分析引导多元数据的可视化探索

Di Yang, Elke A. Rundensteiner, M. Ward
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引用次数: 52

摘要

可视化系统传统上侧重于信息的图形化表示。它们往往不提供可以帮助用户处理复杂知识发现任务的集成分析服务。在这样的环境中,用户的探索通常会受到以下几个问题的阻碍:1)当屏幕上显示的数据太多时,有价值的信息很难被发现;2)由于没有系统的发现管理机制,用户必须离线管理和组织发现;3)他们的发现仅仅基于视觉探索可能缺乏准确性;4)不能方便地获取其他用户所学到的重要知识。为了解决这些问题,人们已经认识到必须在可视化系统中引入分析工具。在本文中,我们提出了一种新的分析导向勘探系统,称为块金管理系统(NMS)。它利用人类可理解性和机器计算的协同努力来促进用户的视觉探索过程。具体来说,NMS首先根据用户的兴趣提取隐藏在数据集中的有价值的信息(掘金)。考虑到相似的掘金可能会被不同的用户重新发现,NMS通过基于语义相似性的聚类来整合掘金候选集。为了解决发现不准确的问题,应用本地化数据挖掘技术来细化掘金,以最好地代表数据集中捕获的模式。最后,利用组织良好的金块池来指导用户的探索。为了评估NMS的有效性,我们将NMS集成到一个免费的多变量可视化系统Xmd- vTool中。进行用户研究,比较用户在使用和不使用NMS的情况下在真实数据集上完成任务的效率和准确性。我们的用户研究证实了NMS的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis Guided Visual Exploration of Multivariate Data
Visualization systems traditionally focus on graphical representation of information. They tend not to provide integrated analytical services that could aid users in tackling complex knowledge discovery tasks. Users' exploration in such environments is usually impeded due to several problems: 1) valuable information is hard to discover when too much data is visualized on the screen; 2) Users have to manage and organize their discoveries off line, because no systematic discovery management mechanism exists; 3) their discoveries based on visual exploration alone may lack accuracy; 4) and they have no convenient access to the important knowledge learned by other users. To tackle these problems, it has been recognized that analytical tools must be introduced into visualization systems. In this paper, we present a novel analysis-guided exploration system, called the nugget management system (NMS). It leverages the collaborative effort of human comprehensibility and machine computations to facilitate users' visual exploration processes. Specifically, NMS first extracts the valuable information (nuggets) hidden in datasets based on the interests of users. Given that similar nuggets may be re-discovered by different users, NMS consolidates the nugget candidate set by clustering based on their semantic similarity. To solve the problem of inaccurate discoveries, localized data mining techniques are applied to refine the nuggets to best represent the captured patterns in datasets. Lastly, the resulting well-organized nugget pool is used to guide users' exploration. To evaluate the effectiveness of NMS, we integrated NMS into Xmd- vTool, a freeware multivariate visualization system. User studies were performed to compare the users' efficiency and accuracy in finishing tasks on real datasets, with and without the help of NMS. Our user studies confirmed the effectiveness of NMS.
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