torch.pca_lowrank¶
- torch.pca_lowrank(A, q=None, center=True, niter=2)[source]¶
- Performs linear Principal Component Analysis (PCA) on a low-rank matrix, batches of such matrices, or sparse matrix. - This function returns a namedtuple - (U, S, V)which is the nearly optimal approximation of a singular value decomposition of a centered matrix such that .- Note - The relation of - (U, S, V)to PCA is as follows:- is a data matrix with - msamples and- nfeatures
- the columns represent the principal directions 
- contains the eigenvalues of which is the covariance of - Awhen- center=Trueis provided.
- matmul(A, V[:, :k])projects data to the first k principal components
 - Note - Different from the standard SVD, the size of returned matrices depend on the specified rank and q values as follows: - is m x q matrix 
- is q-vector 
- is n x q matrix 
 - Note - To obtain repeatable results, reset the seed for the pseudorandom number generator - Parameters:
- A (Tensor) – the input tensor of size 
- q (int, optional) – a slightly overestimated rank of . By default, - q = min(6, m, n).
- center (bool, optional) – if True, center the input tensor, otherwise, assume that the input is centered. 
- niter (int, optional) – the number of subspace iterations to conduct; niter must be a nonnegative integer, and defaults to 2. 
 
- Return type:
 - References: - - Nathan Halko, Per-Gunnar Martinsson, and Joel Tropp, Finding structure with randomness: probabilistic algorithms for constructing approximate matrix decompositions, arXiv:0909.4061 [math.NA; math.PR], 2009 (available at `arXiv <http://arxiv.org/abs/0909.4061>`_).