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Hippocampal Neurogenesis Reduces the Dimensionality of Sparsely Coded Representations to Enhance Memory Encoding

机译:海马神经发生减少稀疏编码表示的维数以增强记忆编码

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摘要

Adult neurogenesis in the hippocampal dentate gyrus (DG) of mammals is known to contribute to memory encoding in many tasks. The DG also exhibits exceptionally sparse activity compared to other systems, however, whether sparseness and neurogenesis interact during memory encoding remains elusive. We implement a novel learning rule consistent with experimental findings of competition among adult-born neurons in a supervised multilayer feedforward network trained to discriminate between contexts. From this rule, the DG population partitions into neuronal ensembles each of which is biased to represent one of the contexts. This corresponds to a low dimensional representation of the contexts, whereby the fastest dimensionality reduction is achieved in sparse models. We then modify the rule, showing that equivalent representations and performance are achieved when neurons compete for synaptic stability rather than neuronal survival. Our results suggest that competition for stability in sparse models is well-suited to developing ensembles of what may be called memory engram cells.
机译:已知哺乳动物海马齿状回(DG)中的成年神经发生在许多任务中有助于记忆编码。与其他系统相比,DG还具有异常稀疏的活动,但是,稀疏性和神经发生在记忆编码期间是否相互作用仍然难以捉摸。我们实施一种新颖的学习规则,与在监督下区分上下文的受监督多层前馈网络中成人出生的神经元之间的竞争实验结果相一致。根据该规则,DG群体划分为神经元集合,每个集合都被偏向于代表其中一种情况。这对应于上下文的低维表示,从而在稀疏模型中实现了最快的降维。然后,我们修改规则,表明当神经元竞争突触稳定性而不是神经元生存时,可以实现等效的表示和性能。我们的结果表明,稀疏模型中的稳定性竞争非常适合开发可能称为记忆印记单元的合奏。

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