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Representation and Reasoning for Deeper Natural Language Understanding in a Physics Tutoring System

机译:在物理辅导系统中对更深层次的自然语言理解的代表和推理

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Students' natural language (NL) explanations in the domain of qualitative mechanics lie in-between unrestricted NL and the constrained NL of "proper" domain statements. Analyzing such input and providing appropriate tutorial feedback requires extracting information relevant to the physics domain and diagnosing this information for possible errors and gaps in reasoning. In this paper we will describe two approaches to solving the diagnosis problem: weighted abductive reasoning and assumption-based truth maintenance system (ATMS). We also outline the features of knowledge representation (KR) designed to capture relevant semantics and to facilitate computational feasibility.
机译:学生的自然语言(NL)在定性力学领域的解释在于不受限制的NL和“适当”域陈述的受约束NL。分析此类输入并提供适当的教程反馈需要提取与物理域相关的信息,并诊断这些信息以获得可能的错误和差距。在本文中,我们将描述解决诊断问题的两种方法:加权绑架推理和基于假设的真理维护系统(ATM)。我们还概述了知识表示(KR)的特征,旨在捕获相关语义,并促进计算可行性。

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