使用机器学习分类的手机应用推荐系统

R. Jisha, J. M. Amrita, Aswini R Vijay, G. Indhu
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引用次数: 6

摘要

通过移动应用程序引入新思想可以给世界各地的人们带来巨大的变化。如今,成千上万的应用程序被开发出来,以满足人们的不同需求,如工作、交易、娱乐等,并在互联网上分发。因此,大多数现有的应用商店在向特定用户推荐特定应用时可能会遇到困难。因此,有必要根据用户的个人喜好和各种其他限制为他们推荐应用程序。我们制作了一个手机应用推荐系统,以rating, Size, Permission为参数,通过对这些参数的评估,向用户推荐合适的应用。这里我们使用的是Apkpure.com,这是一个著名的安卓应用程序市场,也利用网络爬虫,这有助于收集有关网站的信息,并有助于验证超链接。然后,通过使用聚类算法,根据流行度、权限和安全性对应用程序进行分组或聚类。本文旨在提供一个简单的推荐系统,而不影响评级,大小和权限方面。
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Mobile App Recommendation System Using Machine learning Classification
The introduction of new ideas with mobile applications can bring great change to people around the world. Nowadays Thousands of apps are developed to satisfy different needs of people such as for doing jobs, transactions, entertainment etc. and distributed over the Internet. So most of the existing app stores available might face difficulties for recommending a particular app to a particular user. So there is a need for recommending apps for the users according to their personal preferences and various other limitations. We made a mobile application recommendation system with ratings, Size, and Permission as parameters and we will recommend suitable apps to the user by evaluating these parameters. Here we are using Apkpure.com which is one of the famous android application markets and also makes use of Web Crawler which helps in collecting information about the website and helps in validating hyperlinks. After that by using the Clustering Algorithm, applications are grouped or clustered based on Popularity, Permission and Security aspects. This paper aims to provide a simple recommendation system without compromising rating, size and Permission aspects.
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