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Main Authors: Varadarajan, Vasudha, Mahwish, Syeda, Liu, Xiaoran, Buffolino, Julia, Luhmann, Christian C., Boyd, Ryan L., Schwartz, H. Andrew
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.13326
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author Varadarajan, Vasudha
Mahwish, Syeda
Liu, Xiaoran
Buffolino, Julia
Luhmann, Christian C.
Boyd, Ryan L.
Schwartz, H. Andrew
author_facet Varadarajan, Vasudha
Mahwish, Syeda
Liu, Xiaoran
Buffolino, Julia
Luhmann, Christian C.
Boyd, Ryan L.
Schwartz, H. Andrew
contents While NLP models often seek to capture cognitive states via language, the validity of predicted states is determined by comparing them to annotations created without access the cognitive states of the authors. In behavioral sciences, cognitive states are instead measured via experiments. Here, we introduce an experiment-based framework for evaluating language-based cognitive style models against human behavior. We explore the phenomenon of decision making, and its relationship to the linguistic style of an individual talking about a recent decision they made. The participants then follow a classical decision-making experiment that captures their cognitive style, determined by how preferences change during a decision exercise. We find that language features, intended to capture cognitive style, can predict participants' decision style with moderate-to-high accuracy (AUC ~ 0.8), demonstrating that cognitive style can be partly captured and revealed by discourse patterns.
format Preprint
id arxiv_https___arxiv_org_abs_2502_13326
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Capturing Human Cognitive Styles with Language: Towards an Experimental Evaluation Paradigm
Varadarajan, Vasudha
Mahwish, Syeda
Liu, Xiaoran
Buffolino, Julia
Luhmann, Christian C.
Boyd, Ryan L.
Schwartz, H. Andrew
Computation and Language
While NLP models often seek to capture cognitive states via language, the validity of predicted states is determined by comparing them to annotations created without access the cognitive states of the authors. In behavioral sciences, cognitive states are instead measured via experiments. Here, we introduce an experiment-based framework for evaluating language-based cognitive style models against human behavior. We explore the phenomenon of decision making, and its relationship to the linguistic style of an individual talking about a recent decision they made. The participants then follow a classical decision-making experiment that captures their cognitive style, determined by how preferences change during a decision exercise. We find that language features, intended to capture cognitive style, can predict participants' decision style with moderate-to-high accuracy (AUC ~ 0.8), demonstrating that cognitive style can be partly captured and revealed by discourse patterns.
title Capturing Human Cognitive Styles with Language: Towards an Experimental Evaluation Paradigm
topic Computation and Language
url https://arxiv.org/abs/2502.13326