Improving sequential latent variable models with autoregressive flows

作者:Joseph Marino, Lei Chen, Jiawei He, Stephan Mandt

摘要

We propose an approach for improving sequence modeling based on autoregressive normalizing flows. Each autoregressive transform, acting across time, serves as a moving frame of reference, removing temporal correlations and simplifying the modeling of higher-level dynamics. This technique provides a simple, general-purpose method for improving sequence modeling, with connections to existing and classical techniques. We demonstrate the proposed approach both with standalone flow-based models and as a component within sequential latent variable models. Results are presented on three benchmark video datasets and three other time series datasets, where autoregressive flow-based dynamics improve log-likelihood performance over baseline models. Finally, we illustrate the decorrelation and improved generalization properties of using flow-based dynamics.

论文关键词:Autoregressive flows, Latent variable models, Sequence modeling

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10994-021-06092-6