Publications

DEPARTMENTS

Emperical Interference

Haptic Intelligence

Modern Magnetic Systems

Perceiving Systems

Physical Intelligence

Robotic Materials

Social Foundations of Computation


Research Groups

Autonomous Vision

Autonomous Learning

Bioinspired Autonomous Miniature Robots

Dynamic Locomotion

Embodied Vision

Human Aspects of Machine Learning

Intelligent Control Systems

Learning and Dynamical Systems

Locomotion in Biorobotic and Somatic Systems

Micro, Nano, and Molecular Systems

Movement Generation and Control

Neural Capture and Synthesis

Physics for Inference and Optimization

Organizational Leadership and Diversity

Probabilistic Learning Group


Topics

Robot Learning

Conference Paper

2022

Autonomous Learning

Robotics

AI

Career

Award


Learning and Dynamical Systems Article A Pontryagin Perspective on Reinforcement Learning Eberhard, O., Vernade, C., Muehlebach, M. Learning for Dynamics and Control Conference, 2024 (Submitted) URL BibTeX

Learning and Dynamical Systems Article Balancing a 3D Inverted Pendulum using Remote Magnetic Manipulation Zughaibi, J., Nelson, B. J., Muehlebach, M. Robotics and Automation Letters, 2024 (In revision) URL BibTeX

Learning and Dynamical Systems Article Gray-box nonlinear feedback optimization He, Z., Bolognani, S., Muehlebach, M., Dörfler, F. IEEE Transactions on Automatic Control, 2024 (Submitted) URL BibTeX

Learning and Dynamical Systems Article Towards a systems theory of algorithms Dörfler, F., He, Z., Belgioioso, G., Bolognani, S., Lygeros, J., Muehlebach, M. IEEE Control System Letters, 2024 (Published) URL BibTeX

Learning and Dynamical Systems Article Bi-level Motion Imitation for Humanoid Robots Zhao, W., Zhao, Y., Pajarinen, J., Muehlebach, M. Conference on Robot Learning, 2024 (Published) BibTeX

Learning and Dynamical Systems Article Event-Based Federated Q-Learning Er, D., Muehlebach, M. Workshop on Foundations of RL and Control, International Conference on Machine Learning, 2024 (Published) BibTeX

Learning and Dynamical Systems Article Online Performance Optimization of Nonlinear Systems: A Gray-Box Approach He, Z., Muehlebach, M., Bolognani, S., Dörfler, F. Workshop on Foundations of RL and Control, International Conference on Machine Learning, 2024 (Published) BibTeX

Learning and Dynamical Systems Article Toward a Systems Theory of Algorithms Doerfler, F., He, Z., Belgioioso, G., Bolognani, S., Lygeros, J., Muehlebach, M. IEEE CONTROL SYSTEMS LETTERS, 8:1198 - 1210, 2024 (Published) DOI URL BibTeX

Learning and Dynamical Systems Article On Constraints in First-Order Optimization: A View from Non-Smooth Dynamical Systems Muehlebach, M., Jordan, M. I. Journal of Machine Learning Research, 23, 2022 (Published)
We introduce a class of first-order methods for smooth constrained optimization that are based on an analogy to non-smooth dynamical systems. Two distinctive features of our approach are that (i) projections or optimizations over the entire feasible set are avoided, in stark contrast to projected gradient methods or the Frank-Wolfe method, and (ii) iterates are allowed to become infeasible, which differs from active set or feasible direction methods, where the descent motion stops as soon as a new constraint is encountered. The resulting algorithmic procedure is simple to implement even when constraints are nonlinear, and is suitable for large-scale constrained optimization problems in which the feasible set fails to have a simple structure. The key underlying idea is that constraints are expressed in terms of velocities instead of positions, which has the algorithmic consequence that optimizations over feasible sets at each iteration are replaced with optimizations over local, sparse convex approximations. The result is a simplified suite of algorithms and an expanded range of possible applications in machine learning.
URL BibTeX