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A Deep Reinforcement Learning Approach for Early Classification of Time Series

机译:时间序列早期分类的深度强化学习方法

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In many real-world applications, ranging from predictive maintenance to personalized medicine, early classification of time series data is of paramount importance for supporting decision makers. In this article, we address this challenging task with a novel approach based on reinforcement learning. We introduce an early classifier agent, an end-to-end reinforcement learning agent (deep Q-network, DQN) [1] able to perform early classification in an efficient way. We formulate the early classification problem in a reinforcement learning framework: we introduce a suitable set of states and actions but we also define a specific reward function which aims at finding a compromise between earliness and classification accuracy. While most of the existing solutions do not explicitly take time into account in the final decision, this solution allows the user to set this trade-off in a more flexible way. In particular, we show experimentally on datasets from the UCR time series archive [2] that this agent is able to continually adapt its behavior without human intervention and progressively learn to compromise between accurate and fast predictions.
机译:在从预测性维护到个性化医学的许多实际应用中,时间序列数据的早期分类对于支持决策者至关重要。在本文中,我们通过一种基于强化学习的新颖方法来解决这一具有挑战性的任务。我们介绍了一种早期分类器代理,即一种能够以有效方式进行早期分类的端到端强化学习代理(深度Q网络,DQN)[1]。我们在强化学习框架中制定了早期分类问题:我们引入了一组合适的状态和动作,但是我们还定义了一个特定的奖励函数,旨在发现早期性和分类准确性之间的折衷。尽管大多数现有解决方案在最终决策中并未明确考虑时间,但该解决方案允许用户以更灵活的方式进行权衡。特别是,我们在UCR时间序列档案库的数据集上进行了实验[2],表明该代理能够在没有人工干预的情况下持续适应其行为,并逐步学会在准确的预测与快速的预测之间做出折衷。

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