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Remove Orange implementation of randomized PCA #6815

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merged 5 commits into from
May 31, 2024

Commits on May 31, 2024

  1. Remove Orange implementation of randomized PCA

    scikit-learn now supports PCA on sparse matrices without densifying them first. This PR basically reverts biolab#3532. At the time this was implemented, scikit-learn did not support this yet.
    pavlin-policar committed May 31, 2024
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