基于注意力CNN的Web服务推荐混合协同过滤

Jian Ke, Jianbo Xu, Xiangwei Meng, Qixiong Huang
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引用次数: 1

摘要

面向服务的计算对Web 2.0时代的软件开发产生了重大影响,基于Web服务的计算图和体系结构得到了全面的发展。随着Web服务的不断增加,面对大量的Web服务,用户越来越难以筛选出满足其需求且质量良好的Web服务。因此,如何为用户推荐最佳的Web服务已成为服务计算领域的一个热点研究方向。许多机器学习方法,特别是基于矩阵分解的协同过滤模型,已经广泛应用于服务推荐任务中。然而,CF模型在捕获mashup与服务之间复杂的交互关系时,很难处理稀疏的调用矩阵,从而导致性能不佳。为了解决这一问题,我们将协同过滤和注意力CNN相结合,提出了一种用于web服务推荐的混合协同过滤和注意力CNN模型。将mashup-service调用矩阵和基于注意力的CNN无缝集成到深度神经网络中,可用于捕获复杂的mashup-service关系。我们获得的实验结果可以验证我们提出的模型在服务推荐任务中比几种最先进的方法表现得更好,并进一步证明了我们模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Collaborative Filtering with Attention CNN for Web Service Recommendation
Service-oriented computing has significantly affect the software development in Web 2.0 era, computing diagram and architectures based on Web services were comprehensively developed. As the Web services were continuously increasing, it becomes more difficult for users to screen out Web services that meet their needs and with good quality while facing with a large amount of Web Services. Therefore, how to recommend the best Web services for users has become a hot research direction in the domain of service computing. Many machine-learning approaches, especially CF (collaborative filtering) models based on matrix factorization, has been widely used in service recommendation tasks. However, it is tough for CF models to deal with sparse invocation matrix when capturing the complicate interaction relation between mashups and services, which would result in a bad performance. To solve this problem, we proposed a hybrid collaborative filtering with attention CNN model for web service recommendation by combining collaborative filtering and attention CNN. The mashup-service invocation matrix as well as attention-based CNN are seamlessly integrated into deep neural nets, which could be used to capture the complicated mashup-service relationships. The experiment result we gain could validate that our proposed models performs better than several state-of-the-art approaches in service recommendation tasks, and further demonstrate the effectiveness of our models.
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