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QLUT at SemEval-2017 Task 2: Word Similarity Based on Word Embedding and Knowledge Base

机译:QLUT在SemEval-2017任务2:基于词嵌入和知识库的词相似度

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This paper shows the details of our system submissions in the task 2 of SemEval 2017. We take part in the subtask 1 of this task, which is an English monolingual sub-task. This task is designed to evaluate the semantic word similarity of two linguistic items. The results of runs are assessed by standard Pearson and Spearman correlation, contrast with official gold standard set. The best performance of our runs is 0.781 (Final). The techniques of our runs mainly make use of the word embeddings and the knowledge-based method. The results demonstrate that the combined method is effective for the computation of word similarity, while the word embeddings and the knowledge-based technique, respectively, needs more deeply improvement in details.
机译:本文显示了我们在Semeval 2017的任务2中提交的系统提交的详细信息。我们参加了这项任务的子任务1,这是英语单格式子任务。此任务旨在评估两个语言项目的语义词相似性。运行的结果由标准的Pearson和Spearman相关评估,与官方黄金标准集对比。我们运行的最佳表现是0.781(最终)。我们的运行技术主要利用嵌入词和基于知识的方法。结果表明,组合方法对于单词相似性有效,而分别的单词嵌入和基于知识的技术,需要更深入地改善细节。

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