基于BERT和BiLSTM_Attention的中文文本语义匹配研究

Changqun Li, Zhongmin Pei, Li Li, Zhangkai Luo, Da Peng
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摘要

为了进一步提高基于BERT (Bidirectional Encoder Representations from Transformers)调整的文本语义匹配的匹配精度,本文提出了一种BERT与基于注意力的双向长短期记忆网络(BERT+BiLSTM_Attention)相结合的新模型。事实上,BERT的输出进一步作为双向长短期记忆网络(BiLSTM)的输入,然后进一步使用注意机制来捕获所需的交互信息,并注意那些对语义有重大影响的信息词。为了优化模型,采用分段常数衰减策略控制学习速率。此外,我们还更新了BERT的权值,使我们的模型更适合下游任务。最后,实验结果表明,在大规模汉语问题匹配语料库中,该模型的准确率比LSTM-DSSM模型提高了7.1%。比基于BERT的直接微调高0.12分。
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Research on Chinese Text Semantic Matching Base on BERT and BiLSTM_Attention
In this paper, to further improve the matching accuracy of text semantic matching, which is based on BERT (Bidirectional Encoder Representations from Transformers) fine-tuning, we propose a novel model, which is combine BERT and Attention-Based Bidirectional Long Short-Term Memory Networks (BERT+BiLSTM_Attention). Indeed, outputs of the BERT are further given as inputs of the Bidirectional Long Short-Term Memory Networks (BiLSTM), after that the attention mechanism is further used to capture the needed interactive information and attend those informative words that have a significant impact on semantics. In order to optimize the model, the piecewise constant decay strategy is adopted to control the learning rate. In addition, the weights of BERT are updated to make our model more suitable to the downstream tasks. Finally, experimental results demonstrate that the accuracy of the proposed model is better than LSTM-DSSM model 7.1% in a large-scale Chinese question matching corpus. And 0.12 points higher than BERT based direct fine-tuning.
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