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编码稀疏性对熟悉度辨别网络容量的有限影响。

The restricted influence of sparseness of coding on the capacity of familiarity discrimination networks.

作者信息

Bogacz Rafal, Brown Malcolm W

机构信息

Department of Computer Science, University of Bristol, Bristol BS8 1UB, UK.

出版信息

Network. 2002 Nov;13(4):457-85.

PMID:12463340
Abstract

Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination aspect of recognition memory. It has been previously shown under selective conditions that neural networks performing familiarity discrimination can achieve very high storage capacity, being able to deal with many times more stimuli than associative memory networks can in associative recall. The capacity of associative memories for recall has been shown to be highly dependent on the sparseness of coding. However, previous work on the networks of Bogacz et al, Norman and O'Reilly and Sohal and Hasselmo that model familiarity discrimination in the perirhinal cortex has not investigated the effects of the sparseness of encoding on capacity. This paper explores how sparseness of coding influences the capacity of each of these published models and establishes that sparse coding influences the capacity of the different models in different ways. The capacity of the Bogacz et al model can be made independent of the sparseness of coding. Capacity increases as coding becomes sparser for a simplified version of the neocortical part of the Norman and O'Reilly model, whereas capacity decreases as coding becomes sparser for a simplified version of the Sohal and Hasselmo model. Thus in general, and in contrast to associative memory networks, sparse encoding results in little or no advantage for the capacity of familiarity discrimination networks. Hence it may be less important for coding to be sparse in the perirhinal cortex than it is in the hippocampus. Additionally, it is established that the capacities of the networks are strongly dependent on the precise form of the learning rules (synaptic plasticity) used in the network. This finding indicates that the precise characteristics of synaptic plastic changes in the real brain are likely to have major influences on storage capacity.

摘要

大量证据表明,嗅周皮质参与了识别记忆中的熟悉性辨别方面。先前已在选择性条件下表明,执行熟悉性辨别的神经网络能够实现非常高的存储容量,相比于联想记忆网络在联想回忆中所能处理的刺激,它能处理的刺激数量要多出许多倍。联想记忆用于回忆的容量已被证明高度依赖于编码的稀疏性。然而,先前关于Bogacz等人、Norman和O'Reilly以及Sohal和Hasselmo的网络模型(这些模型模拟嗅周皮质中的熟悉性辨别)的研究尚未考察编码稀疏性对容量的影响。本文探讨了编码的稀疏性如何影响这些已发表模型中每一个的容量,并确定稀疏编码以不同方式影响不同模型的容量。Bogacz等人的模型的容量可以与编码的稀疏性无关。对于Norman和O'Reilly模型的新皮质部分的简化版本,随着编码变得更稀疏,容量会增加,而对于Sohal和Hasselmo模型的简化版本,随着编码变得更稀疏,容量会降低。因此,一般而言,与联想记忆网络不同,稀疏编码对熟悉性辨别网络的容量几乎没有优势。因此,在嗅周皮质中编码稀疏可能不如在海马体中那么重要。此外,已确定网络的容量强烈依赖于网络中使用的学习规则(突触可塑性)的精确形式。这一发现表明,真实大脑中突触可塑性变化的精确特征可能对存储容量有重大影响。

相似文献

1
The restricted influence of sparseness of coding on the capacity of familiarity discrimination networks.编码稀疏性对熟悉度辨别网络容量的有限影响。
Network. 2002 Nov;13(4):457-85.
2
Comparison of computational models of familiarity discrimination in the perirhinal cortex.嗅周皮层中熟悉性辨别计算模型的比较。
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Sparseness constrains the prolongation of memory lifetime via synaptic metaplasticity.稀疏性通过突触元可塑性限制记忆寿命的延长。
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Neural associative memory with optimal Bayesian learning.最优贝叶斯学习的神经联想记忆。
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Model of familiarity discrimination in the perirhinal cortex.嗅周皮质中的熟悉性辨别模型。
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