VENSESEVAL at Semeval-2016 Task 2 iSTS - with a full-fledged rule-based approach

نویسنده

  • Rodolfo Delmonte
چکیده

In our paper we present our rule-based system for semantic processing. In particular we show examples and solutions that may be challenge our approach. We then discuss problems and shortcomings of Task 2 – iSTS. We comment on the existence of a tension between the inherent need to on the one side, to make the task as much as possible “semantically feasible”. Whereas the detailed presentation and some notes in the guidelines refer to inferential processes, paraphrases and the use of commonsense knowledge of the world for the interpretation to work. We then present results and some conclusions.

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تاریخ انتشار 2016