论文标题
交互有助于用户更好地了解概率模型的结构吗?
Does Interacting Help Users Better Understand the Structure of Probabilistic Models?
论文作者
论文摘要
尽管对概率建模方法和学习工具的可用性越来越兴趣,但没有或多或少的统计背景的人却犹豫不决。需要工具来传达概率模型,以更直观地进行经验较低的用户,以帮助他们构建,验证,有效使用或信任概率模型。在这些情况下,用户对概率模型的理解至关重要,交互式可视化可以增强它。尽管有各种研究评估贝叶斯推理和可视化基于样本的分布的可用工具中的交互性,但我们专门致力于评估交互对用户对概率模型结构的理解的影响。我们根据我们的交互式对图进行了一项用户研究,以形象化模型的分布和图形方式调节样本空间。我们的结果表明,与静态组相比,对更多外来结构(例如分层模型或不熟悉的参数化),对相互作用组的理解的改进最为明显。随着推断信息的细节增加,相互作用不会导致响应时间更长。最后,互动可以提高用户的信心。
Despite growing interest in probabilistic modeling approaches and availability of learning tools, people with no or less statistical background feel hesitant to use them. There is need for tools for communicating probabilistic models to less experienced users more intuitively to help them build, validate, use effectively or trust probabilistic models. Users' comprehension of probabilistic models is vital in these cases and interactive visualizations could enhance it. Although there are various studies evaluating interactivity in Bayesian reasoning and available tools for visualizing the sample-based distributions, we focus specifically on evaluating the effect of interaction on users' comprehension of probabilistic models' structure. We conducted a user study based on our Interactive Pair Plot for visualizing models' distribution and conditioning the sample space graphically. Our results suggest that improvements in the understanding of the interaction group are most pronounced for more exotic structures, such as hierarchical models or unfamiliar parameterizations in comparison to the static group. As the detail of the inferred information increases, interaction does not lead to considerably longer response times. Finally, interaction improves users' confidence.