Diffusion Bridge Variational Inference for Deep Gaussian Processes
- URL: http://arxiv.org/abs/2509.19078v2
- Date: Wed, 01 Oct 2025 09:29:45 GMT
- Title: Diffusion Bridge Variational Inference for Deep Gaussian Processes
- Authors: Jian Xu, Qibin Zhao, John Paisley, Delu Zeng,
- Abstract summary: Diffusion Bridge Variational Inference (DBVI) is a principled extension of Denoising diffusion variational inference (DDVI)<n>DBVI initiates the reverse diffusion from a learnable, data-dependent initial distribution.<n>It consistently outperforms DDVI and other variational baselines in predictive accuracy, convergence speed, and posterior quality.
- Score: 31.082191748525137
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Deep Gaussian processes (DGPs) enable expressive hierarchical Bayesian modeling but pose substantial challenges for posterior inference, especially over inducing variables. Denoising diffusion variational inference (DDVI) addresses this by modeling the posterior as a time-reversed diffusion from a simple Gaussian prior. However, DDVI's fixed unconditional starting distribution remains far from the complex true posterior, resulting in inefficient inference trajectories and slow convergence. In this work, we propose Diffusion Bridge Variational Inference (DBVI), a principled extension of DDVI that initiates the reverse diffusion from a learnable, data-dependent initial distribution. This initialization is parameterized via an amortized neural network and progressively adapted using gradients from the ELBO objective, reducing the posterior gap and improving sample efficiency. To enable scalable amortization, we design the network to operate on the inducing inputs, which serve as structured, low-dimensional summaries of the dataset and naturally align with the inducing variables' shape. DBVI retains the mathematical elegance of DDVI, including Girsanov-based ELBOs and reverse-time SDEs,while reinterpreting the prior via a Doob-bridged diffusion process. We derive a tractable training objective under this formulation and implement DBVI for scalable inference in large-scale DGPs. Across regression, classification, and image reconstruction tasks, DBVI consistently outperforms DDVI and other variational baselines in predictive accuracy, convergence speed, and posterior quality.
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