Chuang Yun-Shiuan, Zhu Xiaojin, Rogers Timothy T
Department of Psychology and Department of Computer Science, University of Wisconsin-Madison.
Department of Computer Science, University of Wisconsin-Madison.
Top Cogn Sci. 2025 Jan;17(1):73-87. doi: 10.1111/tops.12783. Epub 2025 Jan 27.
Whereas cognitive models of learning often assume direct experience with both the features of an event and with a true label or outcome, much of everyday learning arises from hearing the opinions of others, without direct access to either the experience or the ground-truth outcome. We consider how people can learn which opinions to trust in such scenarios by extending the hedge algorithm: a classic solution for learning from diverse information sources. We first introduce a semi-supervised variant we call the delusional hedge capable of learning from both supervised and unsupervised experiences. In two experiments, we examine the alignment between human judgments and predictions from the standard hedge, the delusional hedge, and a heuristic baseline model. Results indicate that humans effectively incorporate both labeled and unlabeled information in a manner consistent with the delusional hedge algorithm-suggesting that human learners not only gauge the accuracy of information sources but also their consistency with other reliable sources. The findings advance our understanding of human learning from diverse opinions, with implications for the development of algorithms that better capture how people learn to weigh conflicting information sources.
虽然学习的认知模型通常假定对事件的特征以及真实标签或结果都有直接体验,但日常学习的大部分是通过听取他人的意见产生的,而无法直接接触到体验或真实结果。我们考虑人们如何通过扩展对冲算法(一种从不同信息源学习的经典解决方案)来学会在这种情况下信任哪些意见。我们首先引入一种半监督变体,我们称之为妄想对冲,它能够从监督和无监督的经验中学习。在两个实验中,我们检验了人类判断与标准对冲、妄想对冲和启发式基线模型的预测之间的一致性。结果表明,人类以与妄想对冲算法一致的方式有效地整合了标记和未标记的信息,这表明人类学习者不仅衡量信息源的准确性,还衡量它们与其他可靠信息源的一致性。这些发现推进了我们对人类从不同意见中学习的理解,对开发能更好地捕捉人们如何学会权衡相互冲突的信息源的算法具有启示意义。