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Multilinear Dynamical Systems for Tensor Time Series

机译:张量序列的多线性动力系统

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Data in the sciences frequently occur as sequences of multidimensional arrays called tensors. How can hidden, evolving trends in such data be extracted while preserving the tensor structure? The model that is traditionally used is the linear dynamical system (LDS) with Gaussian noise, which treats the latent state and observation at each time slice as a vector. We present the multilinear dynamical system (MLDS) for modeling tensor time series and an expectation-maximization (EM) algorithm to estimate the parameters. The MLDS models each tensor observation in the time series as the multilinear projection of the corresponding member of a sequence of latent tensors. The latent tensors are again evolving with respect to a multilinear projection. Compared to the LDS with an equal number of parameters, the MLDS achieves higher prediction accuracy and marginal likelihood for both artificial and real datasets.
机译:科学中的数据经常发生作为称为张量的多维阵列序列。如何隐藏,在保留张量结构的同时提取这种数据的发展趋势?传统上使用的模型是具有高斯噪声的线性动力系统(LDS),其在每个时间切片作为向量时处理潜在状态和观察。我们介绍了用于建模张量时间序列的多线性动力系统(MLD)和期望最大化(EM)算法来估算参数。 MLD在时间序列中模拟每个张量观察作为潜在张量序列的相应成员的多线性投影。潜在的张量再次相对于多线性投影进化。与具有相同数量的参数的LD相比,MLDS实现了人工和真实数据集的更高的预测精度和边缘可能性。

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