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A Novel Triangulate Mapping Based on Self-Organized Anchor Points for Data Visualization

机译:基于自组织锚点的新型三角形映射,用于数据可视化

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Without a form of visual feedback, multivariate data would be reduced to a lump of numbers that very few people would be able to appreciate and be benefited from. This research paper proposes a novel triangulate mapping technique based on self-organizing anchor points for multivariatedata visualization. Self-Organizing Map (SOM) and a modified Adaptive Coordinates (AC) are hybridized to produce the anchor points in the 2D space. The trained anchor points are used to triangulate data onto a topologically preserved 2D space. The empirical studies that produce topologicallypreserved data visualizations for high dimension and arbitrarily shaped clusters in simulated, benchmarking, and real-life dataset show its usefulness in providing intuitive visual feedback to the user
机译:没有一种视觉反馈的形式,多变量数据将减少到一个很少人们能够欣赏并受益的数量。 本研究论文提出了一种基于自组织锚点的新型三角形映射技术,用于多功能化可视化。 自组织地图(SOM)和修改的自适应坐标(AC)杂交以在2D空间中产生锚点。 训练有素的锚点用于将数据三叠到拓扑保存的2D空间上。 在模拟,基准和现实生活数据集中产生高维和任意形状集群的拓扑数据可视化的实证研究表明其在为用户提供直观的视觉反馈方面的有用性

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