生物信息学数据集的班级不平衡和学习难度之间隐藏的依赖关系

Randall Wald, T. Khoshgoftaar, Alireza Fazelpour, D. Dittman
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引用次数: 14

摘要

许多生物信息学数据集都存在某些问题:它们存在类不平衡(一个类的实例比其他类的实例多),或者难以从中学习(建立准确的模型)。许多研究调查了这两个问题,甚至同时考虑了这两个问题。然而,这两个问题之间可能存在隐藏的依赖关系:在给定的数据集集合中,高度不平衡的数据集可能特别难以或容易学习,因此基于类不平衡程度的结论实际上可能反映了学习的难度。我们提出了一个包含26个生物信息学数据集的案例研究,该数据集展示了这种依赖性,并强调了它如何导致关于学习器和特征排名器在平衡水平上的绝对和相对表现的误导性结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hidden dependencies between class imbalance and difficulty of learning for bioinformatics datasets
Many bioinformatics datasets share certain problems: they have class imbalance (one class with many more instances than the remaining class(es)), or are difficult to learn from (build accurate models with). Much research has investigated these two problems, or even considered both at once. However, hidden dependencies can exist between these two problems: in a given collection of datasets, the highly imbalanced datasets may be particularly difficult or easy to learn from, and so conclusions based on the level of class imbalance may actually reflect the difficulty of learning. We present a case study with twenty-six bioinformatics datasets which exhibits this dependency, and highlights how it can result in misleading conclusions regarding the absolute and relative performance of learners and feature rankers across balance levels.
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