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Re-Evaluation of Attractor Neural Network Model to Explain Double Dissociation in Semantic Memory Disorder

机译:吸引人神经网络模型的重新评估以解释语义记忆障碍中的双重解离

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Structure of semantic memory was investigated in the way of neural network simulations in detail. In the literature, it is well-known that brain damaged patients often showed category specific disorder in various cognitive neuropsychological tasks like picture naming, categorisation, identification tasks and so on. In order to describe semantic memory disorder of brain damaged patients, the attractor neural network model originally proposed Hinton and Shallice (1991) was employed and was tried to re-evaluate the model performance. Especially, in order to answer the question about organization of semantic memory, how our semantic memories are organized, computer simulations were conducted. After the model learned data set (Tyler, Moss, Durrant-Peatfield, & Levy, 2000), units in hidden and cleanup layers were removed and observed its performances. The results showed category specificity. This model could also explain the double dissociation phenomena. In spite of the simplicity of its architecture, the attractor neural network might be considered to mimic human behavior in the meaning of semantic memory organization and its disorder. Although this model could explain various phenomenon in cognitive neuropsychology, it might become obvious that this model had one limitation to explain human behavior. As far as investigation in this study, asymmetry in category specificity between animate and inanimate objects might not be explained on this model without any additional assumptions. Therefore, further studies must be required to improve our understanding for semantic memory organisation.
机译:通过神经网络仿真的方法详细研究了语义记忆的结构。在文献中,众所周知,脑部受损的患者通常在各种认知神经心理学任务(例如图片命名,分类,识别任务等)中表现出特定类别的障碍。为了描述脑损伤患者的语义记忆障碍,采用了最初由Hinton和Shallice(1991)提出的吸引子神经网络模型,并试图重新评估该模型的性能。特别地,为了回答关于语义记忆的组织,我们的语义记忆如何组织的问题,进行了计算机模拟。在模型学习到数据集之后(Tyler,Moss,Durrant-Peatfield和Levy,2000),隐藏和清除层中的单元被删除并观察其性能。结果显示类别特异性。该模型也可以解释双重解离现象。尽管其结构简单,但可以将吸引子神经网络视为在语义记忆组织及其混乱的意义上模仿人类行为。尽管此模型可以解释认知神经心理学中的各种现象,但很明显,该模型在解释人类行为方面有一个局限性。就本研究中的调查而言,没有任何其他假设,就可能无法在该模型上解释有生命和无生命的对象之间类别特异性的不对称性。因此,必须进一步研究以增进我们对语义记忆组织的理解。

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