2024
DOI: 10.1038/s41598-024-61284-z
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Measuring the prediction difficulty of individual cases in a dataset using machine learning

Hyunjin Kwon,
Matthew Greenberg,
Colin Bruce Josephson
et al.

Abstract: Different levels of prediction difficulty are one of the key factors that researchers encounter when applying machine learning to data. Although previous studies have introduced various metrics for assessing the prediction difficulty of individual cases, these metrics require specific dataset preconditions. In this paper, we propose three novel metrics for measuring the prediction difficulty of individual cases using fully-connected feedforward neural networks. The first metric is based on the complexity of th… Show more

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