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Many metrics such as accuracy rate (ACC), area under curve (AUC), Jaccard index (JI), and Cohen’s kappa coefficient are available to measure the success of the system in pattern recognition and machine/deep learning systems. However, the superiority of one system to one other cannot be determined based on the mentioned metrics. This is because such a system can be successful using one metric, but not the other ones.
Moreover, such metrics are insufficient when the number of samples in the classes is unequal (imbalanced data). In this case, naturally, by using these metrics, a sensible comparison cannot be made between two given systems. In the present study, the comprehensive, fair, and accurate Roza metric is introduced for evaluating classification systems.
This metric, which facilitates the comparison of systems, expresses the summary of many metrics with a single value.
Cite As
Melek, Mesut, and Negin Melek. “Roza: a New and Comprehensive Metric for Evaluating Classification Systems.” Computer Methods in Biomechanics and Biomedical Engineering, Informa UK Limited, Oct. 2021, pp. 1–13, doi:10.1080/10255842.2021.1995721.
General Information
- Version 1.0.0 (1.47 KB)
MATLAB Release Compatibility
- Compatible with any release
Platform Compatibility
- Windows
- macOS
- Linux
| Version | Published | Release Notes | Action |
|---|---|---|---|
| 1.0.0 |
