结合维度注意和工作记忆对部分可观察强化学习问题的好处

Ngozi Omatu, Joshua L. Phillips
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引用次数: 0

摘要

神经科学为构建人工智能时使用的新型算法和架构提供了丰富的灵感来源,以及由此产生的生物学上合理的方法,这些方法提供了正式的、可测试的大脑功能模型。工作记忆工具包(WMtk)的开发是为了帮助将基于人工神经网络(ANN)的工作记忆计算神经科学模型集成到强化学习(RL)代理中,减轻了人工神经网络设计的细节,并提供了一个简单的符号编码接口。虽然WMtk允许强化学习代理在部分可观察领域表现良好,但它需要程序员对感官信息进行预过滤:在其他认知架构中,这项任务通常委托给维度注意机制。为了填补这一空白,我们为WMtk开发并测试了一种生物学上合理的维度注意力过滤器,并使用部分可观察的1D迷宫任务验证了模型的性能。我们发现,注意力过滤器通过两种方式改善学习行为:1)在短期内加速学习,在训练早期;2)制定紧急替代策略,优化长期表现。
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Benefits of combining dimensional attention and working memory for partially observable reinforcement learning problems
Neuroscience provides a rich source of inspiration for new types of algorithms and architectures to employ when building AI and the resulting biologically-plausible approaches that provide formal, testable models of brain function. The working memory toolkit (WMtk), was developed to assist the integration of an artificial neural network (ANN)-based computational neuroscience model of working memory into reinforcement learning (RL) agents, mitigating the details of ANN design and providing a simple symbolic encoding interface. While the WMtk allows RL agents to perform well in partially-observable domains, it requires prefiltering of sensory information by the programmer: a task often delegated to dimensional attention mechanisms in other cognitive architectures. To fill this gap, we develop and test a biologically-plausible dimensional attention filter for the WMtk and validate model performance using a partially-observable 1D maze task. We show that the attention filter improves learning behavior in two ways by: 1) speeding up learning in the short-term, early in training and 2) developing emergent alternative strategies which optimize performance over the long-term.
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