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A Criterion to Evaluate Feature Vectors Based on ANOVA Statistical Analysis

机译:基于ANOVA统计分析评估特征向量的标准

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The objective of this research is to evaluate feature vectors based on statistical analysis, focusing on application in brain-computer interface (BCI) domain. Common spatial pattern (CSP) is one of the most frequently used algorithms in BCI to extract features from electroencephalogram (EEG). However, since CSP would be a greedy algorithm by solving it through eigenvalue decomposition method, choosing features in a sequential way does not necessarily result in the minimal achievable classification error for higher than 2-dimensional feature vectors. To overcome this issue, Unbalanced Factorial ANOVA (UF-ANOVA) analysis based on linear regression has been used in order to evaluate features extracted from CSP algorithm. Finally, a criterion based on Mahalanobis distance and F distribution parameter resulted from ANOVA table is introduced to evaluate feature vectors. It is shown that proposed criterion is compatible with widely used criterions such as Fisher score (FS) and Mutual information (MI). Moreover, proposed analysis is not limited to one-dimensional feature vectors and can be applied to higher dimensions.
机译:本研究的目的是根据统计分析评估特征向量,专注于脑 - 计算机接口(BCI)域中的应用。常见的空间模式(CSP)是BCI中最常使用的算法之一,以从脑电图(EEG)中提取特征。然而,由于CSP通过通过特征值分解方法解决了贪婪算法,因此以顺序方式选择特征不一定导致高于二维特征向量的最小可实现的分类误差。为了克服这个问题,已经使用了基于线性回归的不平衡因子Anova(UF-Anova)分析来评估从CSP算法提取的功能。最后,引入了基于Mahalanobis距离和由ANOVA表产生的F分布参数的标准来评估特征向量。结果表明,提出的标准与广泛使用的标准兼容,例如Fisher得分(FS)和互信息(MI)。此外,所提出的分析不限于一维特征向量,并且可以应用于更高的尺寸。

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