Heck Daniel W, Erdfelder Edgar
Department of Psychology, School of Social Sciences, University of Mannheim.
Psychol Rev. 2017 Jul;124(4):442-471. doi: 10.1037/rev0000063. Epub 2017 Apr 3.
When making inferences about pairs of objects, one of which is recognized and the other is not, the recognition heuristic states that participants choose the recognized object in a noncompensatory way without considering any further knowledge. In contrast, information-integration theories such as parallel constraint satisfaction (PCS) assume that recognition is merely one of many cues that is integrated with further knowledge in a compensatory way. To test both process models against each other without manipulating recognition or further knowledge, we include response times into the r-model, a popular multinomial processing tree model for memory-based decisions. Essentially, this response-time-extended r-model allows to test a crucial prediction of PCS, namely, that the integration of recognition-congruent knowledge leads to faster decisions compared to the consideration of recognition only-even though more information is processed. In contrast, decisions due to recognition-heuristic use are predicted to be faster than decisions affected by any further knowledge. Using the classical German-cities example, simulations show that the novel measurement model discriminates between both process models based on choices, decision times, and recognition judgments only. In a reanalysis of 29 data sets including more than 400,000 individual trials, noncompensatory choices of the recognized option were estimated to be slower than choices due to recognition-congruent knowledge. This corroborates the parallel information-integration account of memory-based decisions, according to which decisions become faster when the coherence of the available information increases. (PsycINFO Database Record
在对成对的物体进行推理时,其中一个是被识别的,另一个是未被识别的,识别启发式认为参与者以非补偿性的方式选择被识别的物体,而不考虑任何其他知识。相比之下,诸如并行约束满足(PCS)等信息整合理论则假设,识别仅仅是众多线索之一,它会以补偿性的方式与其他知识整合在一起。为了在不操纵识别或其他知识的情况下对这两种过程模型进行相互测试,我们将反应时间纳入了r模型,这是一种用于基于记忆的决策的流行多项式加工树模型。从本质上讲,这种扩展了反应时间的r模型能够测试PCS的一个关键预测,即与仅考虑识别相比,整合与识别一致的知识会导致更快的决策——即使处理了更多信息。相比之下,预计基于识别启发式做出的决策要比受任何其他知识影响的决策更快。以经典的德国城市例子为例,模拟结果表明,这种新颖的测量模型仅基于选择、决策时间和识别判断就能区分这两种过程模型。在对29个数据集(包括超过40万次个体试验)的重新分析中,估计对已识别选项的非补偿性选择要比基于与识别一致的知识做出的选择更慢。这证实了基于记忆的决策的并行信息整合观点,根据这一观点,当可用信息的连贯性增加时,决策会变得更快。(《心理学文摘数据库记录》