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A Category Aware Non-negative Matrix Factorization Approach for App Permission Recommendation

机译:APP权限推荐的类别意识到非负矩阵分解方法

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The permission mechanism in Android imposes additional requirements on app developers, since developers have to learn not only the APIs to be used, but also the permissions to be declared. Recommending permissions for apps becomes necessary and meaningful to help developers determine suitable permissions to be declared in apps. Previous studies suffer from the cold-start problem and do not consider the fact that categories of APIs invoked by apps may influence permissions required by apps, since APIs with similar usage may request same permissions. To address these issues, this paper proposes a Category aware Non-negative Matrix Factorization (CNMF) framework to recommend app permissions. The framework firstly calculates semantic similarities among APIs based on word embeddings and clusters similar APIs into the same category, and then computes the probabilities of apps using APIs in each category and integrates the app-category information into the non-negative matrix factorization. Experimental results on a real-world dataset show that our framework can achieve better performance than the state-of-the-art approaches.
机译:Android中的权限机制对应用程序开发人员施加了额外的要求,因为开发人员不仅要学习要使用的API,而且还要声明所声明的权限。建议应用程序的权限变得必要和有意义,帮助开发人员确定在应用中声明的合适权限。以前的研究遭受了冷启动问题,并且不考虑应用程序调用的API类别可能影响应用程序所需的权限,因为具有类似用途的API可以请求相同的权限。要解决这些问题,本文提出了一种类别意识的非负矩阵分解(CNMF)框架来推荐应用程序权限。该框架首先根据Word Embeddings和群集在同一类别中计算API之间的语义相似性,然后在每个类别中使用API​​来计算应用程序的概率,并将应用程序类别信息集成到非负矩阵分子中。实验结果对现实世界数据集显示我们的框架可以实现比最先进的方法更好的性能。

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