Research on Opinion Targets Extraction of Travel Reviews Based on RoBERTa Embedded BILSTM-CRF Model

Zeyu Li, Tianhe Yu, Hao Shen
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Abstract

Tourism is a form of cultural expression. The key step of fine-grained sentiment analysis of travel review evaluation text is opinion targets extraction. It aims to analyze travel review text and extract the opinion targets contained in it, and targets extraction’s accuracy rate directly affects the accuracy rate of sentiment analysis. Due to the outstanding performance of pre-training language models in the field of natural language processing in recent years, in order to improve the accuracy of opinion targets extraction, we propose a RoBERTa pre-training language model and Chinese pre-training word embedding vector, combined with BiLSTM (bidirectional long short-term memory) and CRF (conditional random field) opinion targets extraction model. The experimental results on the travel review data set of the Mafengwo travel software show that the extraction effect of this model is improved to varying degrees compared with other existing opinion targets extraction models based on deep learning.
基于RoBERTa嵌入式BILSTM-CRF模型的旅游评论意见目标提取研究
旅游是一种文化表现形式。旅游点评评价文本细粒度情感分析的关键步骤是意见目标提取。其目的是对旅游评论文本进行分析,提取其中包含的意见目标,目标提取的准确率直接影响到情感分析的准确率。鉴于近年来预训练语言模型在自然语言处理领域的突出表现,为了提高意见目标提取的准确性,我们结合BiLSTM(双向长短期记忆)和CRF(条件随机场)意见目标提取模型,提出了RoBERTa预训练语言模型和中文预训练词嵌入向量。在蚂蜂窝旅行软件的旅行评论数据集上的实验结果表明,与现有的基于深度学习的其他意见目标提取模型相比,该模型的提取效果有不同程度的提高。
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