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UMDeep at SemEval-2017 Task 1: End-to-End Shared Weight LSTM Model for Semantic Textual Similarity

机译:UMDeep在SemEval-2017上的任务1:用于语义文本相似性的端到端共享权重LSTM模型

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We describe a modified shared-LSTM network for the Semantic Textual Similarity (STS) task at SemEval-2017. The network builds on previously explored Siamese network architectures. We treat max sentence length as an additional hy-perparameter to be tuned (beyond learning rate, regularization, and dropout). Our results demonstrate that hand-tuning max sentence training length significantly improves final accuracy. After optimizing hyperparameters, we train the network on the multilingual semantic similarity task using pre-translated sentences. We achieved a correlation of 0.4792 for all the subtasks. We achieved the fourth highest team correlation for Task 4b, which was our best relative placement.
机译:我们将在SemEval-2017上描述用于语义文本相似性(STS)任务的改进的共享LSTM网络。该网络建立在以前探索过的暹罗网络体系结构上。我们将最大句子长度视为要调整的其他超参数(超出学习率,正则化和辍学)。我们的结果表明,手动调整最大句子训练长度可以显着提高最终准确性。优化超参数之后,我们使用预翻译的句子在多语言语义相似性任务上训练网络。所有子任务的相关性为0.4792。我们在任务4b中获得了第四高的团队相关性,这是我们最好的相对位置。

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