Spatial Dependencies in Item Response Theory: Gaussian Process Priors for Geographic and Cognitive Measurement
Mingya Huang, Soham Ghosh

TL;DR
This paper introduces SGP-IRT, a flexible spatial IRT model using Gaussian process priors to better capture complex spatial dependencies in geographic and cognitive assessments, improving parameter estimation and measurement accuracy.
Contribution
The paper proposes SGP-IRT, a novel spatial IRT approach that replaces rigid priors with Gaussian processes, enabling modeling of complex spatial relationships and accommodating polytomous responses.
Findings
Improved parameter recovery in simulations.
Enhanced measurement precision in empirical studies.
Better modeling of complex spatial dependencies.
Abstract
Measurement validity in Item Response Theory depends on appropriately modeling dependencies between items when these reflect meaningful theoretical structures rather than random measurement error. In ecological assessment, citizen scientists identifying species across geographic regions exhibit systematic spatial patterns in task difficulty due to environmental factors. Similarly, in Author Recognition Tests, literary knowledge organizes by genre, where familiarity with science fiction authors systematically predicts recognition of other science fiction authors. Current spatial Item Response Theory methods, represented by the 1PLUS, 2PLUS, and 3PLUS model family, address these dependencies but remain limited by (1) binary response restrictions, and (2) conditional autoregressive priors that impose rigid local correlation assumptions, preventing effective modeling of complex spatial…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference
