Icasso:通过聚类和可视化来调查ICA估计可靠性的软件

J. Himberg, Aapo Hyvärinen
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引用次数: 255

摘要

独立分量分析(ICA)应用中的一个主要问题是估计的独立分量的可靠性是未知的。首先,有限的样本量会导致估计中的统计误差。其次,由于真实数据从不完全遵循ICA模型,估计中使用的对比函数可能有许多同样好的局部极小值,或者实际算法可能并不总是正确执行,例如陷入对比度函数值强烈次优的局部极小值。我们提出了一种探索性的可视化方法来研究来自FastICA的估计之间的关系。通过在不同初始值和不同自举数据集下多次运行算法,研究了算法的可靠性和统计可靠性。根据合适的相似性度量,通过可视化它们的聚类来比较结果估计。可靠的估计对应于紧密的聚类,而不可靠的估计对应于不属于任何此类聚类的点。我们开发了一个名为Icasso的软件包来实现这些操作。我们还介绍了将Icasso应用于生物医学数据时该方法的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Icasso: software for investigating the reliability of ICA estimates by clustering and visualization
A major problem in application of independent component analysis (ICA) is that the reliability of the estimated independent components is not known. Firstly, the finite sample size induces statistical errors in the estimation. Secondly, as real data never exactly follows the ICA model, the contrast function used in the estimation may have many local minima which are all equally good, or the practical algorithm may not always perform properly, for example getting stuck in local minima with strongly suboptimal values of the contrast function. We present an explorative visualization method for investigating the relations between estimates from FastICA. The algorithmic and statistical reliability is investigated by running the algorithm many times with different initial values or with differently bootstrapped data sets, respectively. Resulting estimates are compared by visualizing their clustering according to a suitable similarity measure. Reliable estimates correspond to tight clusters, and unreliable ones to points which do not belong to any such cluster. We have developed a software package called Icasso to implement these operations. We also present results of this method when applying Icasso on biomedical data.
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