Ounjai Kajornvut, Suppaso Lalida, Hohwy Jakob, Lauwereyns Johan
Biological Engineering Program, Faculty of Engineering, King Mongkut's University of Technology Thonburi, Bangkok, Thailand.
School of Philosophical, Historical, and International Studies, Monash University, Melbourne, VIC, Australia.
Front Psychol. 2020 Sep 15;11:569078. doi: 10.3389/fpsyg.2020.569078. eCollection 2020.
In previous research on the evaluation of food images, we found that appetitive food images were rated higher following a positive prediction than following a negative prediction, and vice versa for aversive food images. The findings suggested an active confirmation bias. Here, we examine whether this influence from prediction depends on the evaluative polarization of the food images. Specifically, we divided the set of food images into "strong" and "mild" images by how polarized (i.e., extreme) their average ratings were across all conditions. With respect to the influence from prediction, we raise two alternative hypotheses. According to a predictive dissonance hypothesis, the larger the discrepancy between prediction and outcome, the stronger the active inference toward accommodating the outcome with the prediction; thus, the confirmation bias should obtain particularly with strong images. Conversely, according to a nudging-in-volatility hypothesis, the active confirmation bias operates only on images within a dynamic range, where the values of images are volatile, and not on the evaluation of images that are too obviously appetitive or aversive; accordingly, the effects from prediction should occur predominately with mild images. Across the data from two experiments, we found that the evaluation of mild images tended to exhibit the confirmation bias, with ratings that followed the direction given by the prediction. For strong images, there was no confirmation bias. Our findings corroborate the nudging-in-volatility hypothesis, suggesting that predictive cues may be able to tip the balance of evaluation particularly for food images that do not have a strongly polarized value.
在先前关于食物图像评价的研究中,我们发现,与负面预测相比,正面预测后的诱人食物图像评分更高,而厌恶食物图像的情况则相反。这些发现表明存在一种积极的确认偏差。在此,我们研究这种预测影响是否取决于食物图像的评价极化。具体而言,我们根据所有条件下食物图像平均评分的极化程度(即极端程度),将食物图像集分为“强烈”和“温和”图像。关于预测的影响,我们提出了两个备择假设。根据预测失调假设,预测与结果之间的差异越大,为使结果与预测相符而进行的主动推理就越强;因此,确认偏差尤其应在强烈图像中出现。相反,根据波动性助推假设,主动确认偏差仅作用于动态范围内的图像,即图像的值具有波动性,而不适用于过于明显诱人或厌恶的图像评价;因此,预测的影响应主要出现在温和图像中。通过两个实验的数据,我们发现温和图像的评价倾向于表现出确认偏差,评分遵循预测给出的方向。对于强烈图像,不存在确认偏差。我们的发现证实了波动性助推假设,表明预测线索可能能够特别影响那些价值极化不强烈的食物图像的评价平衡。