Presents a sequential Monte Carlo scheme for probabilistic regressor chains that improves flexibility over greedy methods for multi-output regression.
System Identification through Online Sparse Gaussian Process Regression with Input Noise
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abstract
There has been a growing interest in using non-parametric regression methods like Gaussian Process (GP) regression for system identification. GP regression does traditionally have three important downsides: (1) it is computationally intensive, (2) it cannot efficiently implement newly obtained measurements online, and (3) it cannot deal with stochastic (noisy) input points. In this paper we present an algorithm tackling all these three issues simultaneously. The resulting Sparse Online Noisy Input GP (SONIG) regression algorithm can incorporate new noisy measurements in constant runtime. A comparison has shown that it is more accurate than similar existing regression algorithms. When applied to non-linear black-box system modeling, its performance is competitive with existing non-linear ARX models.
fields
cs.LG 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Probabilistic Regressor Chains with Monte Carlo Methods
Presents a sequential Monte Carlo scheme for probabilistic regressor chains that improves flexibility over greedy methods for multi-output regression.