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Feature Rating by Random Subspaces for Functional Brain Mapping

机译:功能随机映射的随机子空间特征评级

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摘要

Functional magnetic resonance imaging is a technology allowing for a non-invasive measurement of the brain activity. Data are encoded as sequences of 3D images, usually few hundreds samples, each made by tens of thousands voxels, namely volumetric pixels. The main question in neuroimaging is the identification of the voxels affected by a specific brain activity. This task, referred to as brain mapping, can be conceived as a problem of feature rating. The challenge is twofold: the former is to deal with the high feature space dimensionality; the latter is the need for preservation of redundant features. Most common techniques of feature selection do not cover both requirements. In this work we propose the adoption of a random subspace method, arguing, by theoretical arguments and empirical evidence on synthetic data, that it might be a viable solution for a multi-variate approach to brain mapping. In addition we provide some results on a neuroscientific case study investigating on a visual perception task.
机译:功能磁共振成像是一种允许对大脑活动进行非侵入式测量的技术。数据被编码为3D图像序列,通常是数百个样本,每个样本都由成千上万的体素(即体积像素)组成。神经影像学的主要问题是识别受特定大脑活动影响的体素。这项任务称为脑图绘制,可以认为是特征评级的问题。挑战是双重的:前者是处理高特征空间维数;后者是处理高特征空间维数的方法。后者是需要保留冗余功能。最常见的特征选择技术不能同时满足这两个要求。在这项工作中,我们建议采用随机子空间方法,并通过理论论据和关于合成数据的经验证据来论证,它可能是多变量大脑映射方法的可行解决方案。此外,我们在神经科学案例研究中研究视觉感知任务时提供了一些结果。

著录项

  • 来源
    《Brain informatics》|2010年|p.112-123|共12页
  • 会议地点 Toronto(CA);Toronto(CA)
  • 作者

    Diego Sona; Paolo Avesani;

  • 作者单位

    NILab, Fondazione Bruno Kessler,CIMeC, University of Trento;

    NILab, Fondazione Bruno Kessler,CIMeC, University of Trento;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
  • 关键词

  • 入库时间 2022-08-26 13:58:23

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