Saved in:
Bibliographic Details
Main Authors: Yakushev, George, Shutova, Alina, Rubachev, Ivan, Bereberdina, Natalia, Sergazinov, Renat, Babenko, Artem
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.21465
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913131294359552
author Yakushev, George
Shutova, Alina
Rubachev, Ivan
Bereberdina, Natalia
Sergazinov, Renat
Babenko, Artem
author_facet Yakushev, George
Shutova, Alina
Rubachev, Ivan
Bereberdina, Natalia
Sergazinov, Renat
Babenko, Artem
contents Tabular foundation models are becoming increasingly popular for low-resource tabular problems. These models make up for small training datasets by pretraining on large volumes of synthetic data. The prior knowledge obtained via pretraining provides the exceptional performance, but the resulting model becomes a black box that is difficult to interpret and costly for inference. In this work, we explore an alternative strategy: using reasoning-capable LLMs to induce decision trees for small tabular datasets in an agentic setup. We design a minimal set of tools for constructing, analyzing, and manipulating decision trees. Equipped with these tools, the LLM combines its prior knowledge with learning from data to produce a lightweight decision tree that outperforms CART and recent non-greedy tree learners and remains competitive with tree ensembles on low-resource tabular problems. While a single agentic decision tree is competitive with state-of-the-art black box models, it also comes with a human-readable reasoning trace that can be checked for biases and data leaks. Furthermore, the reasoning-based LLM's creation process allows for additional human input to be incorporated into the tree without it being captured in data.
format Preprint
id arxiv_https___arxiv_org_abs_2509_21465
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Talking Trees: Reasoning-Assisted Induction of Decision Trees for Tabular Data
Yakushev, George
Shutova, Alina
Rubachev, Ivan
Bereberdina, Natalia
Sergazinov, Renat
Babenko, Artem
Machine Learning
Tabular foundation models are becoming increasingly popular for low-resource tabular problems. These models make up for small training datasets by pretraining on large volumes of synthetic data. The prior knowledge obtained via pretraining provides the exceptional performance, but the resulting model becomes a black box that is difficult to interpret and costly for inference. In this work, we explore an alternative strategy: using reasoning-capable LLMs to induce decision trees for small tabular datasets in an agentic setup. We design a minimal set of tools for constructing, analyzing, and manipulating decision trees. Equipped with these tools, the LLM combines its prior knowledge with learning from data to produce a lightweight decision tree that outperforms CART and recent non-greedy tree learners and remains competitive with tree ensembles on low-resource tabular problems. While a single agentic decision tree is competitive with state-of-the-art black box models, it also comes with a human-readable reasoning trace that can be checked for biases and data leaks. Furthermore, the reasoning-based LLM's creation process allows for additional human input to be incorporated into the tree without it being captured in data.
title Talking Trees: Reasoning-Assisted Induction of Decision Trees for Tabular Data
topic Machine Learning
url https://arxiv.org/abs/2509.21465