Abstract:
XML semantic-aware processing has become a motivating and
important challenge in Web data management, data processing,
and information retrieval. While XML data is semi-structured, yet
it remains prone to lexical ambiguity, and thus requires dedicated
semantic analysis and sense disambiguation processes to assign
well-defined meaning to XML elements and attributes. This
becomes crucial in an array of applications ranging over
semantic-aware query rewriting, semantic document clustering
and classification, schema matching, as well as blog analysis and
event detection in social networks and tweets. Most existing
approaches in this context: i) ignore the problem of identifying
ambiguous XML nodes, ii) only partially consider their structural
relations/context, iii) use syntactic information in processing
XML data regardless of the semantics involved, and iv) are static
in adopting fixed disambiguation constraints thus limiting user
involvement. In this paper, we provide a new XML Semantic
Disambiguation Framework titled XSDF designed to address each
of the above motivations, taking as input: an XML document and
a general purpose semantic network, and then producing as output
a semantically augmented XML tree made of unambiguous
semantic concepts. Experiments demonstrate the effectiveness of
our approach in comparison with alternative methods.
Citation:
Charbel, N., Tekli, J., Chbeir, R., & Tekli, G. (2015, March). Resolving XML Semantic Ambiguity. In EDBT (pp. 277-288).