Papers

CogFormer Learn All Your Models Once

JM Huang, L Schumacher, N Stevenson… - arXiv preprint arXiv …, 2026 - arxiv.org
Statistics paper stat.ML Suggest

… Simulation-based inference (SBI) with neural networks has accelerated and transformed cognitive modeling workflows. SBI enables modelers to fit complex models that …

Cited by Link to paper

BibTeX

@article{2603.20520v2,
Author = {Jerry M. Huang and Lukas Schumacher and Niek Stevenson and Stefan T. Radev},
Title = {CogFormer: Learn All Your Models Once},
Eprint = {2603.20520v2},
ArchivePrefix = {arXiv},
PrimaryClass = {stat.ML},
Abstract = {Simulation-based inference (SBI) with neural networks has accelerated and transformed cognitive modeling workflows. SBI enables modelers to fit complex models that were previously difficult or impossible to estimate, while also allowing rapid estimation across large numbers of datasets. However, the utility of SBI for iterating over varying modeling assumptions remains limited: changes to parameterizations, generative functions, priors, and design variables all necessitate model retraining, thereby diminishing the benefits of amortization. To address these issues, we pilot the CogFormer, a meta-amortized framework for cognitive modeling. Our framework trains a transformer-based architecture that remains valid across a combinatorial number of structurally similar models, allowing for changing data types, parameters, design matrices, and sample sizes. We present promising quantitative results across families of decision-making models for binary, multi-alternative, and continuous responses. Our evaluation suggests that CogFormer can accurately estimate parameters across model families with minimal amortization offset, making it a potentially powerful engine that catalyzes cognitive modeling workflows.},
Year = {2026},
Month = {Mar},
Url = {http://arxiv.org/abs/2603.20520v2},
File = {2603.20520v2.pdf}
}

Share