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Research on Multi-Channel Semantic Fusion Classification Model
Author(s) -
Di Yang,
Ningjia Qiu,
Lin William Cong,
Huamin Yang
Publication year - 2019
Publication title -
journal of advanced computational intelligence and intelligent informatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.172
H-Index - 20
eISSN - 1343-0130
pISSN - 1883-8014
DOI - 10.20965/jaciii.2019.p1044
Subject(s) - computer science , artificial intelligence , generalization , task (project management) , ambiguity , convolutional neural network , gradient descent , natural language processing , sentiment analysis , word (group theory) , machine learning , pattern recognition (psychology) , artificial neural network , mathematical analysis , linguistics , philosophy , mathematics , management , economics , programming language
In this work, we propose a multi-channel semantic fusion convolutional neural network (SFCNN) to solve the problem of emotional ambiguity caused by the change of contextual order in sentiment classification task. Firstly, the emotional tendency weights are evaluated on the text word vector through the improved emotional tendency attention mechanism. Secondly, the multi-channel semantic fusion layer is leveraged to combine deep semantic fusion of sentences with contextual order to generate deep semantic vectors, which are learned by CNN to extract high-level semantic features. Finally, the improved adaptive learning rate gradient descent algorithm is employed to optimize the model parameters, and completes the sentiment classification task. Three datasets are used to evaluate the effectiveness of the proposed algorithm. The experimental results show that the SFCNN model has the high steady-state precision and generalization performance.

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