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A New Feature Selection Method Based on Stability Theory – Exploring Parameters Space to Evaluate Classification Accuracy in Neuroimaging Data

机译:一种基于稳定性理论的新特征选择方法 - 探索参数空间评估神经影像数据分类准确性的

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Recently we proposed a feature selection method based on stability theory. In the present work we present an evaluation of its performance in different contexts through a grid search performed in a subset of its parameters space. The main contributions of this work are: we show that the method can improve the classification accuracy in relation to the wholebrain in different functional datasets; we evaluate the parameters influence in the results, getting some insight in reasonable ranges of values; and we show that combinations of parameters that yield the best accuracies are stable (i.e., they have low rates of false positive selections).
机译:最近我们提出了一种基于稳定性理论的特征选择方法。在本工作中,我们通过在其参数空间的子集中执行的网格搜索,在不同的环境中对其性能进行评估。这项工作的主要贡献是:我们表明该方法可以提高与不同功能数据集中的全脑相关的分类准确性;我们评估结果的影响,从合理的价值范围内获得一些洞察力;我们表明,产生最佳精度的参数的组合是稳定的(即,它们具有低阳性选择率的低速)。

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