Title
Web Service Discovery Based on Information Gain Theory and BiLSTM with Attention Mechanism.
Abstract
Web service discovery is an important problem in service-oriented computing with the increasing number of Web services. Clustering or classifying Web services according to their functionalities has been proved to be an effective way to Web service discovery. Recently, semantic-based Web services clustering exploits topic model to extract latent topic features of Web services description document to improve the accuracy of service clustering and discovery. However, most of them don’t consider deep and fine-grained level information of description document, such as the weight (importance) for each word or the word order. While the deep and fine-grained level information can be fully used to argument service clustering and discovery. To address this problem, we proposed a Web service discovery approach based on information gain theory and BiLSTM with attention mechanism. This method firstly obtains the effective words through information gain theory and then adds them to an attention-based BiLSTM neural network for Web service clustering. The comparative experiments are performed on ProgrammableWeb dataset, and the results show that a significant improvement is achieved for our proposed method, compared with baseline methods.
Year
DOI
Venue
2018
10.1007/978-3-030-12981-1_45
CollaborateCom
Field
DocType
Citations 
Word order,Information retrieval,Computer science,Information gain,Web service clustering,Exploit,Topic model,Cluster analysis,Web service,Artificial neural network,Distributed computing
Conference
0
PageRank 
References 
Authors
0.34
22
5
Name
Order
Citations
PageRank
Xiangping Zhang133.12
Jianxun Liu264067.12
Buqing Cao395.93
Qiaoxiang Xiao400.34
Yiping Wen5258.59