:partying_face: Full Paper accepted at the ECML/PKDD conference! :fr:

In my Master thesis, we explored algorithms to embed abstract objects such as probability distributions. We used the Wasserstein distance to compute distances between them and applied the method to election data (Bachmann et al., 2023).

It was a pleasure to work with Philipp Hennig and Dmitry Kobak. Thank you for your supervison!

  1. ECML/PKDD
    bachmann2023wasserstein.png
    Wasserstein t-SNE
    Fynn Bachmann, Philipp Hennig, and Dmitry Kobak
    In Machine Learning and Knowledge Discovery in Databases
    Presented at ECML 2022 in Grenoble, France