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Multiclass Sparse Bayesian Regression for fMRI-Based Prediction

机译:基于fMRI的多类稀疏贝叶斯回归预测

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摘要

Inverse inference has recently become a popular approach for analyzing neuroimaging data, by quantifying the amount of information contained in brain images on perceptual, cognitive, and behavioral parameters. As it outlines brain regions that convey information for an accurate prediction of the parameter of interest, it allows to understand how the corresponding information is encoded in the brain. However, it relies on a prediction function that is plagued by the curse of dimensionality, as there are far more features (voxels) than samples (images), and dimension reduction is thus a mandatory step. We introduce in this paper a new model, called Multiclass Sparse Bayesian Regression (MCBR), that, unlike classical alternatives, automatically adapts the amount of regularization to the available data. MCBR consists in grouping features into several classes and then regularizing each class differently in order to apply an adaptive and efficient regularization. We detail these framework and validate our algorithm on simulated and real neuroimaging data sets, showing that it performs better than reference methods while yielding interpretable clusters of features.
机译:逆向推理最近通过量化大脑图像中在感知,认知和行为参数方面的信息量,已成为分析神经影像数据的流行方法。当它概述了传达信息以准确预测感兴趣参数的大脑区域时,它可以了解相应信息在大脑中的编码方式。但是,它依赖于维数诅咒所困扰的预测函数,因为特征(体素)远多于样本(图像),因此降维是必不可少的步骤。我们在本文中介绍了一种称为多类稀疏贝叶斯回归(MCBR)的新模型,该模型与经典替代方法不同,可以自动将正则化量调整为可用数据。 MCBR包含将要素分组为几个类别,然后以不同方式对每个类别进行正则化,以便应用自适应且高效的正则化。我们详细介绍了这些框架,并在模拟和真实的神经影像数据集上验证了我们的算法,表明该算法比参考方法性能更好,同时产生了可解释的特征簇。

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