Autoregressive Language Models For Estimating the Entropy of Epic EHR Audit Logs
Abstract
Transformer-based tabular language models are evaluated to measure entropy in EHR workflow action sequences, offering a more detailed analysis than existing techniques.
EHR audit logs are a highly granular stream of events that capture clinician activities, and is a significant area of interest for research in characterizing clinician workflow on the electronic health record (EHR). Existing techniques to measure the complexity of workflow through EHR audit logs (audit logs) involve time- or frequency-based cross-sectional aggregations that are unable to capture the full complexity of a EHR session. We briefly evaluate the usage of transformer-based tabular language model (tabular LM) in measuring the entropy or disorderedness of action sequences within workflow and release the evaluated models publicly.
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