推进人类和动物偏好测试。

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Dana Pfefferle, Steven R Talbot, Pia Kahnau, Lauren C Cassidy, Ralf R Brockhausen, Anne Jaap, Veronika Deikun, Pinar Yurt, Alexander Gail, Stefan Treue, Lars Lewejohann
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引用次数: 0

摘要

偏好测试有助于确定个人对不同选择的重视程度。在偏好测试中,同时呈现两个或多个选项,并根据所做的选择对选项进行排名。然而,所提供的选项是相互影响的,其中影响的程度随着选项的数量而增加。多重二元选择测试可以降低这种影响程度,但传统的分析方法并不能揭示偏好的相对优势,即选项之间的偏好差异。在这里,我们证明了多重二进制比较不仅可以用于排名,还可以用于在许多选项中缩放偏好(即,它们的价值)。我们分析了具有已知价分数的人类图像偏好数据,以开发和验证我们的方法,以确定已知价范围(高与低)如何收敛于偏好数据的缩放表示。我们的方法允许我们在老鼠和恒河猴中评估排序选项的效价。通过模拟,我们开发了一种方法,将额外的选项选择纳入现有的等级顺序,而不需要对所有原始选项进行二元选择测试,从而减少了所需的动物实验数量。两个质量度量,共识误差和不可传递性比率,允许评估比例排名的实现置信度和更好地定制所需的度量,以进一步改进它。该软件是一个R包(“simsalRbim”)。我们的方法优化了偏好测试,例如在福利评估中,并使我们能够有效和定量地评估呈现给动物的选择的相对价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing preference testing in humans and animals.

Preference tests help to determine how highly individuals value different options to choose from. During preference testing, two or more options are presented simultaneously, and options are ranked based on the choices made. Presented options, however, influence each other, where the amount of influence increases with the number of options. Multiple binary choice tests can reduce this degree of influence, but conventional analysis methods do not reveal the relative strengths of preference, i.e., the preference difference between options. Here, we demonstrate that multiple binary comparisons can be used not only to rank but also to scale preferences among many options (i.e., their worth value). We analyzed human image preference data with known valence scores to develop and validate our approach to determine how known valence ranges (high vs. low) converge on a scaled representation of preference data. Our approach allowed us to assess the valence of ranked options in mice and rhesus macaques. By conducting simulations, we developed an approach to incorporate additional option choices into existing rank orders without the need to conduct binary choice tests with all original options, thus reducing the number of animal experiments needed. Two quality measures, consensus error and intransitivity ratio, allow for assessing the achieved confidence of the scaled ranking and better tailoring of measurements required to improve it further. The software is available as an R package ("simsalRbim"). Our approach optimizes preference testing, e.g., in welfare assessment, and allows us to efficiently and quantitatively assess the relative value of options presented to animals.

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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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