Diversity of Developmental Trajectories in Natural and Artificial Intelligence

Abstract

It may be of interest to see what can be done by giving a robot no innate knowledge about its environment or its sensors or effectors and only a totally general learning mechanism, such as reinforcement learning, or some information-reduction algorithm, to see what it can learn in various environments. However, it is clear that that is not how biological evolution designs animals, as McCarthy states

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Aaron Sloman
University of Birmingham

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