逆向工程分类度量

F. Giobergia, Elena Baralis
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引用次数: 0

摘要

能够比较机器学习模型的性能是提高一个领域的技术水平的基本组成部分。然而,有可能只使用几个(可能不理想的)性能指标,仅用于与早期作品的可比性。在这项工作中,我们探索了从现有作品中可用的少量信息开始重建新分类指标的可能性。我们提出了三种方法来重建混淆矩阵,因此,其他分类指标。我们通过经验验证了重建的质量,得出了各种分类指标对重建任务有用性的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RECLAIM: Reverse Engineering Classification Metrics
Being able to compare machine learning models in terms of performance is a fundamental part of improving the state of the art in a field. However, there is a risk of getting locked into only using a few - possibly not ideal - performance metrics, only for comparability with earlier works. In this work, we explore the possibility of reconstructing new classification metrics starting from what little information may be available in existing works. We propose three approaches to reconstruct confusion matrices and, as a consequence, other classification metrics. We empirically verify the quality of the reconstructions, drawing conclusions on the usefulness that various classification metrics have for the reconstruction task.
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