使用tree - rnn和类型化依赖关系识别句子对中的语义关系

Jeena Kleenankandy, Abdul Nazeer
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摘要

基于依赖树的递归神经网络(Tree-RNNs)可以有效地捕获非邻域词之间的语义关系,因此在句子意义建模中无处不在。然而,识别具有相同单词和语法的语义不同的句子仍然是tree - rnn的一个挑战。这项工作提出了一种依赖树- rnn (DT-RNN)的改进,使用依赖解析中识别的语法关系类型。我们使用SICK (sentence related Knowledge)数据集对句子对进行语义关联评分(SRS)和文本蕴涵识别(RTE)实验,取得了令人鼓舞的结果。与DT-RNN模型相比,该模型在RTE任务的分类精度上提高了2%。结果表明,该模型预测的相似性得分与人类评分之间的Pearson’s和Spearman’s相关度量高于标准dt - rnn。
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Recognizing semantic relation in sentence pairs using Tree-RNNs and Typed dependencies
Recursive neural networks (Tree-RNNs) based on dependency trees are ubiquitous in modeling sentence meanings as they effectively capture semantic relationships between non-neighborhood words. However, recognizing semantically dissimilar sentences with the same words and syntax is still a challenge to Tree-RNNs. This work proposes an improvement to Dependency Tree-RNN (DT-RNN) using the grammatical relationship type identified in the dependency parse. Our experiments on semantic relatedness scoring (SRS) and recognizing textual entailment (RTE) in sentence pairs using SICK (Sentence Involving Compositional Knowledge) dataset show encouraging results. The model achieved a 2% improvement in classification accuracy for the RTE task over the DT-RNN model. The results show that Pearson's and Spearman's correlation measures between the model's predicted similarity scores and human ratings are higher than those of standard DT-RNNs.
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