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A Multidimensional Data-Driven Sparse Identification Technique: The Sparse Proper Generalized Decomposition

机译:多维数据驱动的稀疏识别技术:稀疏适当的广义分解

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Sparse model identification by means of data is especially cumbersome if the sought dynamics live in a high dimensional space. This usually involves the need for large amount of data, unfeasible in such a high dimensional settings. This well-known phenomenon, coined as the curse of dimensionality, is here overcome by means of the use of separate representations. We present a technique based on the same principles of the Proper Generalized Decomposition that enables the identification of complex laws in the low-data limit. We provide examples on the performance of the technique in up to ten dimensions.
机译:如果所寻求的动力学存在于高维空间中,则通过数据进行的稀疏模型识别尤其麻烦。这通常涉及大量数据的需求,而在如此高的维度设置中这是不可行的。这种众所周知的现象,称为维数的诅咒,在这里通过使用单独的表示法得以克服。我们提出了一种基于适当广义分解的相同原理的技术,该技术能够在低数据范围内识别复杂的规律。我们提供了多达十个维度的技术性能示例。

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