The TARSQI Toolkit
نویسندگان
چکیده
We present and demonstrate the updated version of the TARSQI Toolkit, a suite of temporal processing modules that extract temporal information from natural language texts. It parses the document and identifies temporal expressions, recognizes events, anchor events to temporal expressions and orders events relative to each other. The toolkit was previously demonstrated at COLING 2008, but has since seen substantial changes including: (1) incorporation of a new time expression tagger, (2) embracement of stand-off annotation, (3) application to the medical domain and (4) introduction of narrative containers.
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