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A novel geometric multiscale approach to structured dictionary learning on high dimensional data

机译:一种新的几何多尺度方法对高维数据的结构化词典学习

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Adaptive dictionary learning has become a hot-topic research field during the past decade. Though several algorithms have been proposed and achieved impressive results, they are all computationally intensive due to the lack of structure in their output dictionaries. In this paper we build upon our previous work and take a geometric approach to develop better, more efficient algorithms that can learn adaptive structured dictionaries. While inheriting many of the advantages in the previous construction, the new algorithm better utilizes the geometry of data and effectively removes translational invariances from the data, thus able to produce smaller, more robust dictionaries. We demonstrate the performance of the new algorithm on two data sets, and conclude the paper by a discussion of future work.
机译:自适应词典学习在过去十年中已成为一个热门话题的研究领域。虽然已经提出了几种算法并实现了令人印象深刻的结果,但由于其输出词典中缺乏结构,它们都是计算的。在本文中,我们建立了我们以前的工作,并采取了几何方法来开发更好,更高效的算法,可以学习自适应结构的词典。在以前的施工中继承许多优点,新算法更好地利用了数据的几何形状,有效地从数据中删除了翻译的修正,从而能够产生更小,更强大的词典。我们展示了新算法在两个数据集上的性能,并通过讨论将来的工作结束了论文。

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