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首页> 外文期刊>PLoS One >Introducing neuromodulation in deep neural networks to learn adaptive behaviours
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Introducing neuromodulation in deep neural networks to learn adaptive behaviours

机译:引入深神经网络中的神经调节,学习自适应行为

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Animals excel at adapting their intentions, attention, and actions to the environment, making them remarkably efficient at interacting with a rich, unpredictable and ever-changing external world, a property that intelligent machines currently lack. Such an adaptation property relies heavily on cellular neuromodulation , the biological mechanism that dynamically controls intrinsic properties of neurons and their response to external stimuli in a context-dependent manner. In this paper, we take inspiration from cellular neuromodulation to construct a new deep neural network architecture that is specifically designed to learn adaptive behaviours. The network adaptation capabilities are tested on navigation benchmarks in a meta-reinforcement learning context and compared with state-of-the-art approaches. Results show that neuromodulation is capable of adapting an agent to different tasks and that neuromodulation-based approaches provide a promising way of improving adaptation of artificial systems.
机译:动物擅长调整他们的意图,注意力和对环境的行动,使他们在与富裕,不可预测的和不断变化的外部世界互动时互动,这是智能机器目前缺乏的财产。这种适应性严重依赖于细胞神经调节,这种生物学机制动态地控制神经元的内在特性及其对外部刺激的响应以依赖性方式。在本文中,我们从细胞神经调节中获取灵感,以构建一种专门设计用于学习自适应行为的新型神经网络架构。网络适​​配能力在元增强学习背景中的导航基准测试并与最先进的方法进行了测试。结果表明,神经调节能够将药剂适应不同的任务,并且基于神经调节的方法提供了改善人工系统适应的有希望的方法。

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