FBK-TR: SVM for Semantic Relatedeness and Corpus Patterns for RTE

نویسندگان

  • Ngoc Phuoc An Vo
  • Octavian Popescu
  • Tommaso Caselli
چکیده

This paper reports the description and scores of our system, FBK-TR, which participated at the SemEval 2014 task #1 "Evaluation of Compositional Distributional Semantic Models on Full Sentences through Semantic Relatedness and Entailment". The system consists of two parts: one for computing semantic relatedness, based on SVM, and the other for identifying the entailment values on the basis of both semantic relatedness scores and entailment patterns based on verb-specific semantic frames. The system ranked 11th on both tasks with competitive results.

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تاریخ انتشار 2014