Research on Personalized Minority Tourist Route Recommendation Algorithm Based on Deep Learning

Sci. Program. Pub Date : 2022-01-07 DOI:10.1155/2022/8063652
Guang Liu
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引用次数: 2

Abstract

With the improvement of living standards, more and more people are pursuing personalized routes. This paper uses personalized mining of interest points of ethnic minority tourism demand groups, extracts customer data features in social networks, and constructs data features of interesting topic factors, geographic location factors, and user access frequency factors, using LDA topic models and matrix decomposition models to perform feature vectorization processing on user sign-in records and build deep learning recommendation model (DLM). Using this model to compare with the traditional recommendation model and the recommendation model of a single data feature module, the experimental results show the following: (1) The fitting error of DLM recommendation results is significantly reduced, and its recommendation accuracy rate is 50% higher than that of traditional recommendation algorithms. The experimental results show that the DLM constructed in this paper has good learning and training performance, and the recommendation effect is good. (2) In this method, the performance of the DLM is significantly higher than other POI recommendation methods in terms of the accuracy or recall rate of the recommendation algorithm. Among them, the accuracy rates of the top five, top ten, and top twenty recommended POIs are increased by 9.9%, 7.4%, and 7%, respectively, and the recall rate is increased by 4.2%, 7.5%, and 14.4%, respectively.
基于深度学习的个性化少数民族旅游路线推荐算法研究
随着生活水平的提高,越来越多的人追求个性化路线。本文通过对少数民族旅游需求群体兴趣点的个性化挖掘,提取社交网络中的客户数据特征,构建兴趣话题因素、地理位置因素和用户访问频率因素的数据特征,利用LDA主题模型和矩阵分解模型对用户登录记录进行特征矢量化处理,构建深度学习推荐模型(DLM)。利用该模型与传统推荐模型和单个数据特征模块的推荐模型进行对比,实验结果表明:(1)DLM推荐结果的拟合误差显著降低,其推荐准确率比传统推荐算法提高50%。实验结果表明,本文构建的DLM具有良好的学习和训练性能,推荐效果良好。(2)在该方法中,DLM在推荐算法的正确率或召回率方面的性能都明显高于其他POI推荐方法。其中,前5名、前10名和前20名推荐poi的准确率分别提高了9.9%、7.4%和7%,召回率分别提高了4.2%、7.5%和14.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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