Masked Autoregressive Flow for Density Estimation with George Papamakarios
EPISODE 145
|
MAY
28,
2018
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About this Episode
In this episode, University of Edinburgh Phd student George Papamakarios and I discuss his paper "Masked Autoregressive Flow for Density Estimation."
George walks us through the idea of Masked Autoregressive Flow, which uses neural networks to produce estimates of probability densities from a set of input examples. We discuss some of the related work that's laid the groundwork for his research, including Inverse Autoregressive Flow, Real NVP and Masked Auto-encoders. We also look at the properties of probability density networks and discuss some of the challenges associated with this effort.
About the Guest
George Papamakarios
DeepMind
Resources
- Masked autoregressive flow for density estimates
- Masked autoregressive flow for density estimates - Code
- Masked autoregressive flow for density estimates - NIPS Video
- Improving Variational Inference with Inverse Autoregressive Flow
- Density estimation using Real NVP
- MADE: Masked Autoencoder for Distribution Estimation
- TrainAI 2018 Series Page
- TWIML Presents: Series page