论探索对现实生活中学习算法的重要性

Steffen Gracla, C. Bockelmann, A. Dekorsy
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引用次数: 0

摘要

数据驱动学习算法的质量随着可用数据的质量而显著扩大。生成良好数据的最直接的方法之一是智能地对数据源进行采样或探索。智能采样可以减少获取样本的成本,减少学习中的计算成本,并使学习算法能够适应不可预见的事件。在本文中,我们教了三个具有不同探索策略的深度q网络(DQN)来解决刺穿URLLC消息正在进行的传输的问题。与标准的、简单的ϵ-greedy勘探方法相比,我们展示了两种自适应勘探候选方法(基于方差和基于最大熵的勘探)的效率。
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On the Importance of Exploration for Real Life Learned Algorithms
The quality of data driven learning algorithms scales significantly with the quality of data available. One of the most straight-forward ways to generate good data is to sample or explore the data source intelligently. Smart sampling can reduce the cost of gaining samples, reduce computation cost in learning, and enable the learning algorithm to adapt to unforeseen events. In this paper, we teach three Deep Q-Networks (DQN) with different exploration strategies to solve a problem of puncturing ongoing transmissions for URLLC messages. We demonstrate the efficiency of two adaptive exploration candidates, variance-based and Maximum Entropy-based exploration, compared to the standard, simple ϵ-greedy exploration approach.
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