LQG Online Learning

Author:

Gnecco Giorgio1,Bemporad Alberto1,Gori Marco2,Sanguineti Marcello3

Affiliation:

1. DYSCO Research Unit, IMT School for Advanced Studies, Piazza S. Francesco, 19-55110 Lucca, Italy

2. DIISM Department, University of Siena, Via Roma, 56-53100 Siena, Italy

3. DIBRIS Department, University of Genoa, Via Opera Pia, 13-16145 Genova, Italy

Abstract

Optimal control theory and machine learning techniques are combined to formulate and solve in closed form an optimal control formulation of online learning from supervised examples with regularization of the updates. The connections with the classical linear quadratic gaussian (LQG) optimal control problem, of which the proposed learning paradigm is a nontrivial variation as it involves random matrices, are investigated. The obtained optimal solutions are compared with the Kalman filter estimate of the parameter vector to be learned. It is shown that the proposed algorithm is less sensitive to outliers with respect to the Kalman estimate (thanks to the presence of the regularization term), thus providing smoother estimates with respect to time. The basic formulation of the proposed online learning framework refers to a discrete-time setting with a finite learning horizon and a linear model. Various extensions are investigated, including the infinite learning horizon and, via the so-called kernel trick, the case of nonlinear models.

Publisher

MIT Press - Journals

Subject

Cognitive Neuroscience,Arts and Humanities (miscellaneous)

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Data‐driven performance metrics for neural network learning;International Journal of Adaptive Control and Signal Processing;2023-10-20

2. Learning of neural network with optimal control tools;Engineering Applications of Artificial Intelligence;2023-05

3. Linear Quadratic Gaussian using Kalman Network and Reinforcement Learning for Discrete-Time System;2022 12th International Conference on System Engineering and Technology (ICSET);2022-10-03

4. Machine-Learning Techniques for the Optimal Design of Acoustic Metamaterials;Journal of Optimization Theory and Applications;2019-12-11

5. On the trade-off between number of examples and precision of supervision in machine learning problems;Optimization Letters;2019-09-30

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