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Avoid Oversimplifications in Machine Learning: Going beyond the Class-Prediction Accuracy

机译:避免机器学习中的过度简化:超越类预测准确性

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摘要

Class-prediction accuracy provides a quick but superficial way of determining classifier performance. It does not inform on the reproducibility of the findings or whether the selected or constructed features used are meaningful and specific. Furthermore, the class-prediction accuracy oversummarizes and does not inform on how training and learning have been accomplished: two classifiers providing the same performance in one validation can disagree on many future validations. It does not provide explainability in its decision-making process and is not objective, as its value is also affected by class proportions in the validation set. Despite these issues, this does not mean we should omit the class-prediction accuracy. Instead, it needs to be enriched with accompanying evidence and tests that supplement and contextualize the reported accuracy. This additional evidence serves as augmentations and can help us perform machine learning better while avoiding naive reliance on oversimplified metrics.
机译:类预测精度提供了一种快速但浅表的确定分类器性能。它不会通知调查结果的再现性或使用所选或构造的功能是否有意义和特定。此外,类预测准确性过度要求,并没有告知如何完成培训和学习:在一个验证中提供相同性能的两个分类器可能不同意许多未来的验证。它没有在其决策过程中提供解释性,并且不是客观的,因为其价值也受验证集中的类比例的影响。尽管存在这些问题,但这并不意味着我们应该省略类预测准确性。相反,需要丰富随附的证据和测试,并测试补充和上下文化报告的准确性。此额外证据可作为增强,并可以帮助我们更好地执行机器学习,同时避免对超薄过度简化的指标依赖。

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