56
v1v2 (latest)

Argument Reconstruction as Supervision for Critical Thinking in LLMs

Hyun Ryu
Gyouk Chu
Gregor Betz
Eunho Yang
Carolyn Rose
Sean Welleck
Main:9 Pages
21 Figures
Bibliography:2 Pages
14 Tables
Appendix:24 Pages
Abstract

To think critically about arguments, human learners are trained to identify, reconstruct, and evaluate arguments. Argument reconstruction is especially important because it makes an argument's underlying inferences explicit. However, it remains unclear whether LLMs can similarly enhance their critical thinking ability by learning to reconstruct arguments. To address this question, we introduce a holistic framework with three contributions. We (1) propose an engine that automatically reconstructs arbitrary arguments (GAAR), (2) synthesize a new high-quality argument reconstruction dataset (Arguinas) using the GAAR engine, and (3) investigate whether learning argument reconstruction benefits downstream critical thinking tasks. Our experimental results show that, across seven critical thinking tasks, models trained to learn argument reconstruction outperform models that do not, with the largest performance gains observed when training on the proposed Arguinas dataset.

View on arXiv
Comments on this paper