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Learning stable, regularised latent models of neural population dynamics

机译:学习稳定,规范化的神经种群动力学潜在模型

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摘要

Ongoing advances in experimental technique are making commonplace simultaneous recordings of the activity of tens to hundreds of cortical neurons at high temporal resolution. Latent population models, including Gaussian-process factor analysis and hidden linear dynamical system (LDS) models, have proven effective at capturing the statistical structure of such data sets. They can be estimated efficiently, yield useful visualisations of population activity, and are also integral building-blocks of decoding algorithms for brain-machine interfaces (BMI). One practical challenge, particularly to LDS models, is that when parameters are learned using realistic volumes of data the resulting models often fail to reflect the true temporal continuity of the dynamics; and indeed may describe a biologically-implausible unstable population dynamic that is, it may predict neural activity that grows without bound. We propose a method for learning LDS models based on expectation maximisation that constrains parameters to yield stable systems and at the same time promotes capture of temporal structure by appropriate regularisation. We show that when only little training data is available our method yields LDS parameter estimates which provide a substantially better statistical description of the data than alternatives, whilst guaranteeing stable dynamics. We demonstrate our methods using both synthetic data and extracellular multi-electrode recordings from motor cortex.
机译:实验技术的不断进步使人们以高的时间分辨率同时记录数十到数百个皮质神经元的活动。潜在人口模型,包括高斯过程因子分析和隐藏线性动力系统(LDS)模型,已被证明可以有效地捕获此类数据集的统计结构。它们可以被有效地估计,可以产生有用的人口活动可视化效果,并且也是脑机接口(BMI)解码算法的整体组成部分。一个实际的挑战,特别是对LDS模型的挑战是,当使用现实的数据量学习参数时,生成的模型通常无法反映动态的真实时间连续性。确实可以描述生物学上难以置信的不稳定种群动态,也就是说,它可以预测神经活动的无限增长。我们提出了一种基于期望最大化的LDS模型学习方法,该方法可以约束参数以产生稳定的系统,同时通过适当的正则化促进对时间结构的捕获。我们表明,当只有很少的训练数据可用时,我们的方法会得出LDS参数估计值,该参数估计值将比其他方法提供更好的统计描述,同时又保证了稳定的动态。我们展示了使用合成数据和运动皮层细胞外多电极记录的方法。

著录项

  • 来源
    《Network》 |2012年第4期|24-47|共24页
  • 作者单位

    Gatsby Computational Neuroscience Unit, University College London, 17 Queen Square,London, WC1N 3AR, UK;

    Gatsby Computational Neuroscience Unit, University College London, 17 Queen Square,London, WC1N 3AR, UK;

    Gatsby Computational Neuroscience Unit, University College London, 17 Queen Square,London, WC1N 3AR, UK;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    motor control; cortical microcircuitry;

    机译:电机控制;皮质微电路;
  • 入库时间 2022-08-18 01:49:12

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