一种有效的烟草消费情感分析模型

Yanru Hao, Tianchi Yang, Chuan Shi, Rui Wang, Ding Xiao
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引用次数: 0

摘要

产品评论分析因其广泛的应用而备受关注。由于现有公共数据集的限制,大多数情感分析研究都集中在娱乐和餐饮领域。为了提高情感分析领域数据的全面性,我们从大量在线烟草消费评论中提取有效的消费者体验信息,提出了一种新的大规模多情感烟草数据集。该数据集的发布将推动烟草领域的研究。为了推进和促进多方面句子整体情感的研究,我们提出了简单而有效的EHCRNN模型,该模型结合了近年来NLP研究的优势。在我们的新数据集和公共nlpcc2014任务数据集上的实验表明,所提出的模型显著优于最先进的基线方法。
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An Effective Sentiment Analysis Model for Tobacco Consumption
Analysis over product reviews has drawn much attention due to its wide application. Most of the sentiment analysis research focuses on entertainment and catering due to the limitation of existing public datasets. In order to promote the comprehensiveness of data in the field of sentiment analysis, we present a new large-scale multi-sentiment tobacco dataset by distilling effective consumer experience information from massive online reviews of tobacco consumption. The release of this dataset would push forward the research in tobacco field. With the goal of advancing and facilitating the research of the overall sentiment of sentences with multiple aspects, we propose simple yet effective EHCRNN model, which combines the strengths of recent NLP advances. Experiments on our new dataset and the public nlpcc2014 task dataset show that the proposed model significantly outperforms the state-of-the-art baseline methods.
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