The chaotic self-organizing map
نویسندگان
چکیده
A chaotic self-organizing map can be produced by replacing the linear neural units of the conventional selforganizing map with neural units capable of producing chaos. The introduction of chaos into the selforganizing map is shown to improve the ability of the network to cluster input patterns. output converges to a single non-zero value. As g is increased beyond 0.75 the output begins to oscillate first between 2 values, then 4 values, then 8 values and so on, until for g > 0.89 the output becomes chaotic.
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