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Representing information collections for visual cognition.

机译:表示用于视觉认知的信息集合。

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摘要

The importance of digital information collections is growing. Collections are typically represented with text-only, in a linear list format, which turns out to be a weak representation for cognition. We learned this from empirical research in cognitive psychology, and by conducting a study to develop an understanding of current practices and resulting breakdowns in human experiences of building and utilizing collections. Because of limited human attention and memory, participants had trouble finding specific elements in their collections, resulting in low levels of collection utilization. To address these issues, this research develops new collection representations for visual cognition. First, we present the image+text surrogate, a concise representation for a document, or portion thereof, which is easy to understand and think about. An information extraction algorithm is developed to automatically transform a document into a small set of image+text surrogates. After refinement, the average accuracy performance of the algorithm was 90%. Then, we introduce the composition space to represent collections, which helps people connect elements visually in a spatial format. To ensure diverse information from multiple sources to be presented evenly in the composition space, we developed a new control structure, the ResultDistributor. A user study has demonstrated that the participants were able to browse more diverse information using the ResultDistributor-enhanced composition space. Participants also found it easier and more entertaining to browse information in this representation. This research is applicable to represent the information resources in contexts such as search engines or digital libraries. The better representation will enhance the cognitive efficacy and enjoyment of people's everyday tasks of information searching, browsing, collecting, and discovering.
机译:数字信息收集的重要性正在增长。集合通常以线性列表格式仅以文本表示,这对于认知来说是一种较弱的表示。我们从认知心理学的实证研究中,并通过进行一项研究以了解当前的实践以及由此产生的人类在构建和利用馆藏方面的失误,来学习这一点。由于有限的人类注意力和记忆力,参与者难以在其收藏中找到特定元素,从而导致收藏利用率较低。为了解决这些问题,本研究开发了用于视觉认知的新集合表示。首先,我们提供易于理解和思考的图像+文本替代,文档或其一部分的简洁表示。开发了一种信息提取算法,可自动将文档转换为少量的图像和文本替代物。经过细化后,该算法的平均准确度为90%。然后,我们介绍组成空间来表示集合,这有助于人们以空间格式在视觉上连接元素。为了确保将来自多个来源的各种信息均匀地呈现在合成空间中,我们开发了一种新的控件结构ResultDistributor。一项用户研究表明,参与者可以使用ResultDistributor增强的合成空间浏览更多不同的信息。参与者还发现浏览此表示形式的信息更容易,也更有趣。该研究适用于表示诸如搜索引擎或数字图书馆之类的环境中的信息资源。更好的表示方式将增强人们的认知功效,并提高人们在信息搜索,浏览,收集和发现中的日常任务的乐趣。

著录项

  • 作者

    Koh, Eunyee.;

  • 作者单位

    Texas A&M University.;

  • 授予单位 Texas A&M University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 146 p.
  • 总页数 146
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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