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MatrixCorrelation (version 0.9.4)

r1: Correlational Measures for Matrices

Description

Matrix similarity as described by Ramsey et al. (1984).

Usage

r1(X1, X2, center = TRUE)

r2(X1, X2, center = TRUE)

r3(X1, X2, center = TRUE)

r4(X1, X2, center = TRUE)

GCD(X1, X2, ncomp1 = Rank(X1), ncomp2 = Rank(X2), center = TRUE)

Arguments

X1

first matrix to be compared (data.frames are also accepted).

X2

second matrix to be compared (data.frames are also accepted).

center

logical indicating if input matrices should be centered (default = TRUE).

ncomp1

(GCD) number of subspace components from the first matrix (default: full subspace).

ncomp2

(GCD) number of subspace components from the second matrix (default: full subspace).

Value

A single value measuring the similarity of two matrices.

Details

Details can be found in Ramsey's paper:

  • r1: inner product correlation

  • r2: orientation-independent inner product correlation

  • r3: spectra-independent inner product correlations (including orientation)

  • r4: Spectra-Independent inner product Correlations

  • GCD: Yanai's Generalized Coefficient of Determination (GCD) Measure. To reproduce the original GCD, use all components. When X1 and X2 are dummy variables, GCD is proportional with Pillai's criterion: tr(W^-1(B+W)).

References

Ramsay, JO; Berg, JT; Styan, GPH; 1984. "Matrix Correlation". Psychometrica 49(3): 403-423.

See Also

SMI, RV (RV2/RVadj).

Examples

Run this code
# NOT RUN {
X1  <- matrix(rnorm(100*300),100,300)
usv <- svd(X1)
X2  <- usv$u[,-3] %*% diag(usv$d[-3]) %*% t(usv$v[,-3])

r1(X1,X2)
r2(X1,X2)
r3(X1,X2)
r4(X1,X2)
GCD(X1,X2)
GCD(X1,X2, 5,5)

# }

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