OPI: Semeval-2014 Task 3 System Description
نویسنده
چکیده
In this paper, we describe the OPI system participating in the Semeval-2014 task 3 Cross-Level Semantic Similarity. Our approach is knowledge-poor, there is no exploitation of any structured knowledge resources as Wikipedia, WordNet or BabelNet. The method is also fully unsupervised, the training set is only used in order to tune the system. System measures the semantic similarity of texts using corpusbased measures of termsets similarity.
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