时间统计在情境依赖强化学习中经验迁移中的作用

Oussama H. Hamid
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引用次数: 10

摘要

强化学习(RL)是一种基于经验学习的最优行为控制算法理论。这一领域中被广泛讨论的两个问题是时间信用分配问题和经验转移问题。时间信用分配问题假设,由于延迟奖励,决定一个行为是好是坏可能不会立即完成。转移经验的问题研究的是经验如何被概括和从一个熟悉的环境中转移到一个陌生的环境中,在那里它可能是有用的。我们提出了一个控制器,用于在上下文相关的强化学习范式中建模这种灵活性。所设计的控制器结合了两种选择的完美学习算法。在第一种选择中,奖励是通过在时间序列中呈现的单个物体来预测的。在第二种选择中,奖励是基于连续成对的物体来预测的。在确定性时间序列和随机时间序列上的仿真表明,只有在确定性时间序列中,才能检索到先前获得的上下文。这表明时间序列信息在经验的泛化和转移中起着重要作用。
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The role of temporal statistics in the transfer of experience in context-dependent reinforcement learning
Reinforcement learning (RL) is an algorithmic theory for learning by experience optimal action control. Two widely discussed problems within this field are the temporal credit assignment problem and the transfer of experience. The temporal credit assignment problem postulates that deciding whether an action is good or bad may not be done upon right away because of delayed rewards. The problem of transferring experience investigates the question of how experience can be generalized and transferred from a familiar context, where it was acquired, to an unfamiliar context, where it may, nevertheless, prove helpful. We propose a controller for modelling such flexibility in a context-dependent reinforcement learning paradigm. The devised controller combines two alternatives of perfect learner algorithms. In the first alternative, rewards are predicted by individual objects presented in a temporal sequence. In the second alternative, rewards are predicted on the basis of successive pairs of objects. Simulations run on both deterministic and random temporal sequences show that only in case of deterministic sequences, a previously acquired context could be retrieved. This suggests a role of temporal sequence information in the generalization and transfer of experience.
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