With the development of information technology, human beings are constantly producing a large amount of information at all times. How to obtain the information that users are interested in from the large amount of information has become an issue of great concern to users and even business managers. In order to solve this problem, from traditional machine learning to deep learning recommendation systems, researchers continue to improve optimization models and explore solutions. Because researchers have optimized more on the recommendation model network structure, they have less research on enriching recommendation model features, and there is still room for in-depth recommendation model optimization. Based on the DIN\cite{Authors01} model, this paper adds multi-head and multi-modal modules, which enriches the feature sets that the model can use, and at the same time strengthens the cross-combination and fitting capabilities of the model. Experiments show that the multi-head multi-modal DIN improves the recommendation prediction effect, and outperforms current state-of-the-art methods on various comprehensive indicators.
翻译:随着信息技术的发展,人类在任何时候都不断产生大量信息。如何从大量信息中获得用户感兴趣的信息已成为用户乃至企业经理极为关注的问题。为了解决这一问题,从传统的机器学习到深层学习建议系统,研究人员继续改进优化模式和探索解决方案。由于研究人员在建议模式网络结构上更加优化,他们对于丰富建议模式特征的研究较少,仍然有深入建议模型优化的空间。根据DIN\cite{Authors01}模型,本文添加了多头和多模式模块,丰富了模型可以使用的功能组,同时加强了模型的交叉组合和适当能力。实验表明,多头多式DIN改进了建议预测效果,超越了各种综合指标的当前最新方法。