Teaching Homing Behaviour to a Neural State Machine
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چکیده
0 10 20 30 E Fig 5. Observed convergence of location hypothesis Conclusions A logical sparsely connected autoassociative network (GNU) was used to model homing behaviour of an organism in an environmental simulation. Three phases of homing behaviour were identified in the simulation results. A location error measure was proposed that was seen to characterise the different phases of homing behaviour, namely homing, misguided homing and random wandering.
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