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Online comments of tourist attractions combining artificial intelligence text mining model and attention mechanism
by
Wang, Hongbo
, Mou, Tingting
in
639/705
/ 639/705/1041
/ 639/705/1042
/ 639/705/1045
/ 639/705/1046
/ 639/705/117
/ 639/705/258
/ 639/705/531
/ 639/705/794
/ Artificial intelligence
/ Attention mechanism
/ Classification
/ Data mining
/ Emotions
/ Humanities and Social Sciences
/ multidisciplinary
/ Neural networks
/ Online comment
/ Science
/ Science (multidisciplinary)
/ Text mining
/ Tourism
/ Tourist attractions
/ Tourists
2025
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Online comments of tourist attractions combining artificial intelligence text mining model and attention mechanism
by
Wang, Hongbo
, Mou, Tingting
in
639/705
/ 639/705/1041
/ 639/705/1042
/ 639/705/1045
/ 639/705/1046
/ 639/705/117
/ 639/705/258
/ 639/705/531
/ 639/705/794
/ Artificial intelligence
/ Attention mechanism
/ Classification
/ Data mining
/ Emotions
/ Humanities and Social Sciences
/ multidisciplinary
/ Neural networks
/ Online comment
/ Science
/ Science (multidisciplinary)
/ Text mining
/ Tourism
/ Tourist attractions
/ Tourists
2025
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Online comments of tourist attractions combining artificial intelligence text mining model and attention mechanism
by
Wang, Hongbo
, Mou, Tingting
in
639/705
/ 639/705/1041
/ 639/705/1042
/ 639/705/1045
/ 639/705/1046
/ 639/705/117
/ 639/705/258
/ 639/705/531
/ 639/705/794
/ Artificial intelligence
/ Attention mechanism
/ Classification
/ Data mining
/ Emotions
/ Humanities and Social Sciences
/ multidisciplinary
/ Neural networks
/ Online comment
/ Science
/ Science (multidisciplinary)
/ Text mining
/ Tourism
/ Tourist attractions
/ Tourists
2025
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Online comments of tourist attractions combining artificial intelligence text mining model and attention mechanism
Journal Article
Online comments of tourist attractions combining artificial intelligence text mining model and attention mechanism
2025
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Overview
This paper intends to solve the limitations of the existing methods to deal with the comments of tourist attractions. With the technical support of Artificial Intelligence (AI), an online comment method of tourist attractions based on text mining model and attention mechanism is proposed. In the process of text mining, the attention mechanism is used to calculate the contribution of each topic to text representation on the topic layer of Latent Dirichlet Allocation (LDA). The Bidirectional Recurrent Neural Network (BiGRU) can effectively capture the temporal relationship and semantic dependence in the text through its powerful sequence modeling ability, thus achieving a more accurate classification of emotional tendencies. In order to verify the performance of the proposed ATT-LDA- Bigelow model, online comments about tourist attractions are collected from Ctrip.com, and users’ emotional tendencies towards different scenic spots are analyzed. The results show that this model has the best emotion classification effect in online comments of scenic spots, with the accuracy and F1 value reaching 93.85% and 93.68% respectively, which is superior to other emotion classification models. The proposed method not only improves the accuracy of sentiment analysis, but also provides strong support for the optimization of tourism recommendation system and provides more comprehensive, objective and accurate tourism information for scenic spot managers and tourism enterprises. This achievement is expected to bring new enlightenment and breakthrough to the research and practice in related fields.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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