脑成像中TV- l_1最小二乘和逻辑回归的基准求解方法

Elvis Dohmatob, Alexandre Gramfort, B. Thirion, G. Varoquaux
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引用次数: 39

摘要

从脑成像数据中学习预测模型,就像从fMRI(功能性磁共振成像)中解码认知状态一样,是一个典型的不适定问题,因为它需要估计比可用样本点更多的参数。因此,这个估计问题需要正则化。总变差正则化与稀疏模型相结合,已被证明可以产生良好的预测性能,以及稳定和可解释的地图。然而,相应的优化问题是非常具有挑战性的:它是非光滑的、不可分离的和严重病态的。为了使惩罚在地图上充分发挥其结构效应,必须将该优化问题求解到一个良好的容忍度,从而带来计算挑战。在这里,我们探索了各种各样的求解器,并展示了它们在fMRI数据上的收敛特性。我们介绍了一种光滑求解器的变体,并表明它在这些设置中是一种很有前途的方法。我们的研究结果表明,在解决脑成像中的TV- 1估计时必须注意,并突出了成功的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Benchmarking solvers for TV-ℓ1 least-squares and logistic regression in brain imaging
Learning predictive models from brain imaging data, as in decoding cognitive states from fMRI (functional Magnetic Resonance Imaging), is typically an ill-posed problem as it entails estimating many more parameters than available sample points. This estimation problem thus requires regularization. Total variation regularization, combined with sparse models, has been shown to yield good predictive performance, as well as stable and interpretable maps. However, the corresponding optimization problem is very challenging: it is non-smooth, non-separable and heavily ill-conditioned. For the penalty to fully exercise its structuring effect on the maps, this optimization problem must be solved to a good tolerance resulting in a computational challenge. Here we explore a wide variety of solvers and exhibit their convergence properties on fMRI data. We introduce a variant of smooth solvers and show that it is a promising approach in these settings. Our findings show that care must be taken in solving TV-ℓ1 estimation in brain imaging and highlight the successful strategies.
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