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Adaptive Contextualization Methods for Combating Selection Bias during High-Dimensional Visualization

机译:高维可视化中用于对抗选择偏差的自适应上下文方法

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摘要

Large and high-dimensional real-world datasets are being gathered across a wide range of application disciplines to enable data-driven decision making. Interactive data visualization can play a critical role in allowing domain experts to select and analyze data from these large collections. However, there is a critical mismatch between the very large number of dimensions in complex real-world datasets and the much smaller number of dimensions that can be concurrently visualized using modern techniques. This gap in dimensionality can result in high levels of selection bias that go unnoticed by users. The bias can in turn threaten the very validity of any subsequent insights. This article describes Adaptive Contextualization (AC), a novel approach to interactive visual data selection that is specifically designed to combat the invisible introduction of selection bias. The AC approach (1) monitors and models a user's visual data selection activity, (2) computes metrics over that model to quantify the amount of selection bias after each step, (3) visualizes the metric results, and (4) provides interactive tools that help users assess and avoid bias-related problems. This article expands on an earlier article presented at ACM IUI 2016 [16] by providing a more detailed review of the AC methodology and additional evaluation results.
机译:大型和高维度的现实世界数据集正在跨各种应用学科收集,以实现数据驱动的决策。交互式数据可视化在允许领域专家从这些大集合中选择和分析数据方面可以发挥关键作用。但是,复杂的现实世界数据集中的大量维数与可以使用现代技术同时可视化的少量维数之间存在严重的不匹配。尺寸上的这种差距可能会导致高水平的选择偏见,而用户却没有注意到。这种偏见反过来可能威胁到任何后续见解的有效性。本文介绍了自适应上下文化(AC),这是一种新颖的交互式可视数据选择方法,专门用于解决选择偏差的无形引入。 AC方法(1)监视和建模用户的视觉数据选择活动,(2)在该模型上计算指标,以量化每个步骤后的选择偏差量,(3)可视化指标结果,(4)提供交互式工具帮助用户评估和避免与偏差相关的问题。本文通过对AC方法论和更多评估结果进行更详细的回顾,对ACM IUI 2016 [16]上的一篇较早的文章进行了扩展。

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