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Residual attention graph convolutional network for web services classification

机译:Web服务分类的剩余注意力图卷积网络

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More and more attention has been paid to web service classification as it can improve the quality of service discovery and management in the service repository, and can be widely used to locate developers & rsquo; desired services. Although traditional classification method based on supervised learning model to this task shows promising results, it still suffered from the following shortcomings: (i) the performance of conventional machine learning methods highly depends on the quality of manual feature engineering; (ii) some classification methods (such as CNN, RNN, etc.) are usually limited to very shallow models due to the vanishing gradient problem and cannot extract more features, which have great impact on the accuracy of web service classification. To overcome these challenges, a novel web service classification model named Residual Attention Graph Convolutional Network (RAGCN) is proposed. Firstly, adding an attention mechanism to the graph convolutional network can assign different weights to the neighborhood nodes without complicated matrix operations or relying on understanding the entire graph structure. Secondly, using residual learning to deepen the depth of the model can extract more features. The comprehensive experimental results on real dataset show that the proposed model outperforms the state-of-the-art approaches and proves its potentially good interpretability for graphical analysis.(c) 2021 Elsevier B.V. All rights reserved.
机译:越来越多地关注Web服务分类,因为它可以提高服务存储库中的服务发现和管理质量,并且可以广泛用于找到开发人员和rsquo;期望的服务。虽然基于监督学习模型的传统分类方法显示了有希望的结果,但它仍然遭受以下缺点:(i)传统机器学习方法的性能高度取决于手动特征工程的质量; (ii)由于消失的梯度问题,一些分类方法(如CNN,RNN等)通常限于非常浅的模型,并且不能提取更多特征,这对Web服务分类的准确性产生了很大影响。为了克服这些挑战,提出了一种名为残差图卷积网络(RAGCN)的新型Web服务分类模型。首先,向图形卷积网络添加注意机制可以为邻域节点分配不同权重,没有复杂的矩阵操作,或者依赖于理解整个图形结构。其次,使用剩余学习来深化模型的深度可以提取更多功能。真实数据集的综合实验结果表明,该建议的型号优于最先进的方法,并证明了其对图形分析的潜在良好的解释性。(c)2021 Elsevier B.v.保留所有权利。

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