生命科学中短高维时间序列的相关学习

Frank-Michael Schleif, A. Gisbrecht, B. Hammer
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引用次数: 2

摘要

随着时间的推移,表征生理过程的数字数据变得越来越重要,如光谱数据或基因表达谱。这类数据的典型特征是由于测量粒度细而具有高维性,但通常只有几个时间点。由于时间序列的长度较短,经典的时间序列模型无法使用。同时,由于数据的高维性,不能用简单的矢量技术对数据进行时间窗处理。在这里,我们将生成式地形映射(GTM-TT)作为一种高度正则化的模型,用于无监督环境下的时间序列检测,该模型基于经过地形映射设施增强的隐马尔可夫模型。我们扩展了该模型,使监督分类可以建立在GTM-TT的基础上,从而得到监督GTM-TT,并通过监督相关学习对该技术进行了扩展。后者根据给定的辅助信息调整度量,从而产生可以处理高维输入的可解释形式。我们在模拟数据以及来自生物医学领域的示例中演示了该技术,在这两种情况下都达到了最先进的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relevance learning for short high-dimensional time series in the life sciences
Digital data characterizing physiological processes over time are becoming increasingly important such as spectrometric data or gene expression profiles. Typical characteristics of such data are high dimensionality due to a fine grained measurement, but usually only few time points of the series. Due to the short length, classical time series models cannot be used. At the same time, due to the high dimensionality, data cannot be treated by means of time windows using simple vectorial techniques. Here, we consider the generative topographic mapping through time (GTM-TT) as a highly regularized model for time series inspection in the unsupervised setting, based on hidden Markov models enhanced with topographic mapping facilities. We extend the model such that supervised classification can be built on top of GTM-TT, resulting in supervised GTM-TT, and we extend the technique by supervised relevance learning. The latter adapts the metric according to given auxiliary information resulting in an interpretable form which can deal with high dimensional inputs. We demonstrate the technique in simulated data as well as an example from the biomedical domain, reaching state of the art classification accuracy in both cases.
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