增强电子商务推荐:利用 BERTFusionDNN 从客户评论中挖掘洞察力

Zhiming Zhao, Ning Zhang, Jize Xiong, Mingyang Feng, Chufeng Jiang, Xiaosong Wang
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引用次数: 4

摘要

在电子商务领域,客户评论对企业战略具有重大影响。尽管存在协同过滤和深度学习等各种推荐方法,但它们在准确分析客户反馈中的情感和语义方面常常遇到困难。为了应对这些挑战,本文介绍了 BERTFusionDNN,这是一种融合了用于提取文本特征的 BERT 和用于整合数字特征的深度神经网络的新型框架。我们使用女装电子商务数据集评估了我们方法的功效,并将其与现有技术进行了比较。我们的方法善于从客户评论中提取有价值的见解,通过克服与解读文本细微差别和数字复杂性相关的障碍来强化电子商务推荐系统。通过这一努力,我们为利用客户反馈优化电子商务体验和推动业务成功的更强大、更有效的战略铺平了道路。
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Enhancing E-commerce Recommendations: Unveiling Insights from Customer Reviews with BERTFusionDNN
In the domain of e-commerce, customer reviews wield significant influence over business strategies. Despite the existence of various recommendation methodologies like collaborative filtering and deep learning, they often encounter difficulties in accurately analyzing sentiment and semantics within customer feedback. Addressing these challenges head-on, this paper introduces BERTFusionDNN, a novel framework merging BERT for extracting textual features and a Deep Neural Network for integrating numerical features. We assess the efficacy of our approach using a Women Clothing E-Commerce dataset, benchmarking it against established techniques. Our method adeptly extracts valuable insights from customer reviews, fortifying e-commerce recommendation systems by surmounting barriers associated with deciphering both textual nuances and numerical intricacies. Through this endeavor, we pave the way for more robust and effective strategies in leveraging customer feedback to optimize e-commerce experiences and drive business success.
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