运动能力的自我发展是由于神经网络的成长而被快乐和紧张所加强的

Juan Liu, A. Buller
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引用次数: 5

摘要

我们提出了一种针对紧急运动行为的机器学习新方法。该方法基于一个不断增长的神经网络,该网络最初产生无意义的信号,但后来将奖励信号和准奖励信号与最近的感知和运动活动联系起来,并根据这些数据合并新的细胞并创建新的连接。奖励信号是在一个扮演“快乐中心”角色的设备中产生的,而准奖励信号(代表快乐期望)是由网络本身产生的。该网络使用一个模拟的移动机器人进行测试,该机器人配备了一对马达、一组触摸传感器和一个摄像头。尽管缺乏有用行为的先天连接,机器人在没有外部指导的情况下学会了如何避开障碍物和接近感兴趣的物体,这对生物来说是基本的,通常是传统机器人系统中手工制作的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-development of motor abilities resulting from the growth of a neural network reinforced by pleasure and tensions
We present a novel method of machine learning toward emergent motor behaviors. The method is based on a growing neural network that initially produces senseless signals but later associates rewarding signals and quasi-rewarding signals with recent perceptions and motor activities and, based on these data, incorporates new cells and creates new connections. The rewarding signals are produced in a device that plays a role of a "pleasure center", whereas the quasi-rewarding signals (that represent pleasure expectation) are generated by the network itself. The network was tested using a simulated mobile robot equipped with a pair of motors, a set of touch sensors, and a camera. Despite a lack of innate wiring for a useful behavior, the robot learned without an external guidance how to avoid obstacles and approach an object of interest, which is fundamental for creatures and usually handcrafted in traditional robotic systems
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