Tractor is a system for understanding English messages within the context of hard and soft information fusion for situation assessment. Tractor processes a message through text processors using standard natural language processing techniques, and represents the result in a formal knowledge representation language. The result is a hybrid syntactic-semantic knowledge base that is mostly syntactic. Tractor then adds relevant ontological and geographic information. Finally, it applies hand-crafted syntax-semantics mapping rules to convert the syntactic information into semantic information, although the final result is still a hybrid syntactic-semantic knowledge base. This chapter presents the various stages of Tractor’s natural language understanding process, with particular emphasis on discussions of the representation used and of the syntax-semantics mapping rules.
CITATION STYLE
Shapiro, S. C., & Schlegel, D. R. (2016). Natural language understanding for information fusion. In Fusion Methodologies in Crisis Management: Higher Level Fusion and Decision Making (pp. 27–45). Springer International Publishing. https://doi.org/10.1007/978-3-319-22527-2_2
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