Discrete-time cellular neural networks for associative memories: a new design method via iterative learning and forgetting algorithms
1995
In this paper a synthesis procedure of discrete-time Cellular Neural Networks (DTCNN's) for associative memories with iterative learning and forgetting algorithms is developed, by which each pattern to be stored is learnt one at a time and each pattern to be forgotten is deleted one at a time. The proposed approach exploits the properties of pseudo inverse matrices and preserves the local connection feature of DTCNN's.
Keywords:
- Iterative method
- Iterative learning control
- Moore–Penrose pseudoinverse
- Computer science
- Forgetting
- Content-addressable memory
- Algorithm
- Machine learning
- Associative property
- Cellular neural network
- Discrete time and continuous time
- Artificial intelligence
- Theoretical computer science
- Content-addressable storage
- Correction
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