心理学
分类
价(化学)
社会心理学
反对派(政治)
刺激(心理学)
跨文化
中国大陆
大陆
发展心理学
中国
认知心理学
地理
语言学
政治
社会学
化学
人类学
政治学
法学
有机化学
考古
哲学
作者
Claudia Kawai,Yang Zhang,Gáspár Lukács,W. K. Chu,Chaoyi Zheng,Cijun Gao,Davood G. Gozli,Yonghui Wang,Ulrich Ansorge
标识
DOI:10.1007/s00426-022-01697-5
摘要
Cultural differences-as well as similarities-have been found in explicit color-emotion associations between Chinese and Western populations. However, implicit associations in a cross-cultural context remain an understudied topic, despite their sensitivity to more implicit knowledge. Moreover, they can be used to study color systems-that is, emotional associations with one color in the context of an opposed one. Therefore, we tested the influence of two different color oppositions on affective stimulus categorization: red versus green and red versus white, in two experiments. In Experiment 1, stimuli comprised positive and negative words, and participants from the West (Austria/Germany), and the East (Mainland China, Macau) were tested in their native languages. The Western group showed a significantly stronger color-valence interaction effect than the Mainland Chinese (but not the Macanese) group for red-green but not for red-white opposition. To explore color-valence interaction effects independently of word stimulus differences between participant groups, we used affective silhouettes instead of words in Experiment 2. Again, the Western group showed a significantly stronger color-valence interaction than the Chinese group in red-green opposition, while effects in red-white opposition did not differ between cultural groups. Our findings complement those from explicit association research in an unexpected manner, where explicit measures showed similarities between cultures (associations for red and green), our results revealed differences and where explicit measures showed differences (associations with white), our results showed similarities, underlining the value of applying comprehensive measures in cross-cultural research on cross-modal associations.
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