Multi-Response Heteroscedastic Gaussian Process Models and Their
Inference
- URL: http://arxiv.org/abs/2308.15370v2
- Date: Wed, 30 Aug 2023 20:20:23 GMT
- Title: Multi-Response Heteroscedastic Gaussian Process Models and Their
Inference
- Authors: Taehee Lee and Jun S. Liu
- Abstract summary: We propose a novel framework for the modeling of heteroscedastic covariance functions.
We employ variational inference to approximate the posterior and facilitate posterior predictive modeling.
We show that our proposed framework offers a robust and versatile tool for a wide array of applications.
- Score: 1.52292571922932
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Despite the widespread utilization of Gaussian process models for versatile
nonparametric modeling, they exhibit limitations in effectively capturing
abrupt changes in function smoothness and accommodating relationships with
heteroscedastic errors. Addressing these shortcomings, the heteroscedastic
Gaussian process (HeGP) regression seeks to introduce flexibility by
acknowledging the variability of residual variances across covariates in the
regression model. In this work, we extend the HeGP concept, expanding its scope
beyond regression tasks to encompass classification and state-space models. To
achieve this, we propose a novel framework where the Gaussian process is
coupled with a covariate-induced precision matrix process, adopting a mixture
formulation. This approach enables the modeling of heteroscedastic covariance
functions across covariates. To mitigate the computational challenges posed by
sampling, we employ variational inference to approximate the posterior and
facilitate posterior predictive modeling. Additionally, our training process
leverages an EM algorithm featuring closed-form M-step updates to efficiently
evaluate the heteroscedastic covariance function. A notable feature of our
model is its consistent performance on multivariate responses, accommodating
various types (continuous or categorical) seamlessly. Through a combination of
simulations and real-world applications in climatology, we illustrate the
model's prowess and advantages. By overcoming the limitations of traditional
Gaussian process models, our proposed framework offers a robust and versatile
tool for a wide array of applications.
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