主题相关图:可视化提高搜索结果的理解

J. Peltonen, Kseniia Belorustceva, Tuukka Ruotsalo
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引用次数: 44

摘要

我们介绍了主题相关性地图,这是一种交互式搜索结果可视化,有助于快速理解大型排名结果集的信息。主题相关性图将搜索结果空间的主题概述可视化为两个基本信息检索度量的关键字:相关性和主题相似性。非线性降维用于将搜索结果数据的高维关键字表示嵌入到径向布局的角度中。关键词的相关性通过排序方法估计,并在径向布局上显示为半径。因此,相似的关键词用近点建模,不相似的关键词用远点建模,相关性越高的关键词越靠近径向显示中心,相关性越低的关键词越远离径向显示中心。我们评估了主题相关性图在搜索结果理解任务中的效果,其中24名参与者汇总搜索结果并产生结果空间的概念化。结果表明,与传统的排序表演示相比,主题相关图显著提高了参与者的理解能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topic-Relevance Map: Visualization for Improving Search Result Comprehension
We introduce topic-relevance map, an interactive search result visualization that assists rapid information comprehension across a large ranked set of results. The topic-relevance map visualizes a topical overview of the search result space as keywords with respect to two essential information retrieval measures: relevance and topical similarity. Non-linear dimensionality reduction is used to embed high-dimensional keyword representations of search result data into angles on a radial layout. Relevance of keywords is estimated by a ranking method and visualized as radiuses on the radial layout. As a result, similar keywords are modeled by nearby points, dissimilar keywords are modeled by distant points, more relevant keywords are closer to the center of the radial display, and less relevant keywords are distant from the center of the radial display. We evaluated the effect of the topic-relevance map in a search result comprehension task where 24 participants were summarizing search results and produced a conceptualization of the result space. The results show that topic-relevance map significantly improves participants' comprehension capability compared to a conventional ranked list presentation.
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