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The Multimodal Emotion Information Analysis of E-Commerce Online Pricing in Electronic Word of Mouthopen access

Authors
Chen, J.Zhong, Z.Feng, Q.Liu, L.
Issue Date
Nov-2022
Publisher
IGI Global
Keywords
Dynamic Pricing; E-Commerce; Emotion Recognition; Neural Network; Q-Learning Algorithm
Citation
Journal of Global Information Management, v.30, no.11
Journal Title
Journal of Global Information Management
Volume
30
Number
11
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/87542
DOI
10.4018/JGIM.315322
ISSN
1062-7375
Abstract
E-commerce has developed rapidly, and product promotion refers to how e-commerce promotes consumers' consumption activities. The demand and computational complexity in the decision-making process are urgent problems to be solved to optimize dynamic pricing decisions of the e-commerce product lines. Therefore, a Q-learning algorithm model based on the neural network is proposed on the premise of multimodal emotion information recognition and analysis, and the dynamic pricing problem of the product line is studied. The results show that a multi-modal fusion model is established through the multi-modal fusion of speech emotion recognition and image emotion recognition to classify consumers' emotions. Then, they are used as auxiliary materials for understanding and analyzing the market demand. The long short-term memory (LSTM) classifier performs excellent image feature extraction. The accuracy rate is 3.92%-6.74% higher than that of other similar classifiers, and the accuracy rate of the image single-feature optimal model is 9.32% higher than that of the speech single-feature model. © 2022 IGI Global. All rights reserved.
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