基于知识图谱特征学习的旅游推荐系统

Fengsheng Zeng, Yan’e Zheng
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引用次数: 3

摘要

本文提出并设计了基于知识图特征学习的旅游推荐系统。实现旅游推荐系统的主要任务是数据收集,包括用户信息、综合用户交互记录、旅游景点信息以及上下文信息。其中,用户信息主要来源于用户在注册过程中输入的信息。用户与系统之间的交互记录可以从系统日志中获取,而上下文信息则由用户自主输入或通过各种传感器获取。在本文中,集成了一个数据处理和分析框架来构建用于推荐的新场景。将所提模型与目前的研究成果进行比较,证明所提模型能够获得更高的推荐精度。
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Tourism Recommendation System based on Knowledge Graph Feature Learning
Tourism recommendation system based on the knowledge graph feature learning is proposed and designed in this paper. The primary task for implementing a travel recommendation system is data collection, including user information, integrated user interaction records, tourist attraction information, and also contextual information. Among them, the user information primarily originates from the information entered by user in the registration process. The interaction record between the user and the system can be obtained from the system log, while the contextual information is entered by the user autonomously or obtained through various sensors. In this paper, a data processing and analytic framework is integrated to construct the novel scenario used for the recommendation. When compared the proposed model with the state-of-the-art research works, it has been proven that the proposed model can obtain the higher recommendation accuracy.
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