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Source identification by non-negative matrix factorization combined with semi-supervised clustering

机译:非负矩阵分解与半监督聚类相结合的源识别

摘要

Machine-learning methods and apparatus are provided to solve blind source separation problems with an unknown number of sources and having a signal propagation model with features such as wave-like propagation, medium-dependent velocity, attenuation, diffusion, and/or advection, between sources and sensors. In exemplary embodiments, multiple trials of non-negative matrix factorization are performed for a fixed number of sources, with selection criteria applied to determine successful trials. A semi-supervised clustering procedure is applied to trial results, and the clustering results are evaluated for robustness using measures for reconstruction quality and cluster separation. The number of sources is determined by comparing these measures for different trial numbers of sources. Source locations and parameters of the signal propagation model can also be determined. Disclosed methods are applicable to a wide range of spatial problems including chemical dispersal, pressure transients, and electromagnetic signals, and also to non-spatial problems such as cancer mutation.
机译:提供了机器学习方法和设备以解决具有未知数量的源并且具有信号传播模型的盲源分离问题,该信号传播模型具有诸如波状传播,与介质有关的速度,衰减,扩散和/或对流的特征。源和传感器。在示例性实施例中,针对固定数量的源执行多次非负矩阵分解的试验,并应用选择标准来确定成功的试验。将半监督聚类程序应用于试验结果,并使用重建质量和聚类分离的措施对聚类结果的鲁棒性进行评估。来源数量是通过将这些度量值与不同来源的试用数量进行比较来确定的。也可以确定信号传播模型的源位置和参数。所公开的方法适用于广泛的空间问题,包括化学分散,压力瞬变和电磁信号,还适用于非空间问题,例如癌症突变。

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