1. DETOUR BEHAVIOR IN EVOLVING ROBOTS: ARE INTERNAL REPRESENTATIONS NECESSARY?
- Author
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Domenico Parisi, Guido Tascini, Orazio Miglino, Daniele Denaro, Husbands, Phil and Meyer, Jean-Arcady, Miglino, Orazio, Denaro, D., Tascini, S., and Parisi, D.
- Subjects
Task (computing) ,Artificial neural network ,business.industry ,Computer science ,Control system ,Path (graph theory) ,Robot ,Artificial intelligence ,business - Abstract
Internal representations of the environment are often invoked to explain performance in tasks in which an organism must make a detour around an obstacle to reach a target and the organism can lose sight of the target along the path to the target. By simulating a detour task in evolving populations of robots (Khepera) we show that neural networks with memory units perform better than networks without memory units in this task. However, the content of the memory units need not be interpreted as an internal representation of the position of target. The memory units send a time-varying internally generated input to the network's hidden units that allows the network to generate the appropriate behavior even when there is no external input. Networks without memory units do not have this internal input and this explains their inferior performance.
- Published
- 1998