...
首页> 外文期刊>NeuroImage >How to compute reliability estimates and display confidence and tolerance intervals for pattern classifiers using the Bootstrap and 3-way multidimensional scaling (DISTATIS).
【24h】

How to compute reliability estimates and display confidence and tolerance intervals for pattern classifiers using the Bootstrap and 3-way multidimensional scaling (DISTATIS).

机译:如何使用Bootstrap和3向多维标度(DISTATIS)计算模式分类器的可靠性估计并显示置信度和公差间隔。

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

When used to analyze brain imaging data, pattern classifiers typically produce results that can be interpreted as a measure of discriminability or as a distance between some experimental categories. These results can be analyzed with techniques such as multidimensional scaling (MDS), which represent the experimental categories as points on a map. While such a map reveals the configuration of the categories, it does not provide a reliability estimate of the position of the experimental categories, and therefore cannot be used for inferential purposes. In this paper, we present a procedure that provides reliability estimates for pattern classifiers. This procedure combines bootstrap estimation (to estimate the variability of the experimental conditions) and a new 3-way extension of MDS, called DISTATIS, that can be used to integrate the distance matrices generated by the bootstrap procedure and to represent the results as MDS-like maps. Reliability estimates are expressed as (1) tolerance intervals whichreflect the accuracy of the assignment of scans to experimental categories and as (2) confidence intervals which generalize standard hypothesis testing. When more than two categories are involved in the application of a pattern classifier, the use of confidence intervals for null hypothesis testing inflates Type I error. We address this problem with a Bonferonni-like correction. Our methodology is illustrated with the results of a pattern classifier described by O'Toole et al. (O'Toole, A., Jiang, F., Abdi, H., Haxby, J., 2005. Partially distributed representations of objects and faces in ventral temporal cortex. J. Cogn. Neurosci. 17, 580-590) who re-analyzed data originally collected by Haxby et al. (Haxby, J., Gobbini, M., Furey, M., Ishai, A., Schouten, J., Pietrini, P., 2001. Distributed and overlapping representation of faces and objects in ventral temporal cortex. Science 293, 2425-2430).
机译:当用于分析大脑成像数据时,模式分类器通常会产生结果,这些结果可解释为可分辨性的度量或某些实验类别之间的距离。可以使用诸如多维缩放(MDS)之类的技术来分析这些结果,该技术将实验类别表示为地图上的点。虽然这样的地图揭示了类别的配置,但是它不提供实验类别位置的可靠性估计,因此不能用于推断目的。在本文中,我们提出了一种为模式分类器提供可靠性估计的过程。此程序结合了引导程序估计(以估计实验条件的可变性)和MDS的新的3向扩展,称为DISTATIS,可用于整合由引导程序生成的距离矩阵并将结果表示为MDS-像地图。可靠性估计值表示为(1)反映扫描分配到实验类别的准确性的容差区间,以及(2)概括标准假设检验的置信区间。当模式分类器的应用涉及两个以上类别时,对原假设检验使用置信区间会增加I型错误。我们通过类似Bonferonni的校正来解决此问题。 O'Toole等人描述的模式分类器的结果说明了我们的方法。 (O'Toole,A.,Jiang,F.,Abdi,H.,Haxby,J.,2005.腹侧颞皮部分对象和面部的部分分布表示。J。Cogn。Neurosci。17,580-590)重新分析了Haxby等人最初收集的数据。 (Haxby,J.,Gobbini,M.,Furey,M.,Ishai,A.,Schouten,J.,Pietrini,P.,2001。腹部颞叶皮层和物体的分布和重叠表示。Science293,2425 -2430)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号