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首页> 外文期刊>BMC Neuroscience >A dimension reduction technique applied to regression on high dimension, low sample size neurophysiological data sets
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A dimension reduction technique applied to regression on high dimension, low sample size neurophysiological data sets

机译:应用于高尺寸,低样本大小神经生理数据集回归的尺寸减少技术

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摘要

A common problem in neurophysiological signal processing is the extraction of meaningful information from high dimension, low sample size data (HDLSS). We present RoLDSIS (regression on low-dimension spanned input space), a regression technique based on dimensionality reduction that constrains the solution to the subspace spanned by the available observations. This avoids regularization parameters in the regression procedure, as needed in shrinkage regression methods. We applied RoLDSIS to the EEG data collected in a phonemic identification experiment. In the experiment, morphed syllables in the continuum /da/–/ta/ were presented as acoustic stimuli to the participants and the event-related potentials (ERP) were recorded and then represented as a set of features in the time-frequency domain via the discrete wavelet transform. Each set of stimuli was chosen from a preliminary identification task executed by the participant. Physical and psychophysical attributes were associated to each stimulus. RoLDSIS was then used to infer the neurophysiological axes, in the feature space, associated with each attribute. We show that these axes can be reliably estimated and that their separation is correlated with the individual strength of phonemic categorization. The results provided by RoLDSIS are interpretable in the time-frequency domain and may be used to infer the neurophysiological correlates of phonemic categorization. A comparison with commonly used regularized regression techniques was carried out by cross-validation. The prediction errors obtained by RoLDSIS are comparable to those obtained with Ridge Regression and smaller than those obtained with LASSO and SPLS. However, RoLDSIS achieves this without the need for cross-validation, a procedure that requires the extraction of a large amount of observations from the data and, consequently, a decreased signal-to-noise ratio when averaging trials. We show that, even though RoLDSIS is a simple technique, it is suitable for the processing and interpretation of neurophysiological signals.
机译:神经生理信号处理中的常见问题是从高维,低样本量数据(HDLS)的有意义信息的提取。我们呈现Roldsis(对低维跨越输入空间的回归),基于维数减少的回归技术将解决方案限制为可用观测所跨行的子空间。这避免了回归过程中的正则化参数,根据收缩回归方法。我们将Roldsis应用于在音素识别实验中收集的EEG数据。在实验中,将连续ul / da / - / ta / /的变形音节呈现为参与者的声学刺激,并记录与事件相关的电位(ERP),然后表示为时频域中的一组特征离散小波变换。从参与者执行的初步识别任务中选择了每组刺激。物理和心理物理属性与每个刺激有关。然后使用Roldsis在与每个属性相关联的特征空间中推断出神经生理轴。我们表明这些轴可以可靠地估计,并且它们的分离与音素分类的各个强度相关。 Roldsis提供的结果在时频域中可以解释,可用于推断音素分类的神经生理学相关性。通过交叉验证执行与常用的正则化回归技术的比较。 Roldsis获得的预测误差与用脊回归而获得的预测误差和小于用套索和SPL获得的那些。然而,Roldsis在没有交叉验证的情况下实现了这一点,该程序需要提取来自数据的大量观察,并且因此在平均试验时降低信噪比。我们表明,即使Roldsis是一种简单的技术,它也适用于神经生理信号的加工和解释。

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