MLcps: machine learning cumulative performance score for classification problems.
Akshay AkshayMasoud AbediNavid ShekarchizadehFiona C BurkhardMitali KatochAlex Bigger-AllenRosalyn M AdamKatia MonastyrskayaAli Hashemi GheinaniPublished in: GigaScience (2023)
By utilizing MLcps, researchers and practitioners no longer need to individually examine and compare multiple metrics to identify the best-performing models. Instead, they can rely on a single MLcps value to assess the overall performance of their ML models. This streamlined evaluation process saves valuable time and effort, enhancing the efficiency of model evaluation. MLcps is available as a Python package at https://pypi.org/project/MLcps/.