Denver, Colorado, USA, 1987.
American Institue of Physics 1988, ISBN 0-88318-569-5
- Yaser S. Abu-Mostafa:
Connectivity Versus Entropy.
1-8

- Joshua Alspector, Robert B. Allen, Victor Hu, Srinagesh Satyanarayana:
Stochastic Learning Networks and their Electronic Implementation.
9-21

- Amir F. Atiya:
Learning on a General Network.
22-30

- Les E. Atlas, Toshiteru Homma, Robert J. Marks II:
An Artificial Neural Network for Spatio-Temporal Bipolar Patterns: Application to Phoneme Classification.
31-40

- Pierre Baldi, Santosh S. Venkatesh:
On Properties of Networks of Neuron-Like Elements.
41-51

- Eric B. Baum, Frank Wilczek:
Supervised Learning of Probability Distributions by Neural Networks.
52-61

- William Baxter, Bruce Dow:
Centric Models of the Orientation Map in Primary Visual Cortex.
62-71

- J. Bernasconi:
Analysis and Comparison of Different Learning Algorithms for Pattern Association Problems.
72-81

- Lyle J. Borg-Graham:
Simulations Suggest Information Processing Roles for the Diverse Currents in Hippocampal Neurons.
82-94

- James M. Bower, Amir F. Atiya:
Optimal Neural Spike Classification.
95-102

- James M. Bower, Yiu-Fai Wong, Jashojiban Banik:
Neural Networks for Template Matching: Application to Real-Time Classification of the Action Potentials of Real Neurons.
103-113

- James M. Bower, Matthew A. Wilson:
A Computer Simulation of Olfactory Cortex with Functional Implications for Storage and Retrieval of Olfactory Information.
114-126

- Nathan H. Brown Jr.:
Neural Network Implementation Approaches for the Connection Machine.
127-136

- Jehoshua Bruck, Joseph W. Goodman:
On the Power of Neural Networks for Solving Hard Problems.
137-143

- David J. Burr:
Speech Recognition Experiments with Perceptrons.
144-153

- L. Richard Carley:
Presynaptic Neural Information Processing.
154-163

- John Y. Cheung, Massoud Omidvar:
Mathematical Analysis of Learning Behavior of Neuronal Models.
164-173

- Tzi-Dar Chiueh, Rodney M. Goodman:
A Neural Network Classifier Based on Coding Theory.
174-183

- Philip A. Chou:
The Capacity of the Kanerva Associative Memory is Exponential.
184-191

- Joshua Chover:
Phase Transitions in Neural Networks.
192-200

- Darryl D. Coon, A. G. Unil Perera:
New Hardware for Massive Neural Networks.
201-210

- Amir Dembo, Ofer Zeitouni:
High Density Associative Memories.
211-218

- John S. Denker, Ben S. Wittner:
Network Generality, Training Required, and Precision Required.
219-222

- Mark Derthick, Joe Tebelskis:
'Ensemble' Boltzmann Units have Collective Computational Properties like those of Hopfield and Tank Neurons.
223-232

- Gérard Dreyfus, Isabelle Guyon, Jean-Pierre Nadal, Léon Personnaz:
High Order Neural Networks for Efficient Associative Memory Design.
233-241

- Frank H. Eeckman:
The Sigmoid Nonlinearity in Prepyriform Cortex.
242-248

- Enis Ersü, Henning Tolle:
Hierarchical Learning Control - An Approach with Neuron-Like Associative Memories.
249-261

- Manuel F. Fernández:
On Tropistic Processing and Its Applications.
262-269

- Eberhard E. Fetz:
Correlational Strength and Computational Algebra of Synaptic Connections Between Neurons.
270-277

- Michael Fleisher:
The Hopfield Model with Multi-Level Neurons.
278-289

- Michael T. Gately:
Cycles: A Simulation Tool for Studying Cyclic Neural Networks.
290-296

