结合协同过滤和主题建模的Android移动应用库推荐

Huan Yu, Xin Xia, Xiaoqiong Zhao, Weiwei Qiu
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引用次数: 15

摘要

第三方库的应用是许多移动应用程序不可或缺的一部分。随着移动技术的快速发展,有许多免费的第三方库可供开发人员下载和使用。然而,有大量的第三方库总是快速迭代,开发人员很难在其中找到可用的库。之前的一些研究提出了推荐第三方库的方法,这适用于开发人员知道一些必需的库,并且需要在有限的知识下找到其他相关库的情况。为了进一步提高应用库推荐的性能,本文提出了一种将协同过滤和主题建模技术相结合的方法。在协同过滤组件中,给定一个新应用程序,我们的方法通过使用它的类似应用程序来推荐库。在主题建模组件中,我们的方法首先从移动应用程序的文本描述中提取主题,并给定一个新的应用程序,我们的方法根据具有相似主题分布的应用程序使用的库推荐库。我们在1013个应用程序上进行了实验,结果表明,我们的方法大大提高了最先进的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Collaborative Filtering and Topic Modeling for More Accurate Android Mobile App Library Recommendation
The applying of third party libraries is an integral part of many mobile applications. With the rapid development of mobile technologies, there are many free third party libraries for developers to download and use. However, there are a large number of third party libraries which always iterate rapidly, it is hard for developers to find available libraries within them. Several previous studies have proposed approaches to recommend third party libraries, which works in the scenario where a developer knows some required libraries, and needs to find other relevant libraries with limited knowledge. In the paper, to further improve the performance of app library recommendation, we propose an approach which combines collaborative filtering and topic modeling techniques. In the collaborative filtering component, given a new app, our approach recommends libraries by using its similar apps. In the topic modelling component, our approach first extracts the topics from the textual description of mobile apps, and given a new app, our approach recommends libraries based on the libraries used by the apps which has similar topic distributions. We perform experiments on a set of 1,013 apps, and the results show that our approach improves the state-of-the-art by a substantial margin.
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