ICML WS: Optimization for ML 2020 : ICML 2020 Workshop: Beyond First Order Methods in Machine Learning
Call For Papers
Optimization lies at the heart of many exciting developments in machine learning, statistics and signal processing. As models become more complex and datasets get larger, finding efficient, reliable and provable methods is one of the primary goals in these fields.
In the last few decades, much effort has been devoted to the development of first-order methods. These methods enjoy a low per-iteration cost and have optimal complexity, are easy to implement, and have proven to be effective for most machine learning applications. First-order methods, however, have significant limitations: (1) they require fine hyper-parameter tuning, (2) they do not incorporate curvature information, and thus are sensitive to ill-conditioning, and (3) they are often unable to fully exploit the power of distributed computing architectures.
Higher-order methods, such as Newton, quasi-Newton and adaptive gradient descent methods, are extensively used in many scientific and engineering domains. At least in theory, these methods possess several nice features: they exploit local curvature information to mitigate the effects of ill-conditioning, they avoid or diminish the need for hyper-parameter tuning, and they have enough concurrency to take advantage of distributed computing environments. Researchers have even developed stochastic versions of higher-order methods, that feature speed and scalability by incorporating curvature information in an economical and judicious manner. However, often higher-order methods are “undervalued.”
This workshop will attempt to shed light on this statement. Topics of interest include --but are not limited to-- second-order methods, adaptive gradient descent methods, regularization techniques, as well as techniques based on higher-order derivatives. This workshop can bring machine learning and optimization researchers closer, in order to facilitate a discussion with regards to underlying questions such as the following:
- Why are they not omnipresent?
- Why are higher-order methods important in machine learning, and what advantages can they offer?
- What are their limitations and disadvantages?
- How should (or could) they be implemented in practice?
- Francis Bach (INRIA)
- Coralia Cartis (Oxford University)
- Peter Richtárik (KAUST)
- Rachel Ward (UT Austin)
- Rio Yokota (Tokyo Institute of Technology)
- Boris Ginsburg (Nvidia)
- Andres Rodriguez (Intel)
- Jonathan Hsue (Google)
- Lin Xiao (Microsoft)
- Albert S. Berahas (Lehigh University)
- Amir Gholaminejad (Berkeley University)
- Anastasios Kyrillidis (Rice University)
- Michael W Mahoney (Berkeley University)
- Fred Roosta (University of Queensland)
CALL FOR PAPERS
We welcome submissions to the workshop under the general theme of “Beyond First-Order Optimization Methods in Machine Learning”. Topics of interest include, but are not limited to,
- Second-order methods
- Quasi-Newton methods
- Derivative-free methods
- Distributed methods beyond first-order
- Online methods beyond first-order
- Applications of methods beyond first-order to diverse applications (e.g., training deep neural networks, natural language processing, dictionary learning, etc)
We encourage submissions that are theoretical, empirical or both.
Submissions should be up to 4 pages excluding references, acknowledgements, and supplementary material, and should follow ICML format. The CMT-based review process will be double-blind to avoid potential conflicts of interests. Please see https://sites.google.com/view/optml-icml2020/cfp?authuser=0 for more details
Submission deadline: June 12, 2020 (23:59 ET)
Acceptance notification: June 19, 2020
Final version due: July 3, 2020
All submissions will be peer reviewed by the workshop’s program committee. Submissions will be evaluated on technical merit, empirical evaluation, and compatibility with the workshop focus.