Wenchao Zhao, Xiaoyi Liu, Ruilin Xu, Lingxi Xiao, Muqing Li
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引用次数: 0
Abstract
In e-commerce websites, web mining web page recommendation technology has
been widely used. However, recommendation solutions often cannot meet the
actual application needs of online shopping users. To address this problem,
this paper proposes an e-commerce web page recommendation solution that
combines semantic web mining and BP neural networks. First, the web logs of
user searches are processed, and 5 features are extracted: content priority,
time consumption priority, online shopping users' explicit/implicit feedback on
the website, recommendation semantics and input deviation amount. Then, these
features are used as input features of the BP neural network to classify and
identify the priority of the final output web page. Finally, the web pages are
sorted according to priority and recommended to users. This project uses book
sales webpages as samples for experiments. The results show that this solution
can quickly and accurately identify the webpages required by users.
在电子商务网站中,网络挖掘网页推荐技术得到了广泛应用。然而,推荐解决方案往往不能满足在线购物用户的实际应用需求。针对这一问题,本文提出了一种结合语义网络挖掘和 BP 神经网络的电子商务网页推荐解决方案。首先,处理用户搜索的网络日志,提取 5 个特征:内容优先级、时间消费优先级、网购用户对网站的显性/隐性反馈、推荐语义和输入偏差量。然后,将这些特征作为 BP 神经网络的输入特征,对最终输出的网页进行分类和优先级识别。最后,根据优先级对网页进行排序并推荐给用户。本项目使用图书销售网页作为实验样本。结果表明,该解决方案能够快速、准确地识别用户所需的网页。