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This repository is used in the context of the Master in Artificial Intelligence from Swiss Distance University Institute. The content is here to teach Open Science concepts to students and is useful only in this context.

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Reproducible Multi-Class Logistic Regression for Iris Flowers

This bundle contains the code we used to generate the tables on the paper:

@inproceedings{iris2019,
  author = {John Doe},
  title = {A Simple Solution to Iris Flower Classification},
  year = {2019},
  month = jun,
  booktitle = {Reproducible Research Conference, Martigny, 2019},
  url = {http://example.com/path/to/my/article.pdf},
}

We appreciate your citation in case you use results obtained directly or indirectly via this software package.

For installation and usage instructions, please refer to our documentation, that can be accessed through the relevant badge above.

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This repository is used in the context of the Master in Artificial Intelligence from Swiss Distance University Institute. The content is here to teach Open Science concepts to students and is useful only in this context.

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