Marginalizable Density Models

06/08/2021
by   Dar Gilboa, et al.
18

Probability density models based on deep networks have achieved remarkable success in modeling complex high-dimensional datasets. However, unlike kernel density estimators, modern neural models do not yield marginals or conditionals in closed form, as these quantities require the evaluation of seldom tractable integrals. In this work, we present the Marginalizable Density Model Approximator (MDMA), a novel deep network architecture which provides closed form expressions for the probabilities, marginals and conditionals of any subset of the variables. The MDMA learns deep scalar representations for each individual variable and combines them via learned hierarchical tensor decompositions into a tractable yet expressive CDF, from which marginals and conditional densities are easily obtained. We illustrate the advantage of exact marginalizability in several tasks that are out of reach of previous deep network-based density estimation models, such as estimating mutual information between arbitrary subsets of variables, inferring causality by testing for conditional independence, and inference with missing data without the need for data imputation, outperforming state-of-the-art models on these tasks. The model also allows for parallelized sampling with only a logarithmic dependence of the time complexity on the number of variables.

READ FULL TEXT

page 7

page 18

page 19

page 21

research
08/14/2018

Multivariate Density Estimation with Missing Data

Multivariate density estimation is a popular technique in statistics wit...
research
06/22/2022

Neural Inverse Transform Sampler

Any explicit functional representation f of a density is hampered by two...
research
04/20/2020

Roundtrip: A Deep Generative Neural Density Estimator

Density estimation is a fundamental problem in both statistics and machi...
research
10/07/2013

A Deep and Tractable Density Estimator

The Neural Autoregressive Distribution Estimator (NADE) and its real-val...
research
05/22/2023

Squared Neural Families: A New Class of Tractable Density Models

Flexible models for probability distributions are an essential ingredien...
research
10/12/2021

Information Theoretic Structured Generative Modeling

Rényi's information provides a theoretical foundation for tractable and ...
research
12/25/2020

An analytic physically motivated model of the mammalian cochlea

We develop an analytic model of the mammalian cochlea. We use a mixed ph...

Please sign up or login with your details

Forgot password? Click here to reset