Dynamical System Optimization
- URL: http://arxiv.org/abs/2506.08340v1
- Date: Tue, 10 Jun 2025 01:50:38 GMT
- Title: Dynamical System Optimization
- Authors: Emo Todorov,
- Abstract summary: We develop an optimization framework centered around a core idea: once a (parametric) policy is specified, control authority is transferred to the policy, resulting in an autonomous dynamical system.<n>We derive simpler algorithms at the autonomous system level, and show that they compute the same quantities as policy gradients and Hessians.<n> Tuning of generative AI models is not only possible, but is conceptually closer to the present framework than to Reinforcement Learning.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We develop an optimization framework centered around a core idea: once a (parametric) policy is specified, control authority is transferred to the policy, resulting in an autonomous dynamical system. Thus we should be able to optimize policy parameters without further reference to controls or actions, and without directly using the machinery of approximate Dynamic Programming and Reinforcement Learning. Here we derive simpler algorithms at the autonomous system level, and show that they compute the same quantities as policy gradients and Hessians, natural gradients, proximal methods. Analogs to approximate policy iteration and off-policy learning are also available. Since policy parameters and other system parameters are treated uniformly, the same algorithms apply to behavioral cloning, mechanism design, system identification, learning of state estimators. Tuning of generative AI models is not only possible, but is conceptually closer to the present framework than to Reinforcement Learning.
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