UMDuluth-BlueTeam: SVCSTS - A Multilingual and Chunk Level Semantic Similarity System
نویسندگان
چکیده
This paper describes SVCSTS, a system that was submitted in SemEval-2015 Task 2: Semantic Textual Similarity(STS)(Agirre et al., 2015). The task has 3 subtasks viz., English STS, Spanish STS and Interpretable STS. SVCSTS uses Monolingual word aligner (Sultan et al., May 2014), supervised machine learning, Google and Bing translator API’s. Various runs of the system outperformed all other participating systems in Interpretable STS for non-chunked sentence input.
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