Deep Learning-Driven E-Commerce Marketing Communication for Recommending Shopping System and Optimizing User Experience

Qian Liu, Haibing Tang, Lufei Wu, Zheng Chao
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Abstract

As competition in the realm of e-commerce escalates, the provision of personalized and precise shopping recommendations emerges as a pivotal strategy for e-commerce platforms striving to engage users effectively. Traditional recommendation systems often grapple with challenges such as the inability to capture intricate relationships, limited personalization, and issues concerning diversity. In response to these challenges, this study introduces cutting-edge deep learning techniques, namely Transformer models, Generative Adversarial Networks (GANs), and reinforcement learning, with the aim of bolstering the recommendation accuracy and user experience within e-commerce shopping systems.Initially, we harness Transformer models, capitalizing on their exceptional performance in processing sequential data to adeptly extract and learn representations of both product and user features. This facilitates a more profound understanding of the correlations between products and user shopping behaviors, thus empowering the system to offer more tailored recommendations.
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深度学习驱动的电子商务营销传播,用于推荐购物系统和优化用户体验
随着电子商务领域的竞争不断升级,提供个性化和精准的购物推荐成为电子商务平台努力有效吸引用户的关键战略。传统的推荐系统往往面临一些挑战,如无法捕捉错综复杂的关系、个性化程度有限以及多样性问题。为了应对这些挑战,本研究引入了前沿的深度学习技术,即变形模型、生成对抗网络(GANs)和强化学习,旨在提高电子商务购物系统中的推荐准确性和用户体验。这有助于更深入地了解产品与用户购物行为之间的关联,从而使系统能够提供更有针对性的推荐。
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