Paulovich Fernando V, Minghim Rosane
ICMC, Instituto de Ciências Matemáticas e de Computação, University of São Paulo, São Carlos/SP, Brazil.
IEEE Trans Vis Comput Graph. 2008 Nov-Dec;14(6):1229-36. doi: 10.1109/TVCG.2008.138.
Point placement strategies aim at mapping data points represented in higher dimensions to bi-dimensional spaces and are frequently used to visualize relationships amongst data instances.They have been valuable tools for analysis and exploration of datasets of various kinds. Many conventional techniques, however, do not behave well when the number of dimensions is high, such as in the case of documents collections. Later approaches handle that shortcoming, but may cause too much clutter to allow flexible exploration to take place. In this work we present a novel hierarchical point placement technique that is capable of dealing with these problems. While good grouping and separation of data with high similarity is maintained without increasing computation cost,its hierarchical structure lends itself both to exploration in various levels of detail and to handling data in subsets, improving analysis capability and also allowing manipulation of larger data sets.
点放置策略旨在将高维空间中表示的数据点映射到二维空间,并且经常用于可视化数据实例之间的关系。它们一直是用于分析和探索各类数据集的宝贵工具。然而,许多传统技术在维度数量较高时(如文档集合的情况)表现不佳。后来的方法解决了这一缺点,但可能会导致过多的混乱,从而无法进行灵活的探索。在这项工作中,我们提出了一种新颖的分层点放置技术,该技术能够处理这些问题。在不增加计算成本的情况下,既能保持对具有高度相似性的数据进行良好的分组和分离,其分层结构又便于进行各种详细程度的探索以及处理子集中的数据,提高了分析能力,还允许处理更大的数据集。