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Two Kinds of Knowledge in Scientific Discovery

机译:科学发现中的两种知识

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Research on computational models of scientific discovery investigates both the induction of descriptive laws and the construction of explanatory models. Although the work in law discovery centers on knowledge-lean approaches to searching a problem space, research on deeper modeling tasks emphasizes the pivotal role of domain knowledge. As an example, our own research on inductive process modeling uses information about candidate processes to explain why variables change over time. However, our experience with IPM, an artificial intelligence system that implements this approach, suggests that process knowledge is insufficient to avoid consideration of implausible models. To this end, the discovery system needs additional knowledge that constrains the model structures. We report on an extended system, SC-IPM, that uses such information to reduce its search through the space of candidates and to produce models that human scientists find more plausible. We also argue that although people carry out less extensive search than SC-IPM, they rely on the same forms of knowledge-processes and constraints-when constructing explanatory models.
机译:科学发现的计算模型研究既研究了描述规律的归纳,又研究了解释模型的构建。尽管法律发现工作的重点是知识稀疏的方法来搜索问题空间,但对更深层次的建模任务的研究却强调了领域知识的关键作用。例如,我们自己的归纳过程建模研究使用有关候选过程的信息来解释为什么变量随时间变化。但是,我们在IPM(一种实现此方法的人工智能系统)方面的经验表明,过程知识不足以避免考虑令人难以置信的模型。为此,发现系统需要约束模型结构的其他知识。我们报告了一个扩展的系统SC-IPM,该系统使用这些信息来减少对候选空间的搜索并生成人类科学家认为更合理的模型。我们还认为,尽管人们进行的搜索不如SC-IPM广泛,但是在构建解释模型时,他们依赖于相同形式的知识过程和约束条件。

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