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Multilinear Decomposition and Topographic Mapping of Binary Tensors

机译:二元张量的多线性分解和拓扑映射

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Current methods capable of processing tensor objects in their natural higher-order structure have been introduced for real-valued tensors. Such techniques, however, are not suitable for processing binary tensors which arise in many real world problems, such as gait recognition, document analysis, or graph mining. To account for binary nature of the data, we propose a novel generalized multi-linear model for principal component analysis of binary tensors (GML-PCA). We compare the performance of GML-PCA with an existing model for real-valued tensor decomposition (TensorLSI) in two experiments. In the first experiment, synthetic binary tensors were compressed and consequently reconstructed, yielding the reconstruction error in terms of AUC. In the second experiment, we compare the ability to reveal biologically meaningful dominant trends in a real world large-scale dataset of DNA sequences represented through binary tensors. Both experiments show that our GML-PCA model is better suited for modeling binary tensors than the TensorLSI.
机译:对于实值张量,引入了能够处理其自然高阶结构中的张量对象的当前方法。但是,此类技术不适用于处理在许多实际问题(例如步态识别,文档分析或图形挖掘)中出现的二进制张量。为了说明数据的二进制性质,我们提出了一种新颖的广义多线性模型,用于二进制张量的主成分分析(GML-PCA)。我们在两个实验中将GML-PCA的性能与现有的实值张量分解模型(TensorLSI)进行了比较。在第一个实验中,合成二进制张量被压缩并因此被重建,从而产生了以AUC表示的重建误差。在第二个实验中,我们比较了在以二进制张量表示的真实世界大规模DNA数据集中揭示生物学有意义的显性趋势的能力。这两个实验都表明,我们的GML-PCA模型比TensorLSI更适合于对二进制张量进行建模。

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