2021
DOI: 10.1155/2021/3873059
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Interactive Marketing E-Commerce Recommendation System Driven by Big Data Technology

Abstract: This study combs through relevant literature, adopts a combination of typical sampling and random sampling, collects three big data technology-driven interactive marketing e-commerce companies in a specific period of Sina Weibo sample data for research, obtains historical information and data, and constructs a model. Through relevant analysis to eliminate invalid variables, we creatively selected three variables of Internet hot words, activities, and microtopics as independent variables and used marketing effe… Show more

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Cited by 6 publications
(1 citation statement)
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References 21 publications
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“…In the user embedded expression section, this research innovatively maps the obtained meta-path to the feature space through the hierarchical attention network. Subsequently, the self-attention mechanism is used to calculate the user's neighbor nodes and obtain the corresponding feature vector [23]. Then in the path layer, this research applies another attention level to fuse various semantic expressions and output the user's embedded expression features [24,25].…”
Section: User Embedding Expression Mode and Node Layer Designmentioning
confidence: 99%
“…In the user embedded expression section, this research innovatively maps the obtained meta-path to the feature space through the hierarchical attention network. Subsequently, the self-attention mechanism is used to calculate the user's neighbor nodes and obtain the corresponding feature vector [23]. Then in the path layer, this research applies another attention level to fuse various semantic expressions and output the user's embedded expression features [24,25].…”
Section: User Embedding Expression Mode and Node Layer Designmentioning
confidence: 99%