- Paolo Gaudiano:
Temporal Patterns of Activity in Neural Networks.
297-300

- C. Lee Giles, R. D. Griffin, T. Maxwell:
Encoding Geometric Invariances in Higher-Order Neural Networks.
301-309

- Richard M. Golden:
Probabilistic Characterization of Neural Model Computations.
310-316

- Richard Granger, Jose A. Ambros-Ingerson, Howard Henry, Gary Lynch:
Partitioning of Sensory Data by a Cortical Network.
317-337

- Dan W. Hammerstrom:
The Connectivity Analysis of Simple Association.
338-347

- Stephen Jose Hanson, David J. Burr:
Minkowski-r Back-Propagation: Learning in Connectionist Models with Non-Euclidian Error Signals.
348-357

- Geoffrey E. Hinton, James L. McClelland:
Learning Representations by Recirculation.
358-366

- James C. Houk:
Schema for Motor Control Utilizing a Network Model of the Cerebellum.
367-376

- Ken Hsu, David Brady, Demetri Psaltis:
Experimental Demonstrations of Optical Neural Computers.
377-386

- William Y. Huang, Richard Lippmann:
Neural Net and Traditional Classifiers.
387-396

- Ju-Seog Jang, Soo-Young Lee, Sang-Yung Shin:
An Optimization Network for Matrix Inversion.
397-401

- Jagmeet S. Kanwal:
How the Catfish Tracks Its Prey: An Interactive 'Pipelined' Processing System May Direct Foraging via Reticulospinal Neurons.
402-411

- James D. Keeler:
Capacity for Patterns and Sequences in Kanerva's SDM as Compared to Other Associative Memory Models.
412-421

- Christof Koch, Jin Luo, Carver Mead, James Hutchinson:
Computing Motion Using Resistive Networks.
422-431

- Anthony Kuh:
Performance Measures for Associative Memories that Learn and Forget.
432-441

- Alan S. Lapedes, Robert M. Farber:
How Neural Nets Work.
442-456

- Clifford Lau, Vicente Honrubia:
Distributed Neural Information Processing in the Vestibulo-Ocular System.
457-466

- Dietrich Lehmann, D. Brandeis, A. Horst, H. Ozaki, I. Pal:
Spontaneous and Information-Triggered Segments of Series of Human Brain Electric Field Maps.
467-473

- Harrison MonFook Leong:
Optimization with Artificial Neural Network Systems: A Mapping Principle and a Comparison to Gradient Based Methods.
474-484

- Ralph Linsker:
Towards an Organizing Principle for a Layered Perceptual Network.
485-494

- Hendricus G. Loos:
Reflexive Associative Memories.
495-504

- Bruce A. MacDonald:
Connecting to the Past.
505-514

- Stuart Mackie, Hans Peter Graf, Daniel B. Schwartz, John S. Denker:
Microelectronic Implementations of Connectionist Neural Networks.
515-523

- Charles M. Marcus, R. M. Westervelt:
Basins of Attraction for Electronic Neural Networks.
524-533

- Robert J. Marks II, Les E. Atlas, Seho Oh, James A. Ritcey:
The Performance of Convex Set Projection Based Neural Networks.
534-543

- Bartlett W. Mel:
MURPHY: A Robot that Learns by Doing.
544-553

- Anthony N. Michel, Jay A. Farrell, Wolfgang Porod:
Stability Results for Neural Networks.
554-563

- Alexander Moopenn, H. Langenbacher, A. P. Thakoor, S. K. Khanna:
Programmable Synaptic Chip for Electronic Neural Networks.
564-572

- Alan F. Murray, Anthony V. W. Smith, Zoe F. Butler:
Bit-Serial Neural Networks.
573-583

- André J. Noest:
Phasor Neural Networks.
584-591

- Thomas Petsche, Bradley W. Dickinson:
A Trellis-Structured Neural Network.
592-601

