Automated library recommendation

Ferdian Thung, D. Lo, J. Lawall
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引用次数: 125

Abstract

Many third party libraries are available to be downloaded and used. Using such libraries can reduce development time and make the developed software more reliable. However, developers are often unaware of suitable libraries to be used for their projects and thus they miss out on these benefits. To help developers better take advantage of the available libraries, we propose a new technique that automatically recommends libraries to developers. Our technique takes as input the set of libraries that an application currently uses, and recommends other libraries that are likely to be relevant. We follow a hybrid approach that combines association rule mining and collaborative filtering. The association rule mining component recommends libraries based on a set of library usage patterns. The collaborative filtering component recommends libraries based on those that are used by other similar projects. We investigate the effectiveness of our hybrid approach on 500 software projects that use many third-party libraries. Our experiments show that our approach can recommend libraries with recall rate@5 of 0.852 and recall rate@10 of 0.894.
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可以下载和使用许多第三方库。使用这样的库可以减少开发时间,使开发的软件更加可靠。然而,开发人员通常不知道适合他们项目的库,因此他们错过了这些好处。为了帮助开发人员更好地利用可用的库,我们提出了一种自动向开发人员推荐库的新技术。我们的技术将应用程序当前使用的库集作为输入,并推荐可能相关的其他库。我们采用了一种结合关联规则挖掘和协同过滤的混合方法。关联规则挖掘组件根据一组库使用模式推荐库。协作过滤组件根据其他类似项目使用的库来推荐库。我们在500个使用许多第三方库的软件项目中调查了我们的混合方法的有效性。我们的实验表明,我们的方法可以推荐召回rate@5为0.852和召回rate@10为0.894的库。
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