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Scalable Lifelong Learning with Active Task Selection

机译:可扩展的终身学习与活动任务选择

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The recently developed Efficient Lifelong Learning Algorithm (ELLA) acquires knowledge incrementally over a sequence of tasks, learning a repository of latent model components that are sparsely shared between models. ELLA shows strong performance in comparison to other multi-task learning algorithms, achieving nearly identical performance to batch multi-task learning methods while learning tasks sequentially in three orders of magnitude (over 1,000 x) less time. In this paper, we evaluate several curriculum selection methods that allow ELLA to actively select the next task for learning in order to maximize performance on future learning tasks. Through experiments with three real and one synthetic data set, we demonstrate that active curriculum selection allows an agent to learn up to 50% more efficiently than when the agent has no control over the task order.
机译:最近开发的高效终身学习算法(ELLA)通过一系列任务逐步获取知识,学习在模型之间稀疏地共享的潜在模型组件的存储库。与其他多任务学习算法相比,埃拉显示出强烈的性能,在批量多任务学习方法中实现几乎相同的性能,同时在三个数量级(超过1000 x)的时间顺序地依次学习任务。在本文中,我们评估了几种课程选择方法,允许ella主动选择学习的下一个任务,以便最大限度地提高未来学习任务的性能。通过具有三个实际和一个合成数据集的实验,我们证明了主动课程选择允许代理比代理对任务顺序的控制更有效地学习到50%。

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