Takehara Takuma, Ochiai Fumio, Suzuki Naoto
a Department of Psychology , Doshisha University , Kyoto , Japan.
b Department of Psychology , University of Cincinnati , Cincinnati , OH , USA.
Q J Exp Psychol (Hove). 2016;69(8):1508-29. doi: 10.1080/17470218.2015.1086393. Epub 2015 Oct 27.
Various models have been proposed to increase understanding of the cognitive basis of facial emotions. Despite those efforts, interactions between facial emotions have received minimal attention. If collective behaviours relating to each facial emotion in the comprehensive cognitive system could be assumed, specific facial emotion relationship patterns might emerge. In this study, we demonstrate that the frameworks of complex networks can effectively capture those patterns. We generate 81 facial emotion images (6 prototypes and 75 morphs) and then ask participants to rate degrees of similarity in 3240 facial emotion pairs in a paired comparison task. A facial emotion network constructed on the basis of similarity clearly forms a small-world network, which features an extremely short average network distance and close connectivity. Further, even if two facial emotions have opposing valences, they are connected within only two steps. In addition, we show that intermediary morphs are crucial for maintaining full network integration, whereas prototypes are not at all important. These results suggest the existence of collective behaviours in the cognitive systems of facial emotions and also describe why people can efficiently recognize facial emotions in terms of information transmission and propagation. For comparison, we construct three simulated networks--one based on the categorical model, one based on the dimensional model, and one random network. The results reveal that small-world connectivity in facial emotion networks is apparently different from those networks, suggesting that a small-world network is the most suitable model for capturing the cognitive basis of facial emotions.
人们已经提出了各种模型来增进对面部表情认知基础的理解。尽管做出了这些努力,但面部表情之间的相互作用却很少受到关注。如果可以假设在综合认知系统中与每种面部表情相关的集体行为,那么可能会出现特定的面部表情关系模式。在本研究中,我们证明复杂网络框架可以有效地捕捉这些模式。我们生成了81张面部表情图像(6个原型和75个变形),然后要求参与者在配对比较任务中对3240对面部表情的相似度进行评分。基于相似度构建的面部表情网络明显形成了一个小世界网络,其特点是平均网络距离极短且连接紧密。此外,即使两种面部表情具有相反的效价,它们也只需两步就能连接起来。此外,我们表明中间变形对于维持完整的网络整合至关重要,而原型则完全不重要。这些结果表明面部表情认知系统中存在集体行为,也解释了为什么人们能够从信息传递和传播的角度有效地识别面部表情。为了进行比较,我们构建了三个模拟网络——一个基于分类模型,一个基于维度模型,还有一个随机网络。结果表明,面部表情网络中的小世界连通性明显不同于那些网络,这表明小世界网络是捕捉面部表情认知基础的最合适模型。