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arxiv: 2104.00241 · v1 · pith:AOPP26MVnew · submitted 2021-04-01 · 💻 cs.LG

Variational Inference MPC using Tsallis Divergence

classification 💻 cs.LG
keywords controlpredictivevariationalalgorithmtsalliscostdifferentdivergence
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In this paper, we provide a generalized framework for Variational Inference-Stochastic Optimal Control by using thenon-extensive Tsallis divergence. By incorporating the deformed exponential function into the optimality likelihood function, a novel Tsallis Variational Inference-Model Predictive Control algorithm is derived, which includes prior works such as Variational Inference-Model Predictive Control, Model Predictive PathIntegral Control, Cross Entropy Method, and Stein VariationalInference Model Predictive Control as special cases. The proposed algorithm allows for effective control of the cost/reward transform and is characterized by superior performance in terms of mean and variance reduction of the associated cost. The aforementioned features are supported by a theoretical and numerical analysis on the level of risk sensitivity of the proposed algorithm as well as simulation experiments on 5 different robotic systems with 3 different policy parameterizations.

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Cited by 2 Pith papers

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