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Trigonometric Quadrature Fourier Features for Scalable Gaussian Process Regression

Kevin Li, Max Balakirsky,Simon Mak

INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND STATISTICS, VOL 238(2024)

Duke University Duke University

Cited 1|Views8
Abstract
Fourier feature approximations have been successfully applied in the literature for scalable Gaussian Process (GP) regression. In particular, Quadrature Fourier Features (QFF) derived from Gaussian quadrature rules have gained popularity in recent years due to their improved approximation accuracy and better calibrated uncertainty estimates compared to Random Fourier Feature (RFF) methods. However, a key limitation of QFF is that its performance can suffer from well-known pathologies related to highly oscillatory quadrature, resulting in mediocre approximation with limited features. We address this critical issue via a new Trigonometric Quadrature Fourier Feature (TQFF) method, which uses a novel non-Gaussian quadrature rule specifically tailored for the desired Fourier transform. We derive an exact quadrature rule for TQFF, along with kernel approximation error bounds for the resulting feature map. We then demonstrate the improved performance of our method over RFF and Gaussian QFF in a suite of numerical experiments and applications, and show the TQFF enjoys accurate GP approximations over a broad range of length-scales using fewer features.
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要点】:论文提出了一种新的三角函数求积傅里叶特征(TQFF),通过使用专门设计的非高斯求积规则,克服了传统求积傅里叶特征方法在处理高振荡函数时的局限性,提高了高斯过程回归的可扩展性和准确性。

方法】:作者通过推导一种精确的求积规则和相应的核逼近误差界限,设计了一种新的傅里叶特征近似方法,即TQFF。

实验】:在一系列数值实验和应用中,作者展示了TQFF方法相较于随机傅里叶特征(RFF)和传统高斯求积傅里叶特征(QFF)的优越性能,并且使用更少的特征即可在广泛的长度尺度上实现准确的高斯过程近似。具体数据集名称未在摘要中提及。