- Huetsch, Nathan;
- Mariño Villadamigo, Javier;
- Shmakov, Alexander;
- Diefenbacher, Sascha;
- Mikuni, Vinicius;
- Heimel, Theo;
- Fenton, Michael James;
- Greif, Kevin Thomas;
- Nachman, Benjamin;
- Whiteson, Daniel;
- Butter, Anja;
- Plehn, Tilman
Recent innovations from machine learning allow for data unfolding, without binning and including correlations across many dimensions. We describe a set of known, upgraded, and new methods for ML-based unfolding. The performance of these approaches are evaluated on the same two datasets. We find that all techniques are capable of accurately reproducing the particle-level spectra across complex observables. Given that these approaches are conceptually diverse, they offer an exciting toolkit for a new class of measurements that can probe the Standard Model with an unprecedented level of detail and may enable sensitivity to new phenomena.