Pattern classification and associative recall by neural networks
The first part of this dissertation discusses a new classifier based on a multilayer feed-forward network architecture. The main idea is to map irregularly-distributed prototypes in a classification problem to codewords that are organized in some way. Then the pattern classification problem is transformed into a threshold decoding problem, which is easily solved using simple hard-limiter neurons. At first the author proposes the new model and introduce two families of good internal representation codes. Then some analyses and software simulation concerning the storage capacity of this new model are done. The results show that the new classifier is much better than the classifier based on the Hopfield model in terms of both the storage capacity and the ability to classify correlated prototypes. A general model for neural network associative memories with a feedback structure is proposed. Many existing neural network associative memories can be expressed as special cases of this general model. Among these models, there is a class of associative memories, called correlation associative memories, that are capable of storing a large number of memory patterns. If the function used in the evolution equation is monotonically nondecreasing, then a correlation associative memory can be proved to be asymptotically stable in both the synchronous and asynchronous updating modes. Of these correlation associative memories, one stands out because of its VLSI implementation feasibility and large storage capacity. This memory uses the exponentiation function in its evolution equation; hence it is called exponential correlation associative memory (ECAM).
- Research Organization:
- California Inst. of Tech., Pasadena, CA (USA)
- OSTI ID:
- 6093527
- Resource Relation:
- Other Information: Thesis (Ph. D.)
- Country of Publication:
- United States
- Language:
- English
Similar Records
Storing and retrieving data in a parallel distributed-memory system. Doctoral thesis
Storing and retrieving data in a parallel distributed-memory system. Doctoral thesis
Related Subjects
NEURAL NETWORKS
MATHEMATICAL MODELS
PATTERN RECOGNITION
CLASSIFICATION
COMPUTER NETWORKS
IMAGE PROCESSING
IMPLEMENTATION
INTEGRATED CIRCUITS
MAPPING
MEMORY DEVICES
PERFORMANCE
ELECTRONIC CIRCUITS
MICROELECTRONIC CIRCUITS
PROCESSING
990200* - Mathematics & Computers