Hafenbrädl Sebastian, Hoffrage Ulrich
Faculty of Business and Economics, University of Lausanne Lausanne, Switzerland.
Front Psychol. 2015 Aug 4;6:939. doi: 10.3389/fpsyg.2015.00939. eCollection 2015.
In research on Bayesian inferences, the specific tasks, with their narratives and characteristics, are typically seen as exchangeable vehicles that merely transport the structure of the problem to research participants. In the present paper, we explore whether, and possibly how, task characteristics that are usually ignored influence participants' responses in these tasks. We focus on both quantitative dimensions of the tasks, such as their base rates, hit rates, and false-alarm rates, as well as qualitative characteristics, such as whether the task involves a norm violation or not, whether the stakes are high or low, and whether the focus is on the individual case or on the numbers. Using a data set of 19 different tasks presented to 500 different participants who provided a total of 1,773 responses, we analyze these responses in two ways: first, on the level of the numerical estimates themselves, and second, on the level of various response strategies, Bayesian and non-Bayesian, that might have produced the estimates. We identified various contingencies, and most of the task characteristics had an influence on participants' responses. Typically, this influence has been stronger when the numerical information in the tasks was presented in terms of probabilities or percentages, compared to natural frequencies - and this effect cannot be fully explained by a higher proportion of Bayesian responses when natural frequencies were used. One characteristic that did not seem to influence participants' response strategy was the numerical value of the Bayesian solution itself. Our exploratory study is a first step toward an ecological analysis of Bayesian inferences, and highlights new avenues for future research.
在贝叶斯推理研究中,特定任务及其叙述和特征通常被视为可互换的载体,仅仅是将问题结构传递给研究参与者。在本文中,我们探讨通常被忽视的任务特征是否以及可能如何影响参与者在这些任务中的反应。我们既关注任务的定量维度,如基础概率、命中率和误报率,也关注定性特征,如任务是否涉及违反规范、风险高低以及关注点是个别案例还是数字。我们使用了一个包含19种不同任务的数据集,这些任务呈现给500名不同的参与者,他们总共提供了1773个回答。我们通过两种方式分析这些回答:第一,在数值估计本身的层面;第二,在可能产生这些估计的各种反应策略(贝叶斯和非贝叶斯策略)的层面。我们确定了各种意外情况,并且大多数任务特征都对参与者的反应产生了影响。通常,与自然频率相比,当任务中的数值信息以概率或百分比形式呈现时,这种影响更强——而且当使用自然频率时贝叶斯反应比例较高并不能完全解释这种效应。一个似乎不影响参与者反应策略的特征是贝叶斯解本身的数值。我们的探索性研究是迈向贝叶斯推理生态分析的第一步,并突出了未来研究的新途径。