Carnegie Mellon University, Pittsburgh, PA 15213, USA.
Comput Intell Neurosci. 2013;2013:921695. doi: 10.1155/2013/921695. Epub 2013 Nov 5.
Sensemaking is the active process of constructing a meaningful representation (i.e., making sense) of some complex aspect of the world. In relation to intelligence analysis, sensemaking is the act of finding and interpreting relevant facts amongst the sea of incoming reports, images, and intelligence. We present a cognitive model of core information-foraging and hypothesis-updating sensemaking processes applied to complex spatial probability estimation and decision-making tasks. While the model was developed in a hybrid symbolic-statistical cognitive architecture, its correspondence to neural frameworks in terms of both structure and mechanisms provided a direct bridge between rational and neural levels of description. Compared against data from two participant groups, the model correctly predicted both the presence and degree of four biases: confirmation, anchoring and adjustment, representativeness, and probability matching. It also favorably predicted human performance in generating probability distributions across categories, assigning resources based on these distributions, and selecting relevant features given a prior probability distribution. This model provides a constrained theoretical framework describing cognitive biases as arising from three interacting factors: the structure of the task environment, the mechanisms and limitations of the cognitive architecture, and the use of strategies to adapt to the dual constraints of cognition and the environment.
意义建构是对世界某个复杂方面进行有意义的表述(即建构意义)的主动过程。就情报分析而言,意义建构是在大量的报告、图像和情报中发现和解释相关事实的行为。我们提出了一种核心信息搜索和假设更新意义建构过程的认知模型,该模型适用于复杂的空间概率估计和决策任务。虽然该模型是在混合符号统计认知架构中开发的,但它在结构和机制方面与神经框架相对应,为理性和神经描述层面之间提供了直接的桥梁。与来自两个参与者群体的数据相比,该模型正确地预测了四种偏差的存在和程度:确认偏差、锚定和调整偏差、代表性偏差和概率匹配偏差。它还很好地预测了人类在跨类别生成概率分布、根据这些分布分配资源以及给定先验概率分布选择相关特征方面的表现。该模型提供了一个受约束的理论框架,将认知偏差描述为三个相互作用的因素的结果:任务环境的结构、认知架构的机制和局限性,以及适应认知和环境双重约束的策略的使用。