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Interpreting support vector machine models for multivariate group wise analysis in neuroimaging

机译:解释支持向量机模型的神经影像多元分组分析

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摘要

Machine learning based classification algorithms like support vector machines (SVMs) have shown great promise for turning a high dimensional neuroimaging data into clinically useful decision criteria. However, tracing imaging based patterns that contribute significantly to classifier decisions remains an open problem. This is an issue of critical importance in imaging studies seeking to determine which anatomical or physiological imaging features contribute to the classifier's decision, thereby allowing users to critically evaluate the findings of such machine learning methods and to understand disease mechanisms. The majority of published work addresses the question of statistical inference for support vector classification using permutation tests based on SVM weight vectors. Such permutation testing ignores the SVM margin, which is critical in SVM theory. In this work we emphasize the use of a statistic that explicitly accounts for the SVM margin and show that the null distributions associated with this statistic are asymptotically normal. Further, our experiments show that this statistic is a lot less conservative as compared to weight based permutation tests and yet specific enough to tease out multivariate patterns in the data. Thus, we can better understand the multivariate patterns that the SVM uses for neuroimaging based classification. (C) 2015 Elsevier B.V. All rights reserved.
机译:基于机器学习的分类算法(如支持向量机(SVM))已显示出将高维神经影像数据转化为临床上有用的决策标准的巨大希望。然而,追踪显着有助于分类器决策的基于成像的模式仍然是一个未解决的问题。在成像研究中,这是一个至关重要的问题,该成像研究试图确定哪些解剖或生理成像特征有助于分类器的决策,从而使用户能够严格评估此类机器学习方法的发现并了解疾病的机制。大多数已发表的工作解决了基于支持向量机权重向量的置换检验对支持向量分类进行统计推断的问题。这种置换测试忽略了SVM裕度,这在SVM理论中很重要。在这项工作中,我们强调使用显式说明SVM余量的统计数据,并表明与此统计数据相关的零分布是渐近正态的。此外,我们的实验表明,与基于权重的置换测试相比,该统计数据不那么保守,而且足够具体,可以找出数据中的多元模式。因此,我们可以更好地了解SVM用于基于神经影像的分类的多元模式。 (C)2015 Elsevier B.V.保留所有权利。

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