rTensor: Tools for Tensor Analysis and Decomposition
A set of tools for creation, manipulation, and modeling
    of tensors with arbitrary number of modes. A tensor in the context of data
    analysis is a multidimensional array. rTensor does this by providing a S4
    class 'Tensor' that wraps around the base 'array' class. rTensor
    provides common tensor operations as methods, including matrix unfolding,
    summing/averaging across modes, calculating the Frobenius norm, and taking
    the inner product between two tensors. Familiar array operations are
    overloaded, such as index subsetting via '[' and element-wise operations.
    rTensor also implements various tensor decomposition, including CP, GLRAM,
    MPCA, PVD, and Tucker. For tensors with 3 modes, rTensor also implements
    transpose, t-product, and t-SVD, as defined in Kilmer et al. (2013). Some
    auxiliary functions include the Khatri-Rao product, Kronecker product, and
    the Hadamard product for a list of matrices.
Documentation:
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Reverse dependencies:
| Reverse imports: | ccTensor, CMTFtoolbox, dcTensor, DelayedTensor, fase, gcTensor, iTensor, mwTensor, nnTensor, NPLStoolbox, parafac4microbiome, rMultiNet, RTFA, scITD, scTensor, SmoothTensor, TDbasedUFE, TDbasedUFEadv, TensorClustering, tensorMiss, TensorPreAve, tensorTS, Tlasso, TransGraph, TransTGGM, TRES, ttTensor, WormTensor | 
| Reverse suggests: | oddnet | 
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