Humans perceive discrete events such as "restaurant visits" and "train rides" in their continuous experience. One important prerequisite for studying human event perception is the ability of researchers to quantify when one event ends and another begins. Typically, this information is derived by aggregating behavioral annotations from several observers. Here we present an alternative computational approach where event boundaries are derived using a large language model, GPT-3, instead of using human annotations. We demonstrate that GPT-3 can segment continuous narrative text into events. GPT-3-annotated events are significantly correlated with human event annotations. Furthermore, these GPT-derived annotations achieve a good approximation of the "consensus" solution (obtained by averaging across human annotations); the boundaries identified by GPT-3 are closer to the consensus, on average, than boundaries identified by individual human annotators. This finding suggests that GPT-3 provides a feasible solution for automated event annotations, and it demonstrates a further parallel between human cognition and prediction in large language models. In the future, GPT-3 may thereby help to elucidate the principles underlying human event perception.
翻译:人类在持续的经历中感知到“再生访问”和“列车旅行”等离散事件。研究人类事件感知的一个重要先决条件是研究人员在某一事件结束和另一个事件开始时进行量化的能力。通常,这种信息来自若干观察家的行为说明。这里我们介绍了一种替代性的计算方法,即利用大型语言模型,即GPT-3,而不是使用人类说明来得出事件界限。我们表明,GPT-3可以将连续的叙述文字分解为事件内容。GPT-3附带说明的事件与人类事件说明密切相关。此外,GPT-3的这些根据说明可以很好地接近“共识”解决办法(通过人类笔迹之间的平均分布);GPT-3所查明的界限平均而言,比个别人类说明者确定的界限更接近共识。这一发现表明,GPT-3为自动事件说明提供了可行的解决办法,它显示了人类认知和大语言模型预测之间的进一步平行。今后,GPT-3可帮助阐明人类事件认知所依据的原则。