2024
DOI: 10.20944/preprints202405.1932.v1
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NodeFlow: Towards End-to-end Flexible Probabilistic Regression on Tabular Data

Patryk Wielopolski,
Oleksii Furman,
Maciej Zięba

Abstract: We introduce NodeFlow, a flexible framework for probabilistic regression on tabular data that combines Neural Oblivious Decision Ensemble (NODE) and Conditional Continuous Normalizing Flows (CNF). It offers improved modeling capabilities for arbitrary probabilistic distributions, addressing the limitations of traditional parametric approaches. In NodeFlow, the NODE captures complex relationships in tabular data through a tree-like structure, while the conditional CNF utilizes the NODE’s output space as a condi… Show more

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