Evaluating Visual Analytics for Relevant Information Retrieval in Document Collections

IF 1 4区 计算机科学 Q3 COMPUTER SCIENCE, CYBERNETICS Interacting with Computers Pub Date : 2023-03-03 DOI:10.1093/iwc/iwad019
Sherlon Almeida da Silva, E. Milios, Maria Cristina Ferreira de Oliveira
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引用次数: 0

Abstract

Retrieving information from document collections is necessary in many contexts, e.g. researchers search for papers on a topic, physicians search for records of patients with a certain condition and police investigators seek relationships between different criminal reports. Finding relevant textual content in a corpus can be challenging in scenarios where the users expect a retrieval process with high recall. Visual Analytics (VA) systems that integrate interactive visualizations and machine learning algorithms are often advocated to support retrieval tasks in such complex scenarios. However, few studies report an end-user perspective on the utility of such systems. We present results from observational studies on VA-supported information retrieval conducted with graduate students and researchers using a system to explore collections of scientific papers. While users have, in general, positive views of the system’s potential to facilitate their retrieval tasks, some faced practical difficulties in using it effectively, and we found considerable variation in their assessment of specific functionalities. Our findings reinforce the potential of VA systems and also the importance of carefully informing users of the underlying conceptual models in such systems and their limitations.
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评估文档集合中相关信息检索的可视化分析
在许多情况下,从文件集合中检索信息是必要的,例如,研究人员搜索关于某个主题的论文,医生搜索患有某种疾病的患者的记录,警察调查人员寻找不同犯罪报告之间的关系。在用户期望具有高召回率的检索过程的场景中,在语料库中查找相关文本内容可能具有挑战性。集成交互式可视化和机器学习算法的视觉分析(VA)系统经常被提倡用于支持此类复杂场景中的检索任务。然而,很少有研究报告从终端用户的角度看待这种系统的效用。我们介绍了一些观察性研究的结果,这些研究是由研究生和研究人员进行的,他们使用一个系统来探索科学论文的集合。虽然一般来说,用户对系统的潜力有积极的看法,以促进他们的检索任务,但有些人在有效地使用它时面临实际困难,我们发现他们对具体功能的评估有相当大的差异。我们的研究结果加强了VA系统的潜力,也强调了仔细告知用户此类系统中潜在概念模型及其局限性的重要性。
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来源期刊
Interacting with Computers
Interacting with Computers 工程技术-计算机:控制论
CiteScore
2.70
自引率
0.00%
发文量
12
审稿时长
>12 weeks
期刊介绍: Interacting with Computers: The Interdisciplinary Journal of Human-Computer Interaction, is an official publication of BCS, The Chartered Institute for IT and the Interaction Specialist Group . Interacting with Computers (IwC) was launched in 1987 by interaction to provide access to the results of research in the field of Human-Computer Interaction (HCI) - an increasingly crucial discipline within the Computer, Information, and Design Sciences. Now one of the most highly rated journals in the field, IwC has a strong and growing Impact Factor, and a high ranking and excellent indices (h-index, SNIP, SJR).
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