Moving from Textual Relations to Ontologized Relations.pdf

Moving from Textual Relations to Ontologized Relations.pdf

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Moving from Textual Relations to Ontologized Relations

Moving from Textual Relations to Ontologized Relations Stephen Soderland and Bhushan Mandhani Turing Center Dept of Computer Science University of Washington Seattle, USA Abstract There has been recent research in open-ended information extraction from text that finds relational triples of the form (arg1, relation phrase, arg2), where the relation phrase is a text string that expresses a relation between two arbitrary noun phrases. While such a relational triple is a good first step, much further work is required to turn such a textual rela- tion into a logical form that supports inferencing. The strings from arg1 and arg2 must be normalized, disambiguated, and mapped to a formal taxonomy. The relation phrase must like- wise be normalized and mapped to a clearly defined logi- cal relation. Some relation phrases can be mapped to a set of pre-defined relations such as Part-0f and Causes. We fo- cus instead on arbitrary relation phrases that are discovered from text. For this, we need to automatically merge synony- mous relations and discover meta-properties such as entail- ment. Ultimately, we want the coverage of a bottom-up ap- proach together with the rich set of axioms associated with a top-down approach. We have begun exploratory work in “ontologizing” the output of TextRunner, an open information extraction system that finds arbitrary relational triples from text. Our test domain is 2.5 million Web pages on health and nutrition, which yields relational triples such as (orange, contains, vitamin C) and (fruits, are rich in, antioxidants). We automatically disam- biguate the strings arg1 and arg2, mapping them to WordNet synsets. We also learn entailments between normalized re- lation strings (e.g. “be rich in” entails “contain”). This en- hanced ontology enables reasoning about relationships that are not seen in the corpus, but can be inferred by inheritance and entailment. Further, we define ontology-based relation- ships between the extracted triples themselves

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