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Adaptive graph-based algorithms for conditional anomaly detection and semi-supervised learning.

机译:基于自适应图的算法,用于条件异常检测和半监督学习。

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摘要

We develop graph-based methods for semi-supervised learning based on label propagation on a data similarity graph. When data is abundant or arrive in a stream, the problems of computation and data storage arise for any graph-based method. We propose a fast approximate online algorithm that solves for the harmonic solution on an approximate graph. We show, both empirically and theoretically, that good behavior can be achieved by collapsing nearby points into a set of local representative points that minimize distortion. Moreover, we regularize the harmonic solution to achieve better stability properties.;We also present graph-based methods for detecting conditional anomalies and apply them to the identification of unusual clinical actions in hospitals. Our hypothesis is that patient-management actions that are unusual with respect to the past patients may be due to errors and that it is worthwhile to raise an alert if such a condition is encountered. Conditional anomaly detection extends standard unconditional anomaly framework but also faces new problems known as fringe and isolated points. We devise novel nonparametric graph-based methods to tackle these problems. Our methods rely on graph connectivity analysis and soft harmonic solution. Finally, we conduct an extensive human evaluation study of our conditional anomaly methods by 15 experts in critical care.
机译:我们基于数据相似度图上的标签传播,开发了基于图的半监督学习方法。当数据丰富或到达流中时,任何基于图形的方法都会出现计算和数据存储问题。我们提出了一种快速的近似在线算法,用于求解近似图上的谐波解。我们从经验和理论上都表明,可以通过将附近的点折叠为一组将变形最小化的局部代表点来实现良好的行为。此外,我们对谐波解进行正则化以获得更好的稳定性。我们还提出了基于图的方法来检测条件异常并将其应用于医院异常临床行为的识别。我们的假设是,与过去的患者不同寻常的患者管理行为可能是由于错误造成的,如果遇到这种情况,值得提起警报。条件异常检测扩展了标准的无条件异常框架,但也面临着称为条纹和孤立点的新问题。我们设计新颖的基于非参数图的方法来解决这些问题。我们的方法依赖于图连通性分析和软谐波解决方案。最后,我们由15位重症监护专家对我们的条件异常方法进行了广泛的人类评估研究。

著录项

  • 作者

    Valko, Michal.;

  • 作者单位

    University of Pittsburgh.;

  • 授予单位 University of Pittsburgh.;
  • 学科 Health Sciences Health Care Management.;Computer Science.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 125 p.
  • 总页数 125
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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