探索大数据算法推荐在智慧城市中的作用——以图书推荐为例

Yijia Cheng, Haojie Chen, Lu Xu, Kunhao Chen, Xiaofan Wang, Zhengdong Huang
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引用次数: 0

摘要

随着智慧城市的建设和发展,人们的需求不断增加,智慧城市公共服务中的大数据算法推荐可以更好地为人们提供满足爱好需求的内容或物品,创新应用服务中的企业可以根据人们的需求对产品和内容进行升级。解决目前大数据推荐算法准确率低、偏差大的问题。本文将以图书推荐系统为例,针对旧的图书推荐算法缺乏冷启动、协同过滤算法分类宽泛、偏好偏差不显著等问题进行研究。寻找推荐算法改进后F1测度的改进。此外,将实验改进的推荐算法应用到校园外卖推荐中,寻找推荐算法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring The Role of Big Data Algorithm Recommendation in Smart Cities- Taking Book recommendation As an Example
With the construction and development of smart cities and the increasing needs of people, big data algorithm recommendations in the public services of smart cities can better provide people with content or items that meet their hobby needs, and enterprises in innovative application services can upgrade their products and contents according to people's needs. To address the problems of low accuracy and large bias in today's big data recommendation algorithm. In this paper, we will take a book recommendation system as an example, aiming at solving the problems of lack of cold boot in old book recommendation algorithms, the broad classification of collaborative filtering algorithms, and inconspicuous preference bias. To find the improvement in the F1 measure after the improvement of the recommendation algorithm. In addition, put the experimental improved recommendation algorithm into the take-out recommendation on campus to find the feasibility of the recommendation algorithm.
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