没有历史软件存储库的有效API推荐

Xiaoyu Liu, LiGuo Huang, Vincent Ng
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引用次数: 37

摘要

为编程任务学习和定位正确的API是非常耗时和费力的。因此,自动执行API推荐是有益的。基于图的统计模型已被证明可以有效地推荐前10个候选API。然而,它在准确推荐一个真正的顶级API方面做得不够。为了解决这个缺点,我们提出了RecRank,这是一种方法和工具,它应用了一种基于排名的新方法,利用API使用路径特征来改进前1名的API推荐。对(1385+8)个开源项目的大型语料库的实证评估表明,与最先进的API推荐方法相比,RecRank显著提高了top-1 API推荐的准确性和平均倒数排名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective API Recommendation without Historical Software Repositories
It is time-consuming and labor-intensive to learn and locate the correct API for programming tasks. Thus, it is beneficial to perform API recommendation automatically. The graph-based statistical model has been shown to recommend top-10 API candidates effectively. It falls short, however, in accurately recommending an actual top-1 API. To address this weakness, we propose RecRank, an approach and tool that applies a novel ranking-based discriminative approach leveraging API usage path features to improve top-1 API recommendation. Empirical evaluation on a large corpus of (1385+8) open source projects shows that RecRank significantly improves top-1 API recommendation accuracy and mean reciprocal rank when compared to state-of-the-art API recommendation approaches.
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