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首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Improved tracking of time-varying encoding properties of visual neurons by extended recursive least-squares
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Improved tracking of time-varying encoding properties of visual neurons by extended recursive least-squares

机译:通过扩展的递归最小二乘改进对视觉神经元的时变编码属性的跟踪

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Traditional approaches to characterizing the transformation from stimulus to response in sensory systems assume both stationarity of the stimulus and time-invariance of the stimulus/response mapping. However, recent studies of sensory function under natural stimulus conditions have demonstrated important features of neural encoding that are in violation of these assumptions. Many sensory neurons respond to changes in the statistical distribution of the stimulus that are characteristic of the natural environment with corresponding changes in their encoding properties. In this paper, an extended recursive least-squares (ERLS) approach to adaptive estimation from stimulus/response observations is detailed. The ERLS approach improves the tracking ability of standard RLS approaches to adaptive estimation by removing a number of assumptions about the underlying system and the stimulus environment. The ERLS framework also incorporates an adaptive learning rate, so that prior knowledge of the relationship between the stimulus and the adaptive nature of the system under investigation can be used to improve tracking performance. Simulated and experimental neural responses are used to demonstrate the ability of the ERLS approach to track adaptation of encoding properties during a single stimulus/response trial. The ERLS framework lends tremendous flexibility to experimental design, facilitating the investigation of sensory function under naturalistic stimulus conditions.
机译:表征感官系统中从刺激到反应的转变的传统方法假定刺激的平稳性和刺激/响应映射的时间不变性。但是,最近在自然刺激条件下的感觉功能研究表明,神经编码的重要特征违反了这些假设。许多感觉神经元对刺激的统计分布中的变化作出反应,这些变化是自然环境的特征,其编码特性也发生了相应的变化。在本文中,详细介绍了一种扩展的递归最小二乘(ERLS)方法,用于从刺激/响应观察值进行自适应估计。 ERLS方法通过消除有关基础系统和刺激环境的许多假设,提高了标准RLS方法对自适应估计的跟踪能力。 ERLS框架还合并了自适应学习率,因此可以将被激励与被调查系统的自适应性质之间的关系的先验知识用于改善跟踪性能。模拟和实验性神经反应被用来证明ERLS方法在单个刺激/反应试验中跟踪编码属性适应性的能力。 ERLS框架为实验设计提供了极大的灵活性,从而简化了自然刺激条件下的感觉功能研究。

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