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Auteurs principaux: Le, Khiem, Dey, Sreejata, Galindo, Marcos Martínez, Lopez, Vanessa, Hua, Ting, Chawla, Nitesh V., Lam, Hoang Thanh
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2603.12344
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author Le, Khiem
Dey, Sreejata
Galindo, Marcos Martínez
Lopez, Vanessa
Hua, Ting
Chawla, Nitesh V.
Lam, Hoang Thanh
author_facet Le, Khiem
Dey, Sreejata
Galindo, Marcos Martínez
Lopez, Vanessa
Hua, Ting
Chawla, Nitesh V.
Lam, Hoang Thanh
contents Molecular Property Prediction (MPP) is a fundamental problem in drug discovery that has recently attracted growing attention. Large Language Models (LLMs), known for their impressive proficiency across domains, show promise as generalist models for MPP. However, their current performance remains below the threshold needed for practical adoption. To bridge this gap, we propose TreeKD for distilling the knowledge of tree-based specialist models into LLMs to complement the internal knowledge of LLMs and improve their predictive accuracy. For each property, we train a specialist decision tree using features derived from 40K functional groups in the input molecules. Then, the predictive rule learned by the decision tree, which encodes its knowledge, is verbalized and incorporated into the prompts for training LLMs. In addition, by replacing a single decision tree with a Random Forest, we introduce a test-time scaling technique called rule-consistency, which aggregates predictions generated from different prompts constructed with different rules. An extensive evaluation with two LLMs, Gemma-2-2B and Granite-3.3-2B, on the TDC benchmark with 22 prediction tasks shows that our method substantially enhances the performance of LLMs, advancing the development of generalist models for MPP.
format Preprint
id arxiv_https___arxiv_org_abs_2603_12344
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Can Decision Trees Teach Large Language Models? Distilling Verbalized Knowledge for Molecular Property Prediction
Le, Khiem
Dey, Sreejata
Galindo, Marcos Martínez
Lopez, Vanessa
Hua, Ting
Chawla, Nitesh V.
Lam, Hoang Thanh
Machine Learning
Molecular Property Prediction (MPP) is a fundamental problem in drug discovery that has recently attracted growing attention. Large Language Models (LLMs), known for their impressive proficiency across domains, show promise as generalist models for MPP. However, their current performance remains below the threshold needed for practical adoption. To bridge this gap, we propose TreeKD for distilling the knowledge of tree-based specialist models into LLMs to complement the internal knowledge of LLMs and improve their predictive accuracy. For each property, we train a specialist decision tree using features derived from 40K functional groups in the input molecules. Then, the predictive rule learned by the decision tree, which encodes its knowledge, is verbalized and incorporated into the prompts for training LLMs. In addition, by replacing a single decision tree with a Random Forest, we introduce a test-time scaling technique called rule-consistency, which aggregates predictions generated from different prompts constructed with different rules. An extensive evaluation with two LLMs, Gemma-2-2B and Granite-3.3-2B, on the TDC benchmark with 22 prediction tasks shows that our method substantially enhances the performance of LLMs, advancing the development of generalist models for MPP.
title Can Decision Trees Teach Large Language Models? Distilling Verbalized Knowledge for Molecular Property Prediction
topic Machine Learning
url https://arxiv.org/abs/2603.12344