Collaboration Spotting X - A Visual Network Exploration Tool

A. Bobic, J. Goff, Christian Guetl
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引用次数: 1

Abstract

Due to many technological advancements, the amount of connected data drastically increased in the last decade. The analysis of this data and the insights it generates show great potential for supporting decision making processes in various industries and aspects of our lives. Multiple visual analytics solutions have been proposed to gain further insights into such data and gain explainable results. However, the majority of existing solutions are either closed sourced, not available or no longer developed. To mitigate the issues above and based on findings from expert interviews conducted using an existing tool, this paper introduces Collaboration Spotting X, a new network-based interactive visual analytics and information retrieval tool prototype. This prototype enables users to explore connected network datasets such as social network data and bibliometric data using multiple visual cues and interactions. Furthermore, to gain an insight into how this prototype is perceived by users and identify further improvements, a preliminary study with a class of 37 computer science graduate students is described. The study findings show that the students perceive Collaboration Spotting X as a useful tool that helps them complete tasks through visualisation and interaction. Additionally, multiple aspects were identified that might have caused users to experience in addition to positive emotions also some negative emotions during usage. These aspects might have also contributed to a lower usability score. Finally, multiple improvement directions have been identified, which will be implemented in future developments.
协作发现X -一个可视化的网络探索工具
由于许多技术进步,在过去十年中,连接数据的数量急剧增加。对这些数据的分析及其产生的见解显示出在支持各行各业和我们生活的各个方面的决策过程方面的巨大潜力。已经提出了多种可视化分析解决方案,以进一步了解这些数据并获得可解释的结果。然而,大多数现有的解决方案要么是闭源的,要么是不可用的,要么是不再开发的。为了缓解上述问题,并基于使用现有工具进行的专家访谈的结果,本文介绍了协作定位X,这是一种新的基于网络的交互式可视化分析和信息检索工具原型。这个原型使用户能够使用多种视觉提示和交互来探索连接的网络数据集,如社交网络数据和文献计量数据。此外,为了深入了解用户如何感知这个原型并确定进一步的改进,本文描述了对37名计算机科学研究生的初步研究。研究结果表明,学生们认为协作发现X是一个有用的工具,可以帮助他们通过可视化和互动来完成任务。此外,我们还发现,在使用过程中,除了积极情绪之外,还可能导致用户体验到一些消极情绪的多个方面。这些方面可能也导致了较低的可用性得分。最后,确定了多个改进方向,并将在未来的开发中实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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