As we discussed in Part I of this topic, there is a clear desire to model and comprehend human behavior. Given the popular presupposition of human reasoning as the standard for learning and decision-making, there have been significant efforts and a growing trend in research to replicate these innate human abilities in artificial systems. In Part I, we discussed learning methods which generate a model of behavior from exploration of the system and feedback based on the exhibited behavior as well as topics relating to the use of or accounting for beliefs with respect to applicable skills or mental states of others. In this work, we will continue the discussion from the perspective of methods which focus on the assumed cognitive abilities, limitations, and biases demonstrated in human reasoning. We will arrange these topics as follows (i) methods such as cognitive architectures, cognitive heuristics, and related which demonstrate assumptions of limitations on cognitive resources and how that impacts decisions and (ii) methods which generate and utilize representations of bias or uncertainty to model human decision-making or the future outcomes of decisions.
翻译:正如我们在本专题的第一部分中所讨论的那样,我们显然希望模拟和理解人类行为。鉴于人们普遍认为人的推理是学习和决策的标准,在研究方面已作出重大努力并出现了日益扩大的趋势,以便在人工系统中复制这些固有的人的能力。在第一部分中,我们讨论了学习方法,这些方法通过探索系统产生行为模式,并根据所展示的行为以及使用或核算信仰时与适用技能或他人精神状态有关的议题产生反馈。在这项工作中,我们将继续从注重假定的认知能力、局限性和在人类推理中表现出的偏见的方法的角度进行讨论。我们将将这些专题安排如下:(一) 认知结构、认知超自然学等方法,以及相关方法,这些方法表明对认知资源的局限性的假设,以及这种假设如何影响决策以及(二) 产生和利用偏见或不确定性的表述来模拟人类决策或未来决策结果的方法。