Syntax
[facpr,comprinc,lambda,tsquare, explained, mu] = princomp(x,eco)
Arguments
- x
- is a - n-by-- p(- nindividuals,- pvariables) real matrix.
- eco
- a boolean, use to allow economy size singular value decomposition. 
- facpr
- A - p-by-- pmatrix. It contains the principal factors: eigenvectors of the correlation matrix- V.
- comprinc
- a - n-by-- pmatrix. It contains the principal components. Each column of this matrix is the M-orthogonal projection of individuals onto principal axis. Each one of this columns is a linear combination of the variables x1, ...,xp with maximum variance under condition- u'_i M^(-1) u_i=1
- lambda
- is a - pcolumn vector. It contains the eigenvalues of- V, where- Vis the correlation matrix.
- tsquare
- a - ncolumn vector. It contains the Hotelling's T^2 statistic for each data point.
- explained
- a column vector of length "number of components". The percentage of variance explained by each principal component. 
- mu
- a row vector of length - p. The estimated mean of each variable of- x.
Description
This function performs "principal component analysis" on the
            n-by-p data matrix
            x.
The idea behind this method is to represent in an approximative manner a cluster of n individuals in a smaller dimensional subspace. In order to do that, it projects the cluster onto a subspace. The choice of the k-dimensional projection subspace is made in such a way that the distances in the projection have a minimal deformation: we are looking for a k-dimensional subspace such that the squares of the distances in the projection is as big as possible (in fact in a projection, distances can only stretch). In other words, inertia of the projection onto the k dimensional subspace must be maximal.
To compute principal component analysis with standardized variables may use
            princomp(wcenter(x,1)) or use the pca function.
Examples
a=rand(100,10,'n'); [facpr,comprinc,lambda,tsquare] = princomp(a);
x = [1 2 1;2 1 3; 3 2 3] [facpr, comprinc, lambda, tsquare, explained, mu] = princomp(x, %t); comprinc * facpr' + ones(3, 1) * mu // == x
See also
Bibliography
Saporta, Gilbert, Probabilités, Analyse des Données et Statistique, Editions Technip, Paris, 1990.
History
| Versão | Descrição | 
| 2024.1.0 | princompnow returns the percentage of the variance explained by each principal component and
                    the estimated mean of each variable of x. | 
| 2025.0.0 | Tagged obsolete and will be removed in Scilab 2026.0.0. | 
| Report an issue | ||
| << pca | Multivariate Correl Regress PCA | reglin >> |