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首页> 外文期刊>Intelligence: A Multidisciplinary Journal >Using deep learning and visual analytics to explore hotel reviews and responses
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Using deep learning and visual analytics to explore hotel reviews and responses

机译:使用深度学习和视觉分析来探索酒店评论和回复

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摘要

This study aims to use computational linguistics, visual analytics, and deep learning techniques to analyze hotel reviews and responses collected on TripAdvisor and to identify response strategies. To this end, we collected and analyzed 113,685 hotel reviews and responses and their semantic and syntactic relations. We are among the first to use visual analytics and deep learning-based natural language processing to empirically identify managerial responses. The empirical results indicate that our proposed multi-feature fusion, convolutional neural network model can make different types of data complement each other, thereby outperforming the comparisons. The visualization results can also be used to improve the performance of the proposed model and provide insights into response strategies, which further shows the theoretical and technical contributions of this study.
机译:本研究旨在利用计算语言学,视觉分析和深度学习技术来分析在TripAdvisor上收集的酒店评论和响应,并识别响应策略。 为此,我们收集和分析了113,685份酒店评论和回应及其语义与句法关系。 我们是第一个使用视觉分析和基于深度学习的自然语言处理的先验识别管理响应。 经验结果表明,我们提出的多种特征融合,卷积神经网络模型可以使不同类型的数据相互补充,从而优于比较。 可视化结果也可用于改善所提出的模型的性能,并提供响应策略的见解,进一步表明了本研究的理论和技术贡献。

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