A Silicon Primitive for Competitive Learning
Hsu, David, Figueroa, Miguel, Diorio, Chris
–Neural Information Processing Systems
Competitive learning is a technique for training classification and clustering networks. We have designed and fabricated an 11-transistor primitive, that we term an automaximizing bump circuit, that implements competitive learning dynamics. The circuit performs a similarity computation, affords nonvolatile storage, and implements simultaneous local adaptation and computation. We show that our primitive is suitable for implementing competitive learning in VLSI, and demonstrate its effectiveness in a standard clustering task. 1 Introduction Competitive learning is a family of neural learning algorithms that has proved useful for training many classification and clustering networks [1]. In these networks, a neuron's synaptic weight vector typically represents a tight cluster of data points.
Neural Information Processing Systems
Dec-31-2001
- Country:
- North America > United States > California (0.28)
- Industry:
- Semiconductors & Electronics (0.36)
- Technology: