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Algorithms for an Efficient Tensor Biclustering

机译:有效的张量成簇算法

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摘要

Consider a data set collected by (individuals-features) pairs in different times. It can be represented as a tensor of three dimensions (Individuals, features and times). The tensor biclustering problem computes a subset of individuals and a subset of features whose signal trajectories over time lie in a low-dimensional subspace, modeling similarity among the signal trajectories while allowing different scalings across different individuals or different features. This approach are based on spectral decomposition in order to build the desired biclusters. We evaluate the quality of the results from each algorithms with both synthetic and real data set.
机译:考虑一个由(个体特征)对在不同时间收集的数据集。它可以表示为三个维度(个体,特征和时间)的张量。张量双簇问题计算个体的子集和特征的子集,其信号轨迹随时间位于低维子空间中,对信号轨迹之间的相似性进行建模,同时允许跨不同个体或不同特征进行不同缩放。此方法基于光谱分解,以构建所需的双峰。我们使用合成和真实数据集评估每种算法的结果质量。

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