A PMT-constrained LLM framework with A-TLM configuration outperforms classical imputation methods on RMSE and bias for block-wise missing disaster survey data.
International Journal of Disaster Risk Reduction , year =
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Can Large Language Models Revolutionize Survey Research? Experiments with Disaster Preparedness Responses
A PMT-constrained LLM framework with A-TLM configuration outperforms classical imputation methods on RMSE and bias for block-wise missing disaster survey data.