高维非参数分布变化的跟踪和可视化

J. Kohlmorgen
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引用次数: 1

摘要

大多数现实世界的系统表现出非平稳的行为,例如,由于磨损而缓慢漂移或由于外部影响而快速变化。由于缺乏底层系统的精确数学模型,提取和量化这些现象往往是困难的。在这里,我们建议仅根据观测到的测量来模拟动力系统的这种高层变化,而不是通过对底层系统本身进行建模。特别是,我们提出了一种方法来跟踪和可视化一般数据分布的变化。我们通过识别锚点分布来解决如何表示高维非参数分布的连续变化的问题,并通过定义合适的相似性度量来模拟这些锚点分布之间的转换。应用于高维混沌系统和脑电睡眠检测任务,证明了该方法的有效性
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Tracking and visualization of changes in high-dimensional non-parametric distributions
Most real-world systems exhibit a non-stationary behavior, e.g., slow drifts due to wear or fast changes due to external influences. Extracting and quantifying these phenomena is often difficult due to the lack of a precise mathematical model of the underlying system. We here propose to model such high-level changes of a dynamical system solely on the basis of the observed measurements rather than by modeling the underlying system itself. In particular, we present a method to track and visualize changes in general data distributions. We approach the problem of how to represent continuous changes in high-dimensional non-parametric distributions by identifying anchor distributions and we model the transitions between those anchor distributions by defining a suitable similarity measure. Applications to a high-dimensional chaotic system and to a sleep-onset detection task in EEG demonstrate the efficiency of this approach
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期刊介绍: Journal of Signal Processing is an academic journal supervised by China Association for Science and Technology and sponsored by China Institute of Electronics. The journal is an academic journal that reflects the latest research results and technological progress in the field of signal processing and related disciplines. It covers academic papers and review articles on new theories, new ideas, and new technologies in the field of signal processing. The journal aims to provide a platform for academic exchanges for scientific researchers and engineering and technical personnel engaged in basic research and applied research in signal processing, thereby promoting the development of information science and technology. At present, the journal has been included in the three major domestic core journal databases "China Science Citation Database (CSCD), China Science and Technology Core Journals (CSTPCD), Chinese Core Journals Overview" and Coaj. It is also included in many foreign databases such as Scopus, CSA, EBSCO host, INSPEC, JST, etc.
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