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Selection bias in the reported performances of AD classification pipelines

机译:广告分类管道报告的性能中的选择偏差

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摘要

The last decade has seen a great proliferation of supervised learning pipelines for individual diagnosis and prognosis in Alzheimer's disease. As more pipelines are developed and evaluated in the search for greater performance, only those results that are relatively impressive will be selected for publication. We present an empirical study to evaluate the potential for optimistic bias in classification performance results as a result of this selection. This is achieved using a novel, resampling-based experiment design that effectively simulates the optimisation of pipeline specifications by individuals or collectives of researchers using cross validation with limited data. Our findings indicate that bias can plausibly account for an appreciable fraction (often greater than half) of the apparent performance improvement associated with the pipeline optimisation, particularly in small samples. We discuss the consistency of our findings with patterns observed in the literature and consider strategies for bias reduction and mitigation.
机译:在过去的十年中,用于阿尔茨海默氏病个人诊断和预后的有监督学习渠道大量涌现。随着更多管线的开发和评估以寻求更高的性能,只有那些相对令人印象深刻的结果才会被选中进行发布。我们提出了一项实证研究,以评估由于这种选择而对分类性能结果产生乐观偏见的可能性。这是通过使用新颖的,基于重采样的实验设计来实现的,该设计有效地模拟了个人或研究人员使用有限数据的交叉验证对管道规格进行的优化。我们的发现表明,偏差可以合理地解释与管线优化相关的明显性能改善的相当一部分(通常大于一半),尤其是在小样本中。我们讨论了我们的发现与文献中观察到的模式的一致性,并考虑了减少和缓解偏差的策略。

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