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Continuous-Time Flows for Efficient Inference and Density Estimation

  • Changyou Chen
  • , Chunyuan Li
  • , Liqun Chen
  • , Wenlin Wang
  • , Yunchen Pu
  • , Lawrence Carin
  • Duke University

Research output: Contribution to journalConference articlepeer-review

12 Scopus citations

Abstract

Two fundamental problems in unsupervised learning are efficient inference for latent-variable models and robust density estimation based on large amounts of unlabeled data. Algorithms for the two tasks, such as normalizing flows and generative adversarial networks (GANs), are often developed independently. In this paper, we propose the concept of continuous-time flows (CTFs), a family of diffusion-based methods that are able to asymptotically approach a target distribution. Distinct from normalizing flows and GANs, CTFs can be adopted to achieve the above two goals in one framework, with theoretical guarantees. Our framework includes distilling knowledge from a CTF for efficient inference, and learning an explicit energy-based distribution with CTFs for density estimation. Both tasks rely on a new technique for distribution matching within amortized learning. Experiments on various tasks demonstrate promising performance of the proposed CTF framework, compared to related techniques.

Original languageEnglish
Pages (from-to)824-833
Number of pages10
JournalProceedings of Machine Learning Research
Volume80
StatePublished - 2018
Event35th International Conference on Machine Learning, ICML 2018 - Stockholm, Sweden
Duration: Jul 10 2018Jul 15 2018

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