Probabilistic models inform an increasingly broad range of business and policy decisions ultimately made by people. Recent algorithmic, computational, and software framework development progress facilitate the proliferation of Bayesian probabilistic models, which characterise unobserved parameters by their joint distribution instead of point estimates. While they can empower decision makers to explore complex queries and to perform what-if-style conditioning in theory, suitable visualisations and interactive tools are needed to maximise users' comprehension and rational decision making under uncertainty. In this paper, propose a protocol for quantitative evaluation of Bayesian model visualisations and introduce a software framework implementing this protocol to support standardisation in evaluation practice and facilitate reproducibility. We illustrate the evaluation and analysis workflow on a user study that explores whether making Boxplots and Hypothetical Outcome Plots interactive can increase comprehension or rationality and conclude with design guidelines for researchers looking to conduct similar studies in the future.
翻译:近期的算法、计算和软件框架开发进展促进了巴伊西亚概率模型的扩展,这些模型通过联合分布而不是点估计来说明未经观察的参数。虽然这些模型能够使决策者能够探索复杂的查询并在理论中进行何种形式的调节,但需要适当的可视化和互动工具,以便在不确定的情况下最大限度地提高用户的理解和合理决策。本文提出了对巴伊西亚模型可视化进行定量评估的议定书,并引入了实施这一议定书的软件框架,以支持评价实践中的标准化,并促进可复制性。我们介绍了一项用户研究的评价和分析工作流程,该研究探讨了如何使Boxplots和Hypothetical Resultures Plots互动地块能够提高理解性或合理性,并最后提出了研究人员设计准则,以便今后进行类似的研究。