Deep Learning and User Consumption Trends Classification and Analysis Based on Shopping Behavior

Yishu Liu, Jia Hou, Wei Zhao
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Abstract

Driven by the wave of digitalization, the booming development of the e-commerce industry urgently requires in-depth analysis of user shopping behavior to improve service experience. In view of the limitations of traditional models in dealing with complex shopping scenarios, this study innovatively proposes a deep learning model: the VATA model (a combination of variational autoencoder, transformer, and attention mechanism). Through this model, the authors strive to classify and analyze user shopping behavior more accurately and intelligently. Variational autoencoder (VAE) can learn the potential representation of user personalized historical data, capture the implicit characteristics of shopping behavior, and improve the ability to deal with actual shopping situations. Transformer models can more comprehensively capture the dependencies between shopping behaviors and understand shopping. The overall structure of behavior plays an important role.
基于购物行为的深度学习和用户消费趋势分类与分析
在数字化浪潮的推动下,电子商务行业的蓬勃发展迫切需要对用户购物行为进行深入分析,以改善服务体验。鉴于传统模型在处理复杂购物场景时的局限性,本研究创新性地提出了一种深度学习模型:VATA 模型(变异自动编码器、变换器和注意力机制的组合)。通过该模型,作者力求更准确、更智能地对用户购物行为进行分类和分析。变异自动编码器(VAE)可以学习用户个性化历史数据的潜在表征,捕捉购物行为的隐含特征,提高处理实际购物情况的能力。变换器模型可以更全面地捕捉购物行为之间的依赖关系,理解购物行为。行为的整体结构起着重要作用。
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