Digital human recommendation system has been developed to help customers find their favorite products and is playing an active role in various recommendation contexts. How to timely catch and learn the dynamics of the preferences of the customers, while meeting their exact requirements, becomes crucial in the digital human recommendation domain. We design a novel practical digital human interactive recommendation agent framework based on Reinforcement Learning(RL) to improve the efficiency of the interactive recommendation decision-making by leveraging both the digital human features and the superior flexibility of RL. Our proposed framework learns through real-time interactions between the digital human and customers dynamically through the state-of-art RL algorithms, combined with multimodal embedding and graph embedding, to improve the accuracy of personalization and thus enable the digital human agent to timely catch the attention of the customer. Experiments on real business data demonstrate that our framework can provide better personalized customer engagement and better customer experiences.
翻译:开发了数字人类推荐系统,以帮助客户找到其最喜爱的产品,并在各种建议背景下发挥积极作用。如何及时捕捉和了解客户喜好动态,同时满足其准确要求,在数字人类推荐领域变得至关重要。我们设计了一个基于强化学习的新颖的、实用的数字人类互动建议代理框架,通过利用数字人类特征和RL的超灵活度来提高互动式建议决策的效率。我们提议的框架通过最新水平的RL算法,加上多式嵌入和图形嵌入,通过数字人与客户之间的实时互动,动态地学习,以提高个性化的准确性,从而使数字人类代理能够及时吸引客户的注意。对实际商业数据的实验表明,我们的框架可以提供更好的个性化客户参与和更好的客户经验。