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Computational Models Can Replicate The Capacity Of Human Recognition Memory

机译:计算模型可以复制人类识别记忆的能力

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The capacity of human recognition memory was investigated by Standing, who presented several groups of participants with different numbers of pictures (from 20 to 10 000), and subsequently tested their ability to distinguish between previously presented and novel pictures. The estimated number of pictures retained in recognition memory by different groups when plotted as a logarithmic function of the number of pictures presented formed a straight line, representing a power-law relationship. Here, we investigate if published models of familiarity discrimination can replicate Standing's results. We first consider a simplified assumption that visual stimuli are represented by uncorrelated patterns of firing of visual neurons providing input to the familiarity discrimination network. We show that for this case three models (Familiarity discrimination based on Energy (FamE), Anti-Hebbian and Info-max) can reproduce the observed power-law relationship when their synaptic weights are appropriately initialized. For more realistic assumptions on neural representation of stimuli, the FamE model is no longer able to reproduce the power-law relationship in simulations, while the Anti-Hebbian and Info-max can reproduce it. Nevertheless, the slopes of the power-law relationships produced by the models in all simulations differ from that observed by Standing. We discuss possible reasons for this difference, including separate contributions of familiarity and recollection processes, and describe experimentally testable predictions based on our analysis.
机译:站立研究了人类识别记忆的能力,他向几组参与者展示了不同数量的图片(从20到10000),随后测试了他们区分先前展示的图片和新颖图片的能力。当作为呈现的图像数量的对数函数作图时,由不同组保留在识别存储器中的图像的估计数量形成一条直线,代表幂律关系。在这里,我们调查发布的熟悉度歧视模型是否可以复制Standing的结果。我们首先考虑一个简化的假设,即视觉刺激是由不相关的视觉神经元发射模式来表示的,这些视觉神经元为熟悉程度识别网络提供了输入。我们表明,在这种情况下,当适当初始化其突触权重时,三个模型(基于能量的熟悉度判别(FamE),Anti-Hebbian和Info-max)可以重现观察到的幂律关系。对于关于刺激的神经表示的更现实的假设,FamE模型不再能够在仿真中重现幂律关系,而Anti-Hebbian和Info-max可以重现它。然而,在所有模拟中,模型产生的幂律关系的斜率与Standing观察到的不同。我们讨论了造成这种差异的可能原因,包括熟悉程度和回忆过程的单独贡献,并根据我们的分析描述了可通过实验测试的预测。

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