l1pcahp | R Documentation |
Performs a principal component analysis using the algorithm L1-PCAhp described by Visentin, Prestwich and Armagan (2016)
l1pcahp(X, projDim=1, center=TRUE, projections="none", initialize="l2pca", threshold=0.0001)
X |
data, must be in |
projDim |
number of dimensions to project data into, must be an integer, default is 1. |
center |
whether to center the data using the median, default is TRUE. |
projections |
whether to calculate reconstructions and scores using the L1 norm ("l1") the L2 norm ("l2") or not at all ("none", default). |
initialize |
method for initial guess for loadings matrix. Options are: "l2pca" - use traditional PCA/SVD, "random" - use a randomly-generated matrix. |
threshold |
sets the convergence threshold for the algorithm, default is 0.001. |
The calculation is performed according to the algorithm described by Visentin, Prestwich and Armagan (2016). The algorithm computes components iteratively in reverse, using a new heuristic based on Linear Programming. Linear programming instances are solved using Clp (http://www.coin-or.org).
'l1pcahp' returns a list with class "l1pcahp" containing the following components:
loadings |
the matrix of variable loadings. The matrix has dimension ncol(X) x ncol(X). The columns define the projected subspace. |
scores |
the matrix of projected points. The matrix has dimension nrow(X) x projDim. |
dispExp |
the proportion of L1 dispersion explained by the loadings vectors. Calculated as the L1 dispersion of the score on each component divided by the L1 dispersion in the original data. |
projPoints |
the matrix of projected points in terms of the original coordinates. The matrix has dimension nrow(X) x ncol(X). |
Visentin A., Prestwich S., and Armagan S. T. (2016) Robust Principal Component Analysis by Reverse Iterative Linear Programming, Joint European Conference on Machine Learning and Knowledge Discovery in Databases, 593-605. DOI:10.1007/978-3-319-46227-1_37
##for a 100x10 data matrix X, ## lying (mostly) in the subspace defined by the first 2 unit vectors, ## projects data into 1 dimension. X <- matrix(c(runif(100*2, -10, 10), rep(0,100*8)),nrow=100) + matrix(c(rep(0,100*2),rnorm(100*8,0,0.1)),ncol=10) myl1pcahp <- l1pcahp(X) ##projects data into 2 dimensions. myl1pcahp <- l1pcahp(X, projDim=2, center=FALSE, projections="l1") ## plot first two scores plot(myl1pcahp$scores)
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