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Using Transformations to Improve Semantic Matching

机译:使用转换改进语义匹配

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摘要

Many AI tasks require determining whether two knowledge representations encode the same knowledge. Solving this matching problem is hard because representations may encode the same content but differ substantially in form. Previous approaches to this problem have used either syntactic measures, such as graph edit distance, or semantic knowledge to determine the "distance" between two representations. Although semantic approaches outperform syntactic ones, previous research has focused primarily on the use of taxonomic knowledge. We show that this is not enough because mismatches between representations go largely unad-dressed. In this paper, we describe how transformations can augment existing semantic approaches to further improve matching. We also describe the application of our approach to the task of critiquing military Courses of Action and compare its performance to other leading algorithms.
机译:许多AI任务需要确定两个知识表示是否编码相同的知识。解决此匹配问题很困难,因为表示形式可能会编码相同的内容,但形式上会有很大不同。解决此问题的先前方法已使用语法措施(例如图形编辑距离)或语义知识来确定两个表示之间的“距离”。尽管语义方法优于语法方法,但先前的研究主要集中在分类知识的使用上。我们证明这还不够,因为表示之间的不匹配在很大程度上无法解决。在本文中,我们描述了转换如何增强现有的语义方法以进一步改善匹配。我们还将描述我们的方法在军事行动路线评估中的应用,并将其性能与其他领先算法进行比较。

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