Scientific discovery concerns finding patterns in data and creating insightful hypotheses that explain these patterns. Traditionally, this process required human ingenuity, but with the galloping advances in artificial intelligence (AI) it becomes feasible to automate some parts of scientific discovery. In this work we leverage AI for strategy discovery for understanding human planning. In the state-of-the-art methods data about the process of human planning is often used to group similar behaviors together and formulate verbal descriptions of the strategies which might underlie those groups. Here, we automate these two steps. Our algorithm, called Human-Interpret, uses imitation learning to describe process-tracing data collected in psychological experiments with the Mouselab-MDP paradigm in terms of a procedural formula. Then, it translates that formula to natural language using a pre-defined predicate dictionary. We test our method on a benchmark data set that researchers have previously scrutinized manually. We find that the descriptions of human planning strategies obtained automatically are about as understandable as human-generated descriptions. They also cover a substantial proportion of all types of human planning strategies that had been discovered manually. Our method saves scientists' time and effort as all the reasoning about human planning is done automatically. This might make it feasible to more rapidly scale up the search for yet undiscovered cognitive strategies to many new decision environments, populations, tasks, and domains. Given these results, we believe that the presented work may accelerate scientific discovery in psychology, and due to its generality, extend to problems from other fields.
翻译:科学发现涉及寻找数据模式和创造解释这些模式的深刻假设。 传统上, 这一过程需要人类的智慧, 但随着人工智能(AI)的飞速进步, 将科学发现的某些部分自动化是可行的。 在这项工作中, 我们利用AI 进行战略发现, 以了解人类规划过程。 在最先进的方法中, 关于人类规划过程的数据, 常常被用来将相似的行为集中在一起, 并编制可能构成这些群体的战略的口头描述。 在这里, 我们使这两个步骤自动化。 我们的算法, 叫做人类解释, 利用模拟学习, 描述在与鼠标- MDP 模式的心理实验中收集的流程追踪数据。 然后, 我们用预先定义的上游字典, 将该公式转换为自然语言。 我们用一个基准数据集测试我们的方法, 研究人员以前曾手动地仔细研究过。 我们发现, 人类规划战略的描述, 与人类规划战略的描述一样可以被理解。 它们也覆盖了所有类型的人类规划战略中的相当比例。 我们的方法, 将时间和努力从一个程序上保存到一个过程, 快速地推理化地推论, 。