MLLGJun 6, 2022

Sparse Bayesian Learning for Complex-Valued Rational Approximations

arXiv:2206.02523v24 citationsh-index: 30
Originality Incremental advance
AI Analysis

This work addresses computational efficiency in engineering simulations for practitioners dealing with high-dimensional or high-degree models, though it is incremental as it builds on existing rational approximation and sparse Bayesian techniques.

The paper tackles the challenge of building accurate surrogate models for complex-valued, highly non-linear engineering systems by using a sparse Bayesian learning approach for rational approximations, reducing the required sample size and computational cost compared to traditional least-squares methods.

Surrogate models are used to alleviate the computational burden in engineering tasks, which require the repeated evaluation of computationally demanding models of physical systems, such as the efficient propagation of uncertainties. For models that show a strongly non-linear dependence on their input parameters, standard surrogate techniques, such as polynomial chaos expansion, are not sufficient to obtain an accurate representation of the original model response. Through applying a rational approximation instead, the approximation error can be efficiently reduced for models whose non-linearity is accurately described through a rational function. Specifically, our aim is to approximate complex-valued models. A common approach to obtain the coefficients in the surrogate is to minimize the sample-based error between model and surrogate in the least-square sense. In order to obtain an accurate representation of the original model and to avoid overfitting, the sample set has be two to three times the number of polynomial terms in the expansion. For models that require a high polynomial degree or are high-dimensional in terms of their input parameters, this number often exceeds the affordable computational cost. To overcome this issue, we apply a sparse Bayesian learning approach to the rational approximation. Through a specific prior distribution structure, sparsity is induced in the coefficients of the surrogate model. The denominator polynomial coefficients as well as the hyperparameters of the problem are determined through a type-II-maximum likelihood approach. We apply a quasi-Newton gradient-descent algorithm in order to find the optimal denominator coefficients and derive the required gradients through application of $\mathbb{CR}$-calculus.

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