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Efficient framework to estimate high-dimensional generalized matrix factorization models using penalized maximum likelihood under a dispersion exponential family specification. Either deterministic and stochastic methods are implemented for the numerical maximization. In particular, the package implements the stochastic gradient descent algorithm with a block-wise mini-batch strategy to speed up the computations and an efficient adaptive learning rate schedule to stabilize the convergence. All the theoretical details can be found in Castiglione et al. (2024, <doi:10.48550/arXiv.2412.20509>). Other methods considered for the optimization are the alternated iterative re-weighted least squares and the quasi-Newton method with diagonal approximation of the Fisher information matrix discussed in Kidzinski et al. (2022, <http://jmlr.org/papers/v23/20-1104.html>).

copied from cf-post-staging / r-sgdgmf
Type Size Name Uploaded Downloads Labels
conda 707.3 kB | osx-64/r-sgdgmf-1.0.1-r45hb467afd_0.conda  13 hours and 34 minutes ago 18 main
conda 706.8 kB | osx-64/r-sgdgmf-1.0.1-r44hb467afd_0.conda  13 hours and 35 minutes ago 17 main
conda 699.8 kB | win-64/r-sgdgmf-1.0.1-r45hb9d1f71_0.conda  13 hours and 36 minutes ago 19 main
conda 701.6 kB | win-64/r-sgdgmf-1.0.1-r44hb9d1f71_0.conda  13 hours and 38 minutes ago 15 main
conda 748.8 kB | linux-64/r-sgdgmf-1.0.1-r44h3704496_0.conda  13 hours and 41 minutes ago 27 main
conda 748.0 kB | linux-64/r-sgdgmf-1.0.1-r45h3704496_0.conda  13 hours and 42 minutes ago 37 main

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