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Presenting Proofs with Adapted Granularity

机译:提出适应粒度的证据

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When mathematicians present proofs they usually adapt their explanations to their didactic goals and to the (assumed) knowledge of their addressees. Modern automated theorem provers, in contrast, present proofs usually at a fixed level of detail (also called granularity). Often these presentations are neither intended nor suitable for human use. A challenge therefore is to develop user- and goal-adaptive proof presentation techniques that obey common mathematical practice. We present a flexible and adaptive approach to proof presentation based on classification. Expert knowledge for the classification task can be hand-authored or extracted from annotated proof examples via machine learning techniques. The obtained models are employed for the automated generation of further proofs at an adapted level of granularity.
机译:当数学家存在证据时,他们通常会对他们的教学目标进行调整,并向(假设)对其收件人的知识。相比之下,现代自动化定理普通普通的证据通常是固定的细节水平(也称为粒度)。这些演示文稿既不是旨在的也不适合人类使用。因此,挑战是开发遵守常见数学实践的用户和目标 - 自适应证明技巧。我们提出了一种基于分类的灵活性和自适应方法来证明演示。通过机器学习技术可以从带注释的证明示例中撰写或提取分类任务的专家知识。所获得的模型用于以适应的粒度水平自动产生进一步的证据。

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