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Tensor SOM and tensor GTM: Nonlinear tensor analysis by topographic mappings

机译:张量SOM和张量GTM:地形映射的非线性张量分析

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In this paper, we propose nonlinear tensor analysis methods: the tensor self-organizing map (TSOM) and the tensor generative topographic mapping (TGTM). TSOM is a straightforward extension of the self-organizing map from high-dimensional data to tensorial data, and TGTM is an extension of the generative topographic map, which provides a theoretical background for TSOM using a probabilistic generative model. These methods are useful tools for analyzing and visualizing tensorial data, especially multimodal relational data. For given n-mode relational data, TSOM and TGTM can simultaneously organize a set of n-topographic maps. Furthermore, they can be used to explore the tensorial data space by interactively visualizing the relationships between modes. We present the TSOM algorithm and a theoretical description from the viewpoint of TGTM. Various TSOM variations and visualization techniques are also described, along with some applications to real relational datasets. Additionally, we attempt to build a comprehensive description of the TSOM family by adapting various data structures. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了非线性张量分析方法:张量自组织地图(TSOM)和张量生成地形映射(TGTM)。 TSOM是从高维数据到姿势数据的自组织地图的直接扩展,TGTM是生成地形图的扩展,其使用概率生成模型为TSOM提供理论背景。这些方法是用于分析和可视化姿态数据,尤其是多模式关系数据的有用工具。对于给定的N模式关系数据,TSOM和TGTM可以同时组织一组正面图。此外,它们可以通过交互式可视化模式之间的关系来探索姿态数据空间。从TGTM的角度来看,我们介绍了TSOM算法和理论描述。还描述了各种TSOM变型和可视化技术,以及一些应用于实际关系数据集。此外,我们尝试通过调整各种数据结构来构建TSOM系列的全面描述。 (c)2016 Elsevier Ltd.保留所有权利。

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