Department of Psychology, Vanderbilt University.
Department of Psychology, City University London.
J Exp Psychol Gen. 2017 Sep;146(9):1307-1341. doi: 10.1037/xge0000326. Epub 2017 Jul 6.
There is considerable variety in human inference (e.g., a doctor inferring the presence of a disease, a juror inferring the guilt of a defendant, or someone inferring future weight loss based on diet and exercise). As such, people display a wide range of behaviors when making inference judgments. Sometimes, people's judgments appear Bayesian (i.e., normative), but in other cases, judgments deviate from the normative prescription of classical probability theory. How can we combine both Bayesian and non-Bayesian influences in a principled way? We propose a unified explanation of human inference using quantum probability theory. In our approach, we postulate a hierarchy of mental representations, from 'fully' quantum to 'fully' classical, which could be adopted in different situations. In our hierarchy of models, moving from the lowest level to the highest involves changing assumptions about compatibility (i.e., how joint events are represented). Using results from 3 experiments, we show that our modeling approach explains 5 key phenomena in human inference including order effects, reciprocity (i.e., the inverse fallacy), memorylessness, violations of the Markov condition, and antidiscounting. As far as we are aware, no existing theory or model can explain all 5 phenomena. We also explore transitions in our hierarchy, examining how representations change from more quantum to more classical. We show that classical representations provide a better account of data as individuals gain familiarity with a task. We also show that representations vary between individuals, in a way that relates to a simple measure of cognitive style, the Cognitive Reflection Test. (PsycINFO Database Record
人类推理存在很大的差异(例如,医生推断疾病的存在,陪审员推断被告的罪行,或者有人根据饮食和运动推断未来的体重减轻)。因此,人们在进行推理判断时表现出广泛的行为。有时,人们的判断似乎是贝叶斯的(即规范的),但在其他情况下,判断偏离了经典概率论的规范规定。我们如何以一种有原则的方式将贝叶斯和非贝叶斯的影响结合起来?我们使用量子概率论对人类推理提出了一个统一的解释。在我们的方法中,我们假设了一个从“完全”量子到“完全”经典的心理表示层次结构,可以在不同情况下采用。在我们的模型层次结构中,从最低级到最高级的移动涉及到关于兼容性的假设(即联合事件如何表示)的改变。使用 3 个实验的结果,我们表明,我们的建模方法可以解释人类推理中的 5 个关键现象,包括顺序效应、互惠性(即逆反谬误)、无记忆性、违反马尔可夫条件和反折扣。据我们所知,没有现有的理论或模型可以解释所有 5 个现象。我们还探讨了我们的层次结构中的转变,研究了表示如何从更量子化到更经典化的变化。我们表明,随着个体对任务的熟悉程度的提高,经典表示提供了对数据更好的解释。我们还表明,代表在个体之间是不同的,这与认知风格的一种简单衡量标准——认知反射测试有关。