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The role of sparsely distributed representations in familiarity recognition of verbal and olfactory materials

机译:稀疏分布式表示在熟悉言语和嗅觉材料中的作用

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摘要

We present the generalized signal detection theory (GSDT), where familiarity is described by a sparse binomial distribution of binary node activity rather than by normal distribution of familiarity. Items are presented in a distributed representation, where each node receives either noise only, or signal and noise. An old response (i.e., a yes response) is made if at least one node receives signal plus noise that is larger than the activation threshold, and item variability is determined by the distribution of activated nodes as the threshold is varied. A distinct representation leads to better performance and a lower ratio of new to old item variability, than a more distributed and less distinct representations. Here we apply the GSDT to empirical data on verbal and olfactory memory and suggest that verbal memory relies on a distinct neural item representation, whereas olfactory memory has a fuzzy neural representation leading to poorer memory and inducing a larger ratio of new to old item variability.
机译:我们介绍了广义信号检测理论(GSDT),其中熟悉的二进制节点活动的稀疏二项分布而不是通过熟悉程度的正常分布来描述。项目呈现在分布式表示中,其中每个节点仅接收噪声,或信号和噪声。如果至少一个节点接收到大于激活阈值的信号加噪声,则进行旧响应(即是yes响应),并且由于阈值改变,通过激活节点的分布确定项目可变性。截然不同的表示导致更好的性能和较低的旧项目变异的比例,而不是更具分布式和更少的截然不同的表示。在这里,我们将GSDT应用于言语和嗅觉记忆的经验数据,并建议口头记忆依赖于不同的神经项目表示,而嗅觉记忆具有模糊的神经表示,导致较差的内存并诱导较大的旧物品变异的比率。

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