基于递归神经网络的科学句对语义分类

Agung Besti, Ridwan Ilyas, Fatan Kasyidi, E. C. Djamal
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引用次数: 1

摘要

自然语言处理的一个发展是句子和文档的语义分类。挑战在于通过计算模型找到单词之间和文档之间的关系。机器学习的发展使得尝试提供分类能力的各种可能性成为可能。本文提出了基于循环神经网络(RNN)和长短期记忆(LSTM)的句子对语义分类方法。使用Word2Vec将每一对句子转换成向量。利用CBOW和Skip-Gram进行了实验,得到了最佳组合。结果表明,使用CBOW的词嵌入效果优于Skip-Gram,但仍在5%左右。然而,CBOW在迭代开始时稍微变慢,但趋于收敛时是稳定的。所有六个类别的分类,即等同,相似,特定,不对齐,相关和相反。由于数据集不平衡,通过从数据集中剔除一些类成员来进行再训练,从而为非训练数据提供了73%的准确率。结果表明,与SGD模型相比,Adam模型在训练开始时的收敛速度更快,而建立的AdaDelta模型的准确率提高了75%,F1-Score为67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Classification of Scientific Sentence Pair Using Recurrent Neural Network
One development of Natural Language Processing is the semantic classification of sentences and documents. The challenge is finding relationships between words and between documents through a computational model. The development of machine learning makes it possible to try out various possibilities that provide classification capabilities. This paper proposes the semantic classification of sentence pairs using Recurrent Neural Networks (RNN) and Long Short-Term Memory (LSTM). Each couple of sentences is turned into vectors using Word2Vec. Experiments carried out using CBOW and Skip-Gram to get the best combination. The results are obtained that word embedding using CBOW produces better than Skip-Gram, although it is still around 5%. However, CBOW slows slightly at the beginning of iteration but is stable towards convergence. Classification of all six classes, namely Equivalent, Similar, Specific, No Alignment, Related, and Opposite. As a result of the unbalanced data set, the retraining was conducted by eliminating a few classes member from the data set, thus providing an accuracy of 73 % for non-training data. The results showed that the Adam model gave a faster convergence at the start of training compared to the SGD model, and AdaDelta, which was built, gave 75% better accuracy with an F1-Score of 67%.
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