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NaCTeM at SemEval-2016 Task 1: Inferring sentence-level semantic similarity from an ensemble of complementary lexical and sentence-level features

机译:2016年Semeval-2016任务1:从互补词汇和句子级别的集合推断出句子级语义相似之处

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We present a description of the system submitted to the Semantic Textual Similarity (STS) shared task at SemEval 2016. The task is to assess the degree to which two sentences carry the same meaning. We have designed two different methods to automatically compute a similarity score between sentences. The first method combines a variety of semantic similarity measures as features in a machine learning model. In our second approach, we employ training data from the Interpretable Similarity subtask to create a combined word-similarity measure and assess the importance of both aligned and unaligned words. Finally, we combine the two methods into a single hybrid model. Our best-performing run attains a score of 0.7732 on the 2015 STS evaluation data and 0.7488 on the 2016 STS evaluation data.
机译:我们展示了在Semeval 2016年提交给语义文本相似性(STS)共享任务的系统的描述。任务是评估两个句子带有相同含义的程度。我们设计了两种不同的方法来自动计算句子之间的相似性得分。第一种方法将各种语义相似度措施与机器学习模型中的特征相结合。在我们的第二种方法中,我们使用来自可解释的相似性子任务的培训数据来创建组合的单词相似度测量并评估对齐和未对齐的单词的重要性。最后,我们将这两种方法与单个混合模型相结合。我们最佳的运行在2015年STS评估数据和2016年STS评估数据上获得0.7732的得分为0.7732。

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