Discovering Semantic Latent Structures in Psychological Scales: A Response-Free Pathway to Efficient Simplification
Bo Wang, Yuxuan Zhang, Yueqin Hu, Hanchao Hou, Kaiping Peng, Shiguang Ni

TL;DR
This paper introduces a response-free, semantic-based framework using topic modeling and clustering to simplify psychological scales while maintaining their psychometric properties.
Contribution
It presents a novel semantic latent structure approach for scale reduction that does not rely on traditional response-based methods.
Findings
Achieved an average 60.5% reduction in scale length.
Recovered coherent factor-like groupings aligned with established constructs.
Maintained high psychometric integrity and inter-factor correlations.
Abstract
Psychological scale refinement traditionally relies on response-based methods such as factor analysis, item response theory, and network psychometrics to optimize item composition. Although rigorous, these approaches require large samples and may be constrained by data availability and cross-cultural comparability. Recent advances in natural language processing suggest that the semantic structure of questionnaire items may encode latent construct organization, offering a complementary response-free perspective. We introduce a topic-modeling framework that operationalizes semantic latent structure for scale simplification. Items are encoded using contextual sentence embeddings and grouped via density-based clustering to discover latent semantic factors without predefining their number. Class-based term weighting derives interpretable topic representations that approximate constructs and…
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Taxonomy
TopicsMental Health Research Topics · Mental Health via Writing · Psychometric Methodologies and Testing
