Humans can generate reasonable answers to novel queries (Schulz, 2012): if I asked you what kind of food you want to eat for lunch, you would respond with a food, not a time. The thought that one would respond "After 4pm" to "What would you like to eat" is either a joke or a mistake, and seriously entertaining it as a lunch option would likely never happen in the first place. While understanding how people come up with new ideas, thoughts, explanations, and hypotheses that obey the basic constraints of a novel search space is of central importance to cognitive science, there is no agreed-on formal model for this kind of reasoning. We propose that a core component of any such reasoning system is a type theory: a formal imposition of structure on the kinds of computations an agent can perform, and how they're performed. We motivate this proposal with three empirical observations: adaptive constraints on learning and inference (i.e. generating reasonable hypotheses), how people draw distinctions between improbability and impossibility, and people's ability to reason about things at varying levels of abstraction.
翻译:人类可以对新奇的询问(Schulz,2012年)做出合理的答案(Schulz,2012年):如果我问你你想要吃什么样的食物来吃午餐,你会用食物而不是时间来回应。认为“下午4点后你想吃什么”是对“你想吃什么”的回答要么是一个笑话,要么是一个错误,严肃地把它当作午餐选项,在一开始可能永远不会发生。理解人们如何提出新的想法、想法、解释和假设,以适应新搜索空间的基本限制对认知科学至关重要,但对于这种推理没有商定的正式模式。我们提议,任何这种推理系统的核心组成部分都是一种理论:对代理人能够完成的计算类型和如何进行的正式结构。我们用三种经验性观察来激励这个提案:对学习和推理的适应性限制(即产生合理的假说 ), 人们如何区分不易和不可能,以及人们对不同程度的抽象事物有理性。