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Encoding and Recall of Spatio-Temporal Episodic Memory in Real Time

机译:在实时编码和召回时空颞兴趣记忆

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Episodic memory enables a cognitive system to improve its performance by reflecting upon past events. In this paper, we propose a computational model called STEM for encoding and recall of episodic events together with the associated contextual information in real time. Based on a class of self-organizing neural networks, STEM is designed to learn memory chunks or cognitive nodes, each encoding a set of co-occurring multi-modal activity patterns across multiple pattern channels. We present algorithms for recall of events based on partial and inexact input patterns. Our empirical results based on a public domain data set show that STEM displays a high level of efficiency and robustness in encoding and retrieval with both partial and noisy search cues when compared with a state-of-the-art associative memory model.
机译:插值记忆使认知系统能够通过反映过去的事件来改善其性能。在本文中,我们提出了一种称为茎的计算模型,用于实时地与相关的上下文信息一起编码和召回扩展事件。基于一类自组织神经网络,阀杆旨在学习记忆块或认知节点,每个节点跨多个模式信道编码一组共同发生的多模态活动模式。我们提供基于部分和不精确输入模式的回忆事件的算法。我们基于公共领域数据集的经验结果表明,与最先进的关联内存模型相比,阀杆在编码和检索时,在编码和检索方面的效率和稳健性,当与最先进的关联内存模型相比,偏差和噪声搜索线程。

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