ICL Participation at RTE-7
نویسندگان
چکیده
This paper describes ICL’s participation at RTE-7. We chose the Main task. Textual entailment is a problem to predict whether an entailment holds for a given test-hypothesis pair. We built an inference model to solve this problem by means of using dependency syntax analysis (by Stanford Parser), lexical knowledge base (e.g. Wordnet), web information (e.g. Wikipedia) and probability method.
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