Site menu:
OPT2023
We welcome you to participate in the 15th International OPT Workshop on Optimization for Machine Learning, to be held as a part of the NeurIPS 2023 conference. This year we particularly encourage (but not limit) submissions inspired by the spirit of "Optimization in the Wild".
We are looking forward to an exciting OPT!
The Workshop
Optimization lies at the heart of many machine learning algorithms and enjoys great interest in our community. Indeed, this intimate relation of optimization with ML is the key motivation for the OPT series of workshops. We aim to foster discussion, discovery, and dissemination of state-of-the-art research in optimization relevant to ML.
To foster the spirit of innovation and collaboration, a goal of this workshop, OPT 2023 will focus the contributed talks on research in "Optimization in the Wild"; this title is meant to encompass the new challenges that traditional optimization theory and algorithms face with the growth and variety of novel ML applications.
Successful applications of both theory and algorithms from optimization to ML frequently require a profound redesign or even entirely new approaches. This becomes apparent in settings where the classical (empirical) risk minimization approach is no longer sufficient to address the challenges of learning. As motivating examples, we consider the case of learning under (group or individual) fairness in distributed scenarios, learning under differential privacy, robustness, multi-task and transfer learning, as well as sampling from log-concave distributions. On the other hand, novel neural network architectures (such as transformers) require exploiting its structures for efficient optimization in crucial ways. For these models and problems: What is the role of optimization? What synergies can be exploited with the insights coming from these particular areas towards more efficient and reliable solutions? We will foster discussions directed at developing understanding of these challenges, and raising awareness of the capabilities and risks of using optimization in each of these areas.
Please note that this (in-person) workshop will take place at the New Orleans Convention Center.
The OPT2023 Organizers (preferred contact email: optmlworkshop@googlegroups.com)
- Cristóbal Guzmán (chair) (Pontificia Universidad Católica de Chile)
- Courtney Paquette (McGill University)
- Katya Scheinberg (Cornell University)
- Aaron Sidford (Stanford University)
- Sebastian Stich (CISPA Helmholtz Center for Information Security)
Registration
For registration and pricing see NeurIPS.cc.
Important Dates
- Deadline for submission of papers: October 2, 2023 (AoE)
- Notification of acceptance: October 27, 2023
- NeurIPS poster print service deadline: Nov 9, 2023
- Camera-ready papers upload to openreview: Dec 1, 2023 (OPT2023 style file required)
- Workshop date: December 15, 2023