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Monostable Controllers for Adaptive Behaviour

机译:单稳态控制器的自适应行为

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Recent artificial neural networks for machine learning have exploited transient dynamics around globally stable attractors, inspired by the properties of cortical microcolumns. Here we explore whether similarly constrained neural network controllers can be exploited for embodied, situated adaptive behaviour. We demonstrate that it is possible to evolve globally stable neurocontrollers containing a single basin of attraction, which nevertheless sustain multiple modes of behaviour. This is achieved by exploiting interaction between environmental input and transient dynamics. We present results that suggest that this globally stable regime may constitute an evolvable and dynamically rich subset of recurrent neural network configurations, especially in larger networks. We discuss the issue of scalability and the possibility that there may be alternative adaptive behaviour tasks that are more 'attractor hungry'.
机译:受皮质微柱特性的启发,最近的用于机器学习的人工神经网络已利用全局稳定吸引子周围的瞬态动力学。在这里,我们探索是否可以将类似约束的神经网络控制器用于具体的,定位的自适应行为。我们证明,有可能发展出包含单个吸引盆的全球稳定神经控制器,但仍维持多种行为模式。这是通过利用环境输入和瞬态动力学之间的相互作用来实现的。我们提出的结果表明,这种全局稳定的机制可能构成循环神经网络配置的可演化且动态丰富的子集,尤其是在较大的网络中。我们讨论了可伸缩性的问题,以及是否存在替代的适应性行为任务更加“吸引人”的可能性。

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