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首页> 外文期刊>Bulletin of the American Physical Society >APS -APS March Meeting 2017 - Event - Learning about memory from (very) large scale hippocampal networks.
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APS -APS March Meeting 2017 - Event - Learning about memory from (very) large scale hippocampal networks.

机译:APS -APS 2017年3月会议-活动-从(非常)大型海马网络中了解记忆。

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Recent technological progress has dramatically increased our access to the neural activity underlying memory-related tasks. These complex high-dimensional data call for theories that allow us to identify signatures of collective activity in the networks that are crucial for the emergence of cognitive functions. As an example, we study the neural activity in dorsal hippocampus as a mouse runs along a virtual linear track. One of the dominant features of this data is the activity of place cells, which fire when the animal visits particular locations. During the first stage of our work we used a maximum entropy framework to characterize the probability distribution of the joint activity patterns observed across ensembles of up to 100 cells. These models, which are equivalent to Ising models with competing interactions, make surprisingly accurate predictions for the activity of individual neurons given the state of the rest of the network, and this is true both for place cells and for non-place cells. ~Additionally, the model captures the high-order structure in the data, which cannot be explained by place-related activity alone. For the second stage of our work we study networks of extasciitilde 2000 neurons. To address this much larger system, we are exploring different methods of coarse graining, in the spirit of the renormalization group, searching for simplified models.
机译:最近的技术进步极大地增加了我们获取与记忆有关的任务的神经活动的机会。这些复杂的高维数据需要理论,使我们能够识别网络中对认知功能的出现至关重要的集体活动的特征。例如,当鼠标沿着虚拟线性轨迹运行时,我们研究了背海马的神经活动。该数据的主要特征之一是位置细胞的活动性,当动物访问特定位置时该位置活动。在我们工作的第一阶段,我们使用最大熵框架来表征在多达100个细胞的集合中观察到的关节活动模式的概率分布。这些模型等效于具有竞争性相互作用的伊辛模型,可在给定其余网络状态的情况下,对单个神经元的活动做出令人惊讶的准确预测,这对于位置细胞和非位置细胞都是如此。 〜此外,该模型还捕获了数据中的高级结构,这不能仅通过与位置相关的活动来解释。对于我们工作的第二阶段,我们研究了extasciitilde 2000神经元的网络。为了解决这个更大的系统,我们正本着重归一化小组的精神,探索不同的粗粒度方法,以寻找简化模型。

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