Atyabi Adham, Shic Frederick, Naples Adam
Yale Child Study Center, School of Medicine, Yale University, New Haven, Connecticut, United States of America.
School of Computer, Science, Engineering and Mathematics, Flinders University of South Australia, Australia.
Expert Syst Appl. 2016 Dec 15;65:164-180. doi: 10.1016/j.eswa.2016.08.044. Epub 2016 Aug 11.
Autoregressive (AR) models are of commonly utilized feature types in Electroencephalogram (EEG) studies due to offering better resolution, smoother spectra and being applicable to short segments of data. Identifying correct AR's modeling order is an open challenge. Lower model orders poorly represent the signal while higher orders increase noise. Conventional methods for estimating modeling order includes Akaike Information Criterion (AIC), Bayesian Information Criterion (BIC) and Final Prediction Error (FPE). This article assesses the hypothesis that appropriate mixture of multiple AR orders is likely to better represent the true signal compared to any single order. Better spectral representation of underlying EEG patterns can increase utility of AR features in Brain Computer Interface (BCI) systems by increasing timely & correctly responsiveness of such systems to operator's thoughts. Two mechanisms of Evolutionary-based fusion and Ensemble-based mixture are utilized for identifying such appropriate mixture of modeling orders. The classification performance of the resultant AR-mixtures are assessed against several conventional methods utilized by the community including 1) A well-known set of commonly used orders suggested by the literature, 2) conventional order estimation approaches (e.g., AIC, BIC and FPE), 3) blind mixture of AR features originated from a range of well-known orders. Five datasets from BCI competition III that contain 2, 3 and 4 motor imagery tasks are considered for the assessment. The results indicate superiority of Ensemble-based modeling order mixture and evolutionary-based order fusion methods within all datasets.
自回归(AR)模型是脑电图(EEG)研究中常用的特征类型,因为它具有更好的分辨率、更平滑的频谱,并且适用于短段数据。确定正确的AR建模阶数是一个开放性挑战。较低的模型阶数不能很好地表示信号,而较高的阶数会增加噪声。估计建模阶数的传统方法包括赤池信息准则(AIC)、贝叶斯信息准则(BIC)和最终预测误差(FPE)。本文评估了这样一种假设:与任何单个阶数相比,多个AR阶数的适当混合可能更能代表真实信号。通过提高脑机接口(BCI)系统对操作者思维的及时和正确响应能力,更好地对潜在EEG模式进行频谱表示可以增加AR特征在BCI系统中的效用。基于进化的融合和基于集成的混合这两种机制被用于确定这种适当的建模阶数混合。针对该领域使用的几种传统方法,评估所得AR混合模型的分类性能,包括:1)文献中建议的一组常用阶数;2)传统的阶数估计方法(如AIC、BIC和FPE);3)源自一系列知名阶数的AR特征的盲目混合。评估考虑了来自BCI竞赛III的五个数据集,这些数据集包含2、3和4个运动想象任务。结果表明,在所有数据集中,基于集成的建模阶数混合和基于进化的阶数融合方法具有优越性。