DIPF | Leibniz Institute for Research and Information in Education, Rostocker Str. 6, 60323, Frankfurt am Main, Germany.
Department of Psychology, Goethe University, Frankfurt, Germany.
Psychon Bull Rev. 2022 Dec;29(6):2192-2201. doi: 10.3758/s13423-022-02124-x. Epub 2022 Jun 29.
Predictive coding models suggest that the brain constantly makes predictions about what will happen next based on past experiences. Learning is triggered by surprising events, i.e., a prediction error. Does it benefit learning when these predictions are made deliberately, so that an individual explicitly commits to an outcome before experiencing it? Across two experiments, we tested whether generating an explicit prediction before seeing numerical facts boosts learning of expectancy-violating information relative to doing so post hoc. Across both experiments, predicting boosted memory for highly unexpected outcomes, leading to a U-shaped relation between expectedness and memory. In the post hoc condition, memory performance decreased with increased unexpectedness. Pupillary data of Experiment 2 further indicated that the pupillary surprise response to highly expectancy-violating outcomes predicted successful learning of these outcomes. Together, these findings suggest that generating an explicit prediction increases learners' stakes in the outcome, which particularly benefits learning of those outcomes that are different than expected.
预测编码模型表明,大脑基于过去的经验不断对接下来会发生什么做出预测。学习是由令人惊讶的事件引发的,即预测错误。当这些预测是故意做出的,也就是说,个体在体验之前就明确承诺一个结果时,这是否有利于学习?在两项实验中,我们测试了在看到数字事实之前生成明确预测是否会相对于事后预测来提高对违反预期信息的学习效果。在两项实验中,预测都增强了对高度出乎意料结果的记忆,导致预期性和记忆之间呈 U 型关系。在事后条件下,记忆表现随着出乎意料程度的增加而下降。实验 2 的瞳孔数据进一步表明,对高度违反预期的结果的瞳孔惊讶反应可以预测对这些结果的成功学习。总之,这些发现表明,生成明确的预测会增加学习者对结果的重视,这对学习那些与预期不同的结果特别有益。