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Modelling Autobiographical Memory Loss across Life Span

机译:跨越寿命的自传记忆损失建模

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Neurocomputational modelling of long-term memory is a core topic in computational cognitive neuroscience, which is essential towards self-regulating brain-like AI systems. In this paper, we study how people generally lose their memories and emulate various memory loss phenomena using a neurocomputational autobiographical memory model. Specifically, based on prior neurocognitive and neuropsychology studies, we identify three neural processes, namely overload, decay and inhibition, which lead to memory loss in memory formation, storage and retrieval, respectively. For model validation, we collect a memory dataset comprising more than one thousand life events and emulate the three key memory loss processes with model parameters learnt from memory recall behavioural patterns found in human subjects of different age groups. The emulation results show high correlation with human memory recall performance across their life span, even with another population not being used for learning. To the best of our knowledge, this paper is the first research work on quantitative evaluations of autobiographical memory loss using a neurocomputational model.
机译:长期记忆的神经科学建模是计算认知神经科学中的核心话题,这对于自我调节脑的AI系统至关重要。在本文中,我们研究人们通常如何失去记忆并使用神经计算机自传存储器模型模拟各种记忆损失现象。具体地,基于先前的神经认知和神经心理学研究,我们确定了三个神经过程,即过载,衰减和抑制,这导致存储器形成,储存和检索中的记忆损失。对于模型验证,我们收集包含多于一千个生命事件的内存数据集,并模拟来自来自不同年龄组人类主体的内存召回行为模式的模型参数的三个密钥存储器丢失过程。仿真结果表现出与人类内存召回性能的高相关,即使没有用于学习的另一个人口也是如此。据我们所知,本文是使用神经计算机模型进行自传记忆损失定量评估的第一个研究工作。

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