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A hybrid of XGBoost and aspect-based review mining with attention neural network for user preference prediction
Chin Hui Lai
*
,
Duen-Ren Liu
, Kun Sin Lien
*
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引文 斯高帕斯(Scopus)
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Keyphrases
XGBoost
100%
Attention Neural Network
100%
Aspect-oriented
100%
User Reviews
100%
User Preference Prediction
100%
Review Mining
100%
User Preference
50%
Prediction Method
50%
Word Attention
50%
Collaborative Filtering Method
50%
Rating Prediction
50%
Semantic Vectors
50%
Rapid Development
25%
Prediction Accuracy
25%
Latent Semantic
25%
System Use
25%
Social Platform
25%
Two-stage Procedure
25%
Internet Users
25%
Attention Mechanism
25%
Recommendation System
25%
Attention-based
25%
User Ratings
25%
Internet Development
25%
Rating Score
25%
Latent Dirichlet Allocation
25%
Attention Weight
25%
Semantic Aspect
25%
Item-based
25%
Deep Learning Model
25%
Gated Recurrent Unit
25%
Gated Recurrent Unit Neural Network
25%
Preference Rating
25%
XGBoost Method
25%
Bidirectional Gated Recurrent Unit (BiGRU)
25%
Computer Science
Neural Network
100%
User Preference
100%
Extreme Gradient Boosting
100%
collaborative filtering algorithm
66%
Gated Recurrent Unit
66%
Semantic Vector
66%
Rapid Development
33%
Experimental Result
33%
Social Platform
33%
Attention (Machine Learning)
33%
Latent Dirichlet Allocation
33%
Deep Learning Model
33%
Semantic Review
33%
Engineering
Filtration
100%
Recurrent
100%
Experimental Result
50%
Dirichlet
50%
Rating Score
50%
Neural Unit
50%
Deep Learning Method
50%