Timezone: »
Poster
Sampling in Constrained Domains with Orthogonal-Space Variational Gradient Descent
Ruqi Zhang · Qiang Liu · Xin Tong
Sampling methods, as important inference and learning techniques, are typically designed for unconstrained domains. However, constraints are ubiquitous in machine learning problems, such as those on safety, fairness, robustness, and many other properties that must be satisfied to apply sampling results in real-life applications. Enforcing these constraints often leads to implicitly-defined manifolds, making efficient sampling with constraints very challenging. In this paper, we propose a new variational framework with a designed orthogonal-space gradient flow (O-Gradient) for sampling on a manifold $\mathcal{G}_0$ defined by general equality constraints. O-Gradient decomposes the gradient into two parts: one decreases the distance to $\mathcal{G}_0$ and the other decreases the KL divergence in the orthogonal space. While most existing manifold sampling methods require initialization on $\mathcal{G}_0$, O-Gradient does not require such prior knowledge. We prove that O-Gradient converges to the target constrained distribution with rate $\widetilde{O}(1/\text{the number of iterations})$ under mild conditions. Our proof relies on a new Stein characterization of conditional measure which could be of independent interest. We implement O-Gradient through both Langevin dynamics and Stein variational gradient descent and demonstrate its effectiveness in various experiments, including Bayesian deep neural networks.
Author Information
Ruqi Zhang (Purdue University)
Qiang Liu (Dartmouth College)
Xin Tong (National University of Singapore)
More from the Same Authors
-
2021 Spotlight: Profiling Pareto Front With Multi-Objective Stein Variational Gradient Descent »
Xingchao Liu · Xin Tong · Qiang Liu -
2022 : BOME! Bilevel Optimization Made Easy: A Simple First-Order Approach »
Mao Ye · Bo Liu · Stephen Wright · Peter Stone · Qiang Liu -
2022 : Diffusion-based Molecule Generation with Informative Prior Bridges »
Chengyue Gong · Lemeng Wu · Xingchao Liu · Mao Ye · Qiang Liu -
2022 : HotProtein: A Novel Framework for Protein Thermostability Prediction and Editing »
Tianlong Chen · Chengyue Gong · Daniel Diaz · Xuxi Chen · Jordan Wells · Qiang Liu · Zhangyang Wang · Andrew Ellington · Alex Dimakis · Adam Klivans -
2022 : First hitting diffusion models »
Mao Ye · Lemeng Wu · Qiang Liu -
2022 : Neural Volumetric Mesh Generator »
Yan Zheng · Lemeng Wu · Xingchao Liu · Zhen Chen · Qiang Liu · Qixing Huang -
2022 : Flow Straight and Fast: Learning to Generate and Transfer Data with Rectified Flow »
Xingchao Liu · Chengyue Gong · Qiang Liu -
2022 : Let us Build Bridges: Understanding and Extending Diffusion Generative Models »
Xingchao Liu · Lemeng Wu · Mao Ye · Qiang Liu -
2022 : On Equivalences between Weight and Function-Space Langevin Dynamics »
Ziyu Wang · Yuhao Zhou · Ruqi Zhang · Jun Zhu -
2022 Poster: First Hitting Diffusion Models for Generating Manifold, Graph and Categorical Data »
Mao Ye · Lemeng Wu · Qiang Liu -
2022 Poster: BOME! Bilevel Optimization Made Easy: A Simple First-Order Approach »
Bo Liu · Mao Ye · Stephen Wright · Peter Stone · Qiang Liu -
2022 Poster: Diffusion-based Molecule Generation with Informative Prior Bridges »
Lemeng Wu · Chengyue Gong · Xingchao Liu · Mao Ye · Qiang Liu -
2021 Poster: Conflict-Averse Gradient Descent for Multi-task learning »
Bo Liu · Xingchao Liu · Xiaojie Jin · Peter Stone · Qiang Liu -
2021 Poster: Sampling with Trusthworthy Constraints: A Variational Gradient Framework »
Xingchao Liu · Xin Tong · Qiang Liu -
2021 Poster: Automatic and Harmless Regularization with Constrained and Lexicographic Optimization: A Dynamic Barrier Approach »
Chengyue Gong · Xingchao Liu · Qiang Liu -
2021 Poster: argmax centroid »
Chengyue Gong · Mao Ye · Qiang Liu -
2021 Poster: Profiling Pareto Front With Multi-Objective Stein Variational Gradient Descent »
Xingchao Liu · Xin Tong · Qiang Liu -
2020 Poster: Asymptotically Optimal Exact Minibatch Metropolis-Hastings »
Ruqi Zhang · A. Feder Cooper · Christopher De Sa -
2020 Poster: Implicit Regularization and Convergence for Weight Normalization »
Xiaoxia Wu · Edgar Dobriban · Tongzheng Ren · Shanshan Wu · Zhiyuan Li · Suriya Gunasekar · Rachel Ward · Qiang Liu -
2020 Spotlight: Asymptotically Optimal Exact Minibatch Metropolis-Hastings »
Ruqi Zhang · A. Feder Cooper · Christopher De Sa -
2019 Poster: Poisson-Minibatching for Gibbs Sampling with Convergence Rate Guarantees »
Ruqi Zhang · Christopher De Sa -
2019 Spotlight: Poisson-Minibatching for Gibbs Sampling with Convergence Rate Guarantees »
Ruqi Zhang · Christopher De Sa