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RV coefficient

In statistics, the RV coefficientis a multivariate generalization of the squared Pearson correlation coefficient (because the RV coefficient takes values between 0 and 1). It measures the closeness of two set of points that may each be represented in a matrix. In statistics, the RV coefficientis a multivariate generalization of the squared Pearson correlation coefficient (because the RV coefficient takes values between 0 and 1). It measures the closeness of two set of points that may each be represented in a matrix. The major approaches within statistical multivariate data analysis can all be brought into a common framework in which the RV coefficient is maximised subject to relevant constraints. Specifically, these statistical methodologies include: One application of the RV coefficient is in functional neuroimaging where it can measure the similarity between two subjects' series of brain scansor between different scans of a same subject. The definition of the RV-coefficient makes use of ideasconcerning the definition of scalar-valued quantities which are called the 'variance' and 'covariance' of vector-valued random variables. Note that standard usage is to have matrices for the variances and covariances of vector random variables. Given these innovative definitions, the RV-coefficient is then just the correlation coefficient defined in the usual way. Suppose that X and Y are matrices of centered random vectors (column vectors) with covariance matrix given by then the scalar-valued covariance (denoted by COVV) is defined by

[ "Correlation ratio", "Fisher transformation", "Quadrant count ratio" ]
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