论文标题

RankBooster:排名预测的视觉分析

RankBooster: Visual Analysis of Ranking Predictions

论文作者

Puri, Abishek, Ku, Bon Kyung, Wang, Yong, Qu, Huamin

论文摘要

排名是一种促进各种应用中决策的自然和无处不在的方式。但是,通常将不同的排名用于相同的一组实体,每种排名方法都将重点放在不同的因素上。这些因素本质上也可以是多维的,使问题更加复杂。这种复杂性可以使其对一个实体的挑战,该实体正在排名,以了解他们可以做什么以提高其排名,并分析各种因素变化对整体排名的影响。在本文中,我们提出了RankBooster,这是一种新型的视觉分析系统,可帮助用户方便地研究排名预测。我们以大学排名为例,并专注于帮助大学更好地探索其排名,在那里他们可以将自己与关键领域的竞争对手进行比较。提出了新的可视化来实现对排名的有效分析,包括场景分析视图,以显示不同排名场景的高级摘要,一种关系的观点,可视化每个属性对不同指标的影响以及比较大学及其竞争对手的排名的竞争观点。案例研究表明,RankBooster在促进排名预测的视觉分析并帮助用户更好地了解其当前状况方面的有用性和有效性。

Ranking is a natural and ubiquitous way to facilitate decision-making in various applications. However, different rankings are often used for the same set of entities, with each ranking method placing emphasis on different factors. These factors can also be multi-dimensional in nature, compounding the problem. This complexity can make it challenging for an entity which is being ranked to understand what they can do to improve their rankings, and to analyze the effect of changes in various factors to their overall rank. In this paper, we present RankBooster, a novel visual analytics system to help users conveniently investigate ranking predictions. We take university rankings as an example and focus on helping universities to better explore their rankings, where they can compare themselves to their rivals in key areas as well as overall. Novel visualizations are proposed to enable efficient analysis of rankings, including a Scenario Analysis View to show a high-level summary of different ranking scenarios, a Relationship View to visualize the influence of each attribute on different indicators and a Rival View to compare the ranking of a university and those of its rivals. A case study demonstrates the usefulness and effectiveness of RankBooster in facilitating the visual analysis of ranking predictions and helping users better understand their current situation.

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