电子商务平台赞助搜索广告内容深度智能优化研究

Qinglong Ge
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引用次数: 0

摘要

随着电子商务市场的快速发展,网上购物已经融入了许多人的日常生活。为了对电商平台赞助的广告内容进行优化,我们构建了基于多任务深度学习的广告产品卖点关键词预测模型。实验结果表明,与基本模型相比,广告产品的点击率提高了0.48%。在引入额外的特征信息后,模型的AUC结果提高了0.79%,有效优化了赞助搜索的广告内容,增强了用户的个性化购买体验,为电商平台对赞助搜索的深度智能优化提供了新的研究思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on In-depth Intelligent Optimization of Sponsored Search Advertising Content on E-commerce Platforms
With the rapid development of e-commerce market, online shopping has been integrated into many people’s daily life. In order to optimize the advertising content sponsored by e-commerce platform, we build the selling point keyword prediction model of advertising products based on multi-task deep learning. The experimental results show that compared with the basic model, the click-through rate of advertising products is improved by 0.48%. After introducing additional feature information, the AUC result of the model increased by 0.79%, effectively optimizing the advertising content of sponsored search, enhancing the user’s personalized buying experience, and providing new research ideas for the in-depth intelligent optimization of sponsored search by e-commerce platform.
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