数学建模与深度学习:电子商务情感分析的创新

Q4 Mathematics
Et al. Ashish Suresh Awate
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引用次数: 0

摘要

这项研究探讨了电子商务动态,重点关注利用深度学习预测客户流失的挑战[65]。它整合并分析了文本数据和交易数据,包括社交媒体帖子和客户反馈[59]。该方法使用先进的深度学习模型,涉及数据收集、预处理和特征提取 [40]。新方法将数据融合在一起,结合情感分析和从交易数据中获得的行为洞察力,创建详细的客户档案[25]。深度学习架构旨在分析和预测客户情绪和购买行为,并参考最新研究成果[65]。这项研究意义重大,因为它为预测电子商务中的客户流失提供了创新解决方案,有助于可持续发展[45]。它还能制定有针对性的客户挽留战略和个性化的客户参与[59]。此外,它还为电子商务中的大数据分析和客户关系管理提供了见解,展示了深度学习在改变业务实践和提升客户体验方面的潜力[40]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Modelling and Deep Learning: Innovations in E-Commerce Sentiment Analysis
This research explores e-commerce dynamics, focusing on the challenge of predicting customer churn using deep learning [65]. It integrates and analyses both textual and transactional data, including social media posts and customer feedback [59]. The approach uses an advanced deep learning model, involving data collection, pre-processing, and feature extraction [40]. Novel methods fuse data to create a detailed customer profile combining sentiment analysis with behavioural insights derived from transaction data [25]. The deep learning architecture is designed to analyse and predict customer sentiments and purchasing behaviours, informed by the latest research [65]. This study is significant as it provides an innovative solution for predicting customer churn in e-commerce, aiding sustainability [45]. It also enables targeted retention strategies and personalized customer engagement [59]. Additionally, it contributes insights to big data analytics and customer relationship management in e-commerce, showcasing deep learning's potential in transforming business practices and enhancing customer experience [40].
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