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Family bootstrapping: A genetic transfer learning approach for onsetting the evolution for a set of related robotic tasks

机译:家庭自举:一种遗传转移学习方法,用于启动一系列相关机器人任务的进化

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Studies on the bootstrap problem in evolutionary robotics help lifting the barrier from the way to evolve robots for complex tasks. It remains an open question, though, how to reduce the need for designer knowledge when devising a bootstrapping approach for any particular complex task. Transfer learning may help reducing this need and support the evolution of solutions to complex tasks, through task relatedness. Relying on the commonalities of similar tasks, we introduce a new concept of Family Bootstrapping (FB). FB refers to the creation of biased ancestors that are expected to onset the evolution of "a family" of solutions not just for one task, but for a set of related robot tasks. A general FB paradigm is outlined and the unique potential of the proposed concept is discussed. To highlight the validity of the FB concept, a simple demonstration case, concerning the evolution of neuro-controllers for a set of robot navigation tasks, is provided. The paper is concluded with some suggestions for future research.
机译:对进化型机器人学中的引导问题的研究有助于消除发展复杂任务的机器人的障碍。但是,在为任何特定的复杂任务设计自举方法时,如何减少对设计人员知识的需求仍是一个悬而未决的问题。转移学习可以通过任务相关性来帮助减少这种需求,并支持针对复杂任务的解决方案的发展。依靠类似任务的共性,我们引入了家庭自举(FB)的新概念。 FB指的是有偏见的祖先的创建,这些祖先有望引发解决方案“家族”的发展,不仅针对一项任务,而且针对一系列相关的机器人任务。概述了一般的FB范例,并讨论了所提出概念的独特潜力。为了强调FB概念的有效性,提供了一个简单的演示案例,该案例涉及一组机器人导航任务中神经控制器的演变。本文的结尾对未来的研究提出了一些建议。

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