- Design and analysis of learning algorithms.
- Statistical and computational learning theory.
- Online learning algorithms and theory.
- Optimization methods for learning.
- Unsupervised, semi-supervised, and active learning.
- Interactive learning, planning and control, and reinforcement learning.
- Privacy-preserving data analysis.
- Learning with additional societal and strategic considerations: e.g., fairness, economics.
- Robustness of learning algorithms to adversarial agents.
- Artificial neural networks, including deep learning.
- High-dimensional and non-parametric statistics.
- Adaptive data analysis and selective inference.
- Learning with algebraic or combinatorial structure.
- Bayesian methods in learning.
- Learning in distributed and streaming settings.
- Game theory and learning.
- Learning from complex data: e.g., networks, time series.
- Theoretical analysis of probabilistic graphical models.
While the primary focus of the conference is theoretical,
authors are welcome to support their analysis by including relevant
experimental results.
Accepted papers will be published electronically in the Proceedings
of Machine Learning Research (PMLR), and will be presented at the
conference as a full-length talk. Authors of accepted papers will have
the option of opting out of the proceedings in favor of a 1-page
extended abstract, which will point to an open access archival version
of the full paper reviewed for ALT.
Important dates
Paper submission deadline:
September 26, 2023, Anywhere On Earth
Author feedback:
Nov 8-14, 2023
Author notification:
Mid-December, 2023