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The challenge of non-ergodicity in network neuroscience

机译:网络神经科学中非遍历性的挑战

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摘要

Ergodicity can be assumed when the structure of data is consistent across individuals and time. Neural network approaches do not frequently test for ergodicity in data which holds important consequences for data integration and intepretation. To demonstrate this problem, we present several network models in healthy and clinical samples where there exists considerable heterogeneity across individuals. We offer suggestions for the analysis, interpretation, and reporting of neural network data. The goal is to arrive at an understanding of the sources of non-ergodicity and approaches for valid network modeling in neuroscience.
机译:当数据结构在个人和时间上是一致的时,可以假定遍历性。神经网络方法不会经常测试数据的遍历性,而遍历性会对数据集成和解释产生重要影响。为了证明这个问题,我们在健康和临床样本中提出了几种网络模型,其中个体之间存在相当大的异质性。我们为神经网络数据的分析,解释和报告提供建议。目的是要了解非遍历性的来源以及神经科学中有效网络建模的方法。

著录项

  • 来源
    《Network》 |2011年第4期|p.148-153|共6页
  • 作者单位

    Department of Psychology, Pennsylvania State University, University Park, PA;

    Department of Psychology, Pennsylvania State University, University Park, PA;

    Department of Psychology, Pennsylvania State University, University Park, PA;

    Department of Psychology, Pennsylvania State University, University Park, PA,Department of Neurology, Hershey Medical Center, Hershey, PA,Psychology Department, Pennsylvania State University, 223 Moore Building, University Park, PA 16802;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    functional neuroimaging; traumatic brain injury; network modeling; neuroscience;

    机译:功能性神经影像学创伤性脑损伤;网络建模;神经科学;
  • 入库时间 2022-08-18 01:50:00

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