首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >Hebbian Learning in a Random Network Captures Selectivity Properties of the Prefrontal Cortex
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Hebbian Learning in a Random Network Captures Selectivity Properties of the Prefrontal Cortex

机译:在随机网络中的Hebbian学习捕获前额外皮层的选择性属性

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Complex cognitive behaviors, such as context-switching and rule-following, are thought to be supported by the prefrontal cortex (PFC). Neural activity in the PFC must thus be specialized to specific tasks while retaining flexibility. Nonlinear "mixed" selectivity is an important neurophysiological trait for enabling complex and context-dependent behaviors. Here we investigate (1) the extent to which the PFC exhibits computationally relevant properties, such as mixed selectivity, and (2) how such properties could arise via circuit mechanisms. We show that PFC cells recorded from male and female rhesus macaques during a complex task show a moderate level of specialization and structure that is not replicated by a model wherein cells receive random feedforward inputs. While random connectivity can be effective at generating mixed selectivity, the data show significantly more mixed selectivity than predicted by a model with otherwise matched parameters. A simple Hebbian learning rule applied to the random connectivity, however, increases mixed selectivity and enables the model to match the data more accurately. To explain how learning achieves this, we provide analysis along with a clear geometric interpretation of the impact of learning on selectivity. After learning, the model also matches the data on measures of noise, response density, clustering, and the distribution of selectivities. Of two styles of Hebbian learning tested, the simpler and more biologically plausible option better matches the data. These modeling results provide clues about how neural properties important for cognition can arise in a circuit and make clear experimental predictions regarding how various measures of selectivity would evolve during animal training.
机译:被认为是前额叶Cortex(PFC)支持的复杂认知行为,例如上下文切换和规则次序。因此,PFC中的神经活动必须专门用于特定任务,同时保持灵活性。非线性“混合”选择性是一种重要的神经生理学特性,用于实现复杂和上下文相关行为。在这里,我们调查(1)PFC表现出计算相关性质的程度,例如混合选择性,以及(2)如何通过电路机制出现这种特性。我们表明,在复杂任务期间从男性和雌性恒河猕猴记录的PFC细胞显示了不通过电池接收随机前馈输入的模型来复制的中等专业化和结构。虽然随机连接可以有效地产生混合选择性,但数据显示比具有其他匹配参数的模型预测的更加混合的选择性。然而,应用于随机连接的简单的Hebbian学习规则会增加混合选择性,并使模型能够更准确地匹配数据。为了解释学习如何实现这一目标,我们提供了分析以及对学习对选择性的影响的明显几何解释。在学习之后,该模型还与关于噪声,响应密度,聚类和选择性分布的数据匹配数据。两种款式的Hebbian学习测试,更简单,更生物合理的选项更好地匹配数据。这些建模结果提供了关于如何在电路中产生对认知的重要性的线索,并对有关在动物训练期间如何发展的各种选择性措施的明确实验预测。

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