%A HOU Chun-Na, LIU Zhi-Jun %T Visualization of mental representation: Noise-based reverse correlation image classification technology %0 Journal Article %D 2019 %J Advances in Psychological Science %R 10.3724/SP.J.1042.2019.00465 %P 465-474 %V 27 %N 3 %U {https://journal.psych.ac.cn/adps/CN/abstract/article_4619.shtml} %8 2019-03-15 %X

Studies of the mental representation of images in social psychology have encountered difficulty in accurately portraying psychological activity. Over the past decade, reverse correlation image classification has emerged as a new psychophysical method that assumes there is a relationship between an observer’s response and visual noise, and that the response is based on the observer’s social judgment criteria, and are not random. Performing a sufficient number of weight calculations on the corresponding noise patterns of the observer’s reaction allows us to visualize the intrinsic evaluation characteristics of the observer. The use of reverse correlation image classification technology has achieved some results in the areas of trait research, ethnicity, and intergroup bias. In the future, however, it is necessary to solve the problems of excessive experimental trials, separation of mixed noise, and subjects’ performance, in order to achieve more realistic mental representations.