Neural Science, New York University Shanghai, Shanghai, China.
NYU-ECNU Institute of Brain and Cognitive Science at NYU Shanghai, Shanghai, China.
PLoS Comput Biol. 2022 May 2;18(5):e1009083. doi: 10.1371/journal.pcbi.1009083. eCollection 2022 May.
Working memory is a core component of critical cognitive functions such as planning and decision-making. Persistent activity that lasts long after the stimulus offset has been considered a neural substrate for working memory. Attractor dynamics based on network interactions can successfully reproduce such persistent activity. However, it requires a fine-tuning of network connectivity, in particular, to form continuous attractors which were suggested for encoding continuous signals in working memory. Here, we investigate whether a specific form of synaptic plasticity rules can mitigate such tuning problems in two representative working memory models, namely, rate-coded and location-coded persistent activity. We consider two prominent types of plasticity rules, differential plasticity correcting the rapid activity changes and homeostatic plasticity regularizing the long-term average of activity, both of which have been proposed to fine-tune the weights in an unsupervised manner. Consistent with the findings of previous works, differential plasticity alone was enough to recover a graded-level persistent activity after perturbations in the connectivity. For the location-coded memory, differential plasticity could also recover persistent activity. However, its pattern can be irregular for different stimulus locations under slow learning speed or large perturbation in the connectivity. On the other hand, homeostatic plasticity shows a robust recovery of smooth spatial patterns under particular types of synaptic perturbations, such as perturbations in incoming synapses onto the entire or local populations. However, homeostatic plasticity was not effective against perturbations in outgoing synapses from local populations. Instead, combining it with differential plasticity recovers location-coded persistent activity for a broader range of perturbations, suggesting compensation between two plasticity rules.
工作记忆是计划和决策等关键认知功能的核心组成部分。刺激结束后持续很长时间的持续活动被认为是工作记忆的神经基础。基于网络相互作用的吸引子动力学可以成功地再现这种持续活动。然而,它需要对网络连接进行微调,特别是为了形成连续吸引子,这些吸引子被建议用于在工作记忆中编码连续信号。在这里,我们研究了在两个有代表性的工作记忆模型中,即基于率编码和基于位置编码的持续活动中,特定形式的突触可塑性规则是否可以减轻这种调谐问题。我们考虑了两种突出的可塑性规则,即差异可塑性(纠正快速活动变化)和同型可塑性(调节活动的长期平均值),这两种规则都被提议以非监督的方式对权重进行微调。与之前工作的发现一致,差异可塑性本身足以在连接性受到干扰后恢复分级水平的持续活动。对于基于位置的记忆,差异可塑性也可以恢复持续活动。然而,在学习速度较慢或连接性受到较大干扰的情况下,对于不同的刺激位置,其模式可能不规则。另一方面,同型可塑性在特定类型的突触干扰下,例如对整个或局部群体传入突触的干扰,表现出对平滑空间模式的稳健恢复。然而,同型可塑性对来自局部群体的传出突触的干扰没有效果。相反,将其与差异可塑性结合使用可以恢复更广泛的干扰下的基于位置的持续活动,这表明两种可塑性规则之间存在补偿。