Generative modeling of density regression through tree flows
Zhuoqun Wang, Naoki Awaya, Li Ma

TL;DR
This paper introduces a novel flow-based model using tree transforms for density regression on tabular data, enabling efficient conditional density estimation and synthetic data generation with superior performance.
Contribution
It proposes a tree-based flow model for density regression that combines analytical density evaluation with an efficient training algorithm, advancing generative modeling for tabular data.
Findings
Achieves comparable or better likelihood performance than state-of-the-art methods.
Offers efficient training and sampling with reduced computational resources.
Demonstrates practical utility in generating synthetic microbiome data.
Abstract
A common objective in the analysis of tabular data is estimating the conditional distribution (in contrast to only producing predictions) of a set of "outcome" variables given a set of "covariates", which is sometimes referred to as the "density regression" problem. Beyond estimation on the conditional distribution, the generative ability of drawing synthetic samples from the learned conditional distribution is also desired as it further widens the range of applications. We propose a flow-based generative model tailored for the density regression task on tabular data. Our flow applies a sequence of tree-based piecewise-linear transforms on initial uniform noise to eventually generate samples from complex conditional densities of (univariate or multivariate) outcomes given the covariates and allows efficient analytical evaluation of the fitted conditional density on any point in the…
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Taxonomy
TopicsForest ecology and management · Data Analysis with R · Plant Water Relations and Carbon Dynamics
MethodsSparse Evolutionary Training
