Department of Psychology, University of California, San Diego, CA, USA.
Psychol Sci. 2012 Mar;23(3):288-94. doi: 10.1177/0956797611429710. Epub 2012 Feb 15.
To investigate individual differences in creativity as measured with a complex problem-solving task, we developed a computational model of the remote associates test (RAT). For 50 years, the RAT has been used to measure creativity. Each RAT question presents three cue words that are linked by a fourth word, which is the correct answer. We hypothesized that individuals perform poorly on the RAT when they are biased to consider high-frequency candidate answers. To assess this hypothesis, we tested individuals with 48 RAT questions and required speeded responding to encourage guessing. Results supported our hypothesis. We generated a norm-based model of the RAT using a high-dimensional semantic space, and this model accurately identified correct answers. A frequency-biased model that included different levels of bias for high-frequency candidate answers explained variance for both correct and incorrect responses. Providing new insight into the nature of creativity, the model explains why some RAT questions are more difficult than others, and why some people perform better than others on the RAT.
为了研究使用复杂问题解决任务衡量的创造力个体差异,我们开发了一种远程联想测验(RAT)的计算模型。五十年来,RAT 一直被用于衡量创造力。每个 RAT 问题呈现三个提示词,它们通过第四个词连接,第四个词是正确答案。我们假设当个体偏向于考虑高频候选答案时,他们在 RAT 上的表现会很差。为了检验这一假设,我们对 48 个 RAT 问题进行了测试,并要求快速作答以鼓励猜测。结果支持了我们的假设。我们使用高维语义空间生成了 RAT 的基于规范的模型,该模型准确地识别了正确答案。一个包含高频候选答案不同程度偏差的频率偏差模型解释了正确和错误反应的方差。该模型为创造力的本质提供了新的见解,解释了为什么有些 RAT 问题比其他问题更难,以及为什么有些人在 RAT 上的表现优于其他人。