CCeACF: content and complementarity enhanced attentional collaborative filtering for cloud API recommendation

Zhen Chen, Wenhui Chen, Xiaowei Liu, Jing Zhao
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Abstract

Cloud application programming interface (API) is a software intermediary that enables applications to communicate and transfer information to one another in the cloud. As the number of cloud APIs continues to increase, developers are inundated with a plethora of cloud API choices, so researchers have proposed many cloud API recommendation methods. Existing cloud API recommendation methods can be divided into two types: content-based (CB) cloud API recommendation and collaborative filtering-based (CF) cloud API recommendation. CF methods mainly consider the historical information of cloud APIs invoked by mashups. Generally, CF methods have better recommendation performances on head cloud APIs due to more interaction records, and poor recommendation performances on tail cloud APIs. Meanwhile, CB methods can improve the recommendation performances of tail cloud APIs by leveraging the content information of cloud APIs and mashups, but their overall performances are not as good as those of CF methods. Moreover, traditional cloud API recommendation methods ignore the complementarity relationship between mashups and cloud APIs. To address the above issues, this paper first proposes the complementary function vector (CV) based on tag co-occurrence and graph convolutional networks, in order to characterize the complementarity relationship between cloud APIs and mashups. Then we utilize the attention mechanism to systematically integrate CF, CB, and CV methods, and propose a model named Content and Complementarity enhanced Attentional Collaborative Filtering (CCeACF). Finally, the experimental results show that the proposed approach outperforms the state-of-the-art cloud API recommendation methods, can effectively alleviate the long tail problem in the cloud API ecosystem, and is interpretable.

Abstract Image

CCeACF:用于云应用程序接口推荐的内容和互补性增强型注意协同过滤技术
云应用编程接口(API)是一种软件中介,可使应用程序在云中相互通信和传输信息。随着云 API 数量的不断增加,开发人员面临着大量的云 API 选择,因此研究人员提出了许多云 API 推荐方法。现有的云 API 推荐方法可分为两类:基于内容(CB)的云 API 推荐和基于协同过滤(CF)的云 API 推荐。CF 方法主要考虑混搭调用的云 API 的历史信息。一般来说,由于交互记录较多,CF 方法对头部云 API 的推荐效果较好,而对尾部云 API 的推荐效果较差。同时,CB 方法可以通过利用云 API 和混搭的内容信息来提高尾部云 API 的推荐性能,但其总体性能不如 CF 方法。此外,传统的云应用程序接口推荐方法忽略了mashup与云应用程序接口之间的互补关系。针对上述问题,本文首先提出了基于标签共现和图卷积网络的互补函数向量(CV),以表征云 API 与 mashup 之间的互补关系。然后,我们利用注意力机制系统地整合了 CF、CB 和 CV 方法,并提出了一个名为内容和互补性增强注意力协同过滤(CCeACF)的模型。最后,实验结果表明,所提出的方法优于最先进的云 API 推荐方法,能有效缓解云 API 生态系统中的长尾问题,并且具有可解释性。
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