- Fernando J. Pineda:
Generalization of Back propagation to Recurrent and Higher Order Neural Networks.
602-611

- John C. Platt, Alan H. Barr:
Constrained Differential Optimization.
612-621

- Tomaso Poggio, Anya C. Hurlbert:
Learning a Color Algorithm from Examples.
622-631

- A. J. Robinson, F. Failside:
Static and Dynamic Error Propagation Networks with Application to Speech Coding.
632-641

- Bruce E. Rosen, James M. Goodwin, Jacques J. Vidal:
Learning by State Recurrence Detection.
642-651

- Ronald Rosenfeld, David S. Touretzky:
Scaling Properties of Coarse-Coded Symbol Memories.
652-661

- F. H. Schuling, H. A. K. Mastebroek, W. H. Zaagman:
An Adaptive and Heterodyne Filtering Procedure for the Imaging of Moving Objects.
662-673

- Christopher L. Scofield, Douglas L. Reilly, Charles Elbaum, Leon N. Cooper:
Pattern Class Degeneracy in an Unrestricted Storage Density Memory.
674-682

- Christopher L. Scofield:
A Mean Field Theory of Layer IV of Visual Cortex and Its Application to Artificial Neural Networks.
683-692

- J. F. Shepanski, S. A. Macy:
Teaching Artificial Neural Systems to Drive: Manual Training Techniques for Autonomous Systems.
693-700

- Ralph M. Siegel:
Discovering Structure from Motion in Monkey, Man and Machine.
701-708

- Ronald H. Silverman, Andrew S. Noetzel:
Time-Sequential Self-Organization of Hierarchical Neural Networks.
709-714

- Alexander Singer, John P. Donoghue:
A Computer Simulation of Cerebral Neocortex: Computational Capabilities of Nonlinear Neural Networks.
715-729

- Paul Smolensky:
Analysis of Distributed Representation of Constituent Structure in Connectionist Systems.
730-739

- Andreas Stafylopatis, Marios D. Dikaiakos, D. Kontoravdis:
Spatial Organization of Neural Networks: A Probabilistic Modeling Approach.
740-749

- W. Scott Stornetta, Tad Hogg, Bernardo A. Huberman:
A Dynamical Approach to Temporal Pattern Processing.
750-759

- Guo-Zheng Sun, Yee-Chun Lee, Hsing-Hen Chen:
A Novel Net that Learns Sequential Decision Process.
760-766

- Hisashi Suzuki, Suguru Arimoto:
Self-Organization of Associative Database and Its Applications.
767-774

- Gene A. Tagliarini, Edward W. Page:
A Neural-Network Solution to the Concentrator Assignment Problem.
775-782

- Manoel Fernando Tenorio:
Using Neural Networks to Improve Cochlear Implant Speech Perception.
783-793

- Gerald Tesauro, Terrence J. Sejnowski:
A 'Neural' Network that Learns to Play Backgammon.
794-803

- Sherryl Tomboulian:
Introduction to a System for Implementing Neural Net Connections on SIMD Architectures.
804-813

- Mario P. Vecchi, Jawad A. Salehi:
Neuromorphic Networks Based on Sparse Optical Orthogonal Codes.
814-823

- Jacques J. Vidal, John Haggerty:
Synchronization in Neural Nets.
824-829

- Harry Wechsler, George Lee Zimmerman:
Invariant Object Recognition Using a Distributed Associative Memory.
830-839

- Richard C. Windecker:
Learning in Networks of Nondeterministic Adaptive Logic Elements.
840-849

- Ben S. Wittner, John S. Denker:
Strategies for Teaching Layered Networks Classification Tasks.
850-859

- John L. Wyatt Jr., D. L. Standley:
A Method for the Design of Stable Lateral Inhibition Networks that is Robust in the Presence of Circuit Parasitics.
860-868

Last update Sun May 19 23:20:45 2013
CET by the DBLP Team —
Data released under the ODC-BY 1.0 license — See also our legal information page