Biologically-based learning in the ARBIB autonomous robot

R. Damper, T. W. Scutt
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引用次数: 4

Abstract

We describe the autonomous robot ARBIB, which uses biologically-motivated forms of learning to adapt to its environment. The "nervous system" of ARBIB has a nonhomogeneous population of spiking neurons, and uses both nonassociative (habituation, sensitization) and associative (classical conditioning) forms of learning to modify pre-existing ("hard-wired") reflexes. As a result of interaction with its environment, interesting and "intelligent" light-seeking and collision-avoidance behaviors emerge which were not pre-programmed into the robot-or "animat". These behaviors are similar to those described by other workers who have generally used behaviorally-motivated reinforcement learning rather than biologically-based associative learning. The complexity of observed behavior is remarkable given the extreme simplicity of ARBIB's "nervous system", having just 33 neurons. It does not even have a brain! We take this to indicate that great potential exists to explore further "the animat path to AI".
基于生物学的ARBIB自主机器人学习
我们描述了自主机器人ARBIB,它使用生物激励的学习形式来适应其环境。ARBIB的“神经系统”具有非同质的尖峰神经元群,并使用非联想(习惯化,敏化)和联想(经典条件反射)形式的学习来修改预先存在的(“硬连接”)反射。由于与环境的互动,有趣而“智能”的寻光和避碰行为出现了,而这些行为并没有被预先编程到机器人或“动物”中。这些行为与其他工人所描述的相似,他们通常使用行为动机强化学习,而不是基于生物的联想学习。鉴于ARBIB的“神经系统”极其简单,只有33个神经元,观察到的行为的复杂性是惊人的。它甚至没有大脑!我们认为这表明进一步探索“通往人工智能的动物之路”存在巨大潜力。
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