首页> 外文会议>Computational Neuroscience Meeting (CNS'01) Jul, 2001 Monterey, California >Dynamic PCA for network feature extraction in multi-electrode recording of neurophysiological data in cortical substrate of pain
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Dynamic PCA for network feature extraction in multi-electrode recording of neurophysiological data in cortical substrate of pain

机译:用于多电极记录疼痛皮质皮层神经生理数据的网络特征提取的动态PCA

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摘要

A novel multi-scale analysis of multi-electrode spike recording during heat pain stimulation in rats is applied to quantify non-stationary patterns of neuronal response. This approach would allow biological constraints to translate into multi-dimensional geometry. We then determine the optimal scale, resolution and density of a neuronal localization that best characterizes the cortical response. Within the optimal choices, we determine the inherent dimension of the locally linear principal component analysis (PCA) that approximates the non-linear geometric structure of data, and minimizes the reconstruction error within the prescribed bounds. When dimension is one, two, or three, our optimization algorithms determine the system of non-linear principal curves that best approximates the data.
机译:在大鼠热痛刺激过程中多电极峰值记录的新型多尺度分析用于量化神经元反应的非平稳模式。这种方法将使生物学限制转化为多维几何。然后,我们确定最能表征皮层反应的神经元定位的最佳规模,分辨率和密度。在最佳选择中,我们确定局部线性主成分分析(PCA)的固有维度,该近似维度近似于数据的非线性几何结构,并在规定的范围内将重构误差降至最低。当维度为一,二或三时,我们的优化算法将确定最近似数据的非线性主曲线系统。

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