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Publications of M. Soltanolkotabi
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H. Mohammadi,
M. Tinati,
S. Tu,
M. Soltanolkotabi,
and M. R. Jovanovic.
Stability properties of gradient flow dynamics for the symmetric low-rank matrix factorization problem.
IEEE Control Syst. Lett.,
2024.
Note: Submitted.
Keyword(s): Low rank matrix factorization,
Nonconvex optimization,
Stability of nonlinear systems,
Gradient flow dynamics.
[bibtex-entry]
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H. Mohammadi,
A. Zare,
M. Soltanolkotabi,
and M. R. Jovanovic.
Convergence and sample complexity of gradient methods for the model-free linear-quadratic regulator problem.
IEEE Trans. Automat. Control,
67(5):2435-2450,
May 2022.
Keyword(s): Data-driven control,
Gradient descent,
Gradient-flow dynamics,
Linear quadratic regulator,
Model-free control,
Nonconvex optimization,
Optimization,
Optimal control,
Polyak-Lojasiewicz inequality,
Random search method,
Reinforcement learning,
Sample complexity.
[bibtex-entry]
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H. Mohammadi,
M. Soltanolkotabi,
and M. R. Jovanovic.
On the linear convergence of random search for discrete-time LQR.
IEEE Control Syst. Lett.,
5(3):989-994,
July 2021.
Keyword(s): Data-driven control,
Gradient descent,
Linear quadratic regulator,
Model-free control,
Nonconvex optimization,
Optimization,
Optimal control,
Random search method,
Reinforcement learning,
Sample complexity.
[bibtex-entry]
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H. Mohammadi,
M. Soltanolkotabi,
and M. R. Jovanovic.
On the lack of gradient domination for linear quadratic Gaussian problems with incomplete state information.
In Proceedings of the 60th IEEE Conference on Decision and Control,
Austin, TX,
pages 1120-1124,
2021.
Keyword(s): Data-driven control,
Gradient descent,
Gradient-flow dynamics,
Model-free control,
Nonconvex optimization,
Optimization,
Optimal control,
Polyak-Lojasiewicz inequality,
Random search method,
Reinforcement learning,
Sample complexity.
[bibtex-entry]
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H. Mohammadi,
M. Soltanolkotabi,
and M. R. Jovanovic.
Learning the model-free linear quadratic regulator via random search.
In Proceedings of Machine Learning Research, 2nd Annual Conference on Learning for Dynamics and Control,
volume 120,
Berkeley, CA,
pages 1-9,
2020.
Keyword(s): Data-driven control,
Gradient descent,
Gradient-flow dynamics,
Linear quadratic regulator,
Model-free control,
Nonconvex optimization,
Optimization,
Optimal control,
Polyak-Lojasiewicz inequality,
Random search method,
Reinforcement learning,
Sample complexity.
[bibtex-entry]
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H. Mohammadi,
M. Soltanolkotabi,
and M. R. Jovanovic.
Random search for learning the linear quadratic regulator.
In Proceedings of the 2020 American Control Conference,
Denver, CO,
pages 4798-4803,
2020.
Keyword(s): Data-driven control,
Gradient descent,
Gradient-flow dynamics,
Linear quadratic regulator,
Model-free control,
Nonconvex optimization,
Optimization,
Optimal control,
Polyak-Lojasiewicz inequality,
Random search method,
Reinforcement learning,
Sample complexity.
[bibtex-entry]
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H. Mohammadi,
A. Zare,
M. Soltanolkotabi,
and M. R. Jovanovic.
Global exponential convergence of gradient methods over the nonconvex landscape of the linear quadratic regulator.
In Proceedings of the 58th IEEE Conference on Decision and Control,
Nice, France,
pages 7474-7479,
2019.
Keyword(s): Data-driven control,
Global exponential stability,
Gradient descent,
Gradient-flow dynamics,
Model-free control,
Nonconvex optimization,
Optimization,
Optimal control,
Reinforcement learning.
[bibtex-entry]
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H. Mohammadi,
M. Soltanolkotabi,
and M. R. Jovanovic.
Model-free linear quadratic regulator.
In K. G. Vamvoudakis,
Y. Wan,
F. Lewis,
and D. Cansever, editors, Handbook of Reinforcement Learning and Control.
Springer International Publishing,
2021.
Note: Doi:10.1007/978-3-030-60990-0.
Keyword(s): Data-driven control,
Gradient descent,
Gradient-flow dynamics,
Linear quadratic regulator,
Model-free control,
Nonconvex optimization,
Optimization,
Optimal control,
Polyak-Lojasiewicz inequality,
Random search method,
Reinforcement learning,
Sample complexity.
[bibtex-entry]
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Last modified: Sat Oct 5 22:00:41 2024
Author: mihailo.
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