AI can outperform humans in predicting correlations between personality items.

Philipp Schoenegger, Spencer Greenberg, Alexander Grishin, Joshua Lewis, Lucius Caviola
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Abstract

We assess the abilities of both specialized deep neural networks, such as PersonalityMap, and general LLMs, including GPT-4o and Claude 3 Opus, in understanding human personality by predicting correlations between personality questionnaire items. All AI models outperform the vast majority of laypeople and academic experts. However, we can improve the accuracy of individual correlation predictions by taking the median prediction per group to produce a "wisdom of the crowds" estimate. Thus, we also compare the median predictions from laypeople, academic experts, GPT-4o/Claude 3 Opus, and PersonalityMap. Based on medians, PersonalityMap and academic experts surpass both LLMs and laypeople on most measures. These results suggest that while advanced LLMs make superior predictions compared to most individual humans, specialized models like PersonalityMap can match even expert group-level performance in domain-specific tasks. This underscores the capabilities of large language models while emphasizing the continued relevance of specialized systems as well as human experts for personality research.

在预测性格项目之间的相关性方面,人工智能可以胜过人类。
我们评估了专业深度神经网络(如PersonalityMap)和普通法学硕士(包括gpt - 40和Claude 3 Opus)通过预测人格问卷项目之间的相关性来理解人类人格的能力。所有的人工智能模型都比绝大多数外行人和学术专家表现得更好。然而,我们可以通过采用每组的中位数预测来产生“群体智慧”估计,从而提高个体相关性预测的准确性。因此,我们也比较了外行人、学术专家、gpt - 40 /Claude 3 Opus和PersonalityMap的中位数预测。根据中位数,PersonalityMap和学术专家在大多数指标上都超过了法学硕士和外行人。这些结果表明,虽然高级llm的预测能力比大多数人类个体要好,但像PersonalityMap这样的专业模型在特定领域的任务中甚至可以与专家组级别的表现相媲美。这强调了大型语言模型的能力,同时强调了专业系统以及人格研究的人类专家的持续相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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