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Rapid Adaptation with Conditionally Shifted Neurons

机译:随条件转变神经元的快速适应

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We describe a mechanism by which artificial neural networks can learn rapid adaptation - the ability to adapt on the fly, with little data, to new tasks - that we call conditionally shifted neurons. We apply this mechanism in the framework of metalearning, where the aim is to replicate some of the flexibility of human learning in machines. Conditionally shifted neurons modify their activation values with task-specific shifts retrieved from a memory module, which is populated rapidly based on limited task experience. On metalearning benchmarks from the vision and language domains, models augmented with conditionally shifted neurons achieve state-of-the-art results.
机译:我们描述了一种人工神经网络可以学习快速适应的机制 - 能够适应飞行,几乎没有数据到新任务 - 我们称之为条件转移神经元。我们在Metalearning的框架内应用这种机制,其中目的是复制人类学习的一些灵活性。条件移位的神经元通过从存储器模块检索的任务特定换档来修改其激活值,该任务特定的换档基于有限的任务经验迅速填充。关于视觉和语言领域的冶金学习基准,模型加强了有条件地转向神经元,实现最先进的结果。

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