stressor
Algorithms for Testing Models under Stress
Traditional model evaluation metrics fail to capture model performance under less than ideal conditions. This package employs techniques to evaluate models "under-stress". This includes testing models' extrapolation ability, or testing accuracy on specific sub-samples of the overall model space. Details describing stress-testing methods in this package are provided in Haycock (2023) <doi:10.26076/2am5-9f67>. The other primary contribution of this package is provided to R users access to the 'Python' library 'PyCaret' <https://pycaret.org/> for quick and easy access to auto-tuned machine learning models.
- Version0.2.0
- R version≥ 3.5
- LicenseMIT
- Needs compilation?No
- Last release05/01/2024
Documentation
Team
Sam Haycock
Brennan Bean
Show author detailsRolesAuthorUtah State University
Show author detailsRolesCopyright holder, fndThermo Fisher Scientific Inc.
Show author detailsRolesfnd
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