Title
A Fine-Grained API Link Prediction Approach Supporting Mashup Recommendation
Abstract
Service (API) discovery and recommendation is key to the wide spread of service oriented architecture and service oriented software engineering. Service recommendation typically relies on service linkage prediction calculated by the semantic distances (or similarities) among services based on their collection of inherent attributes. Given a specific context (mashup goal), however, different attributes may contribute differently to a service linkage. In this paper, instead of training a model for all attributes as a whole, a novel approach is presented to simultaneously train separate models for individual attributes. Meanwhile, a latent attribute modeling method is developed to reveal context-aware attribute distribution. Experiments over real-world datasets have demonstrated that this fine-grained method yields higher link prediction accuracy.
Year
DOI
Venue
2017
10.1109/ICWS.2017.36
2017 IEEE International Conference on Web Services (ICWS)
Keywords
Field
DocType
Context-aware service recommendation,attribute model training,latent attribute distribution,mashup recommendation
Mashup,Data mining,Computer science,Service-oriented software engineering,Context model,Database,Service-oriented architecture
Conference
ISBN
Citations 
PageRank 
978-1-5386-0753-4
1
0.37
References 
Authors
11
11
Name
Order
Citations
PageRank
Qihao Bao1172.41
Jia Zhang262355.65
Xiaoyi Duan321.07
Rahul Ramachandran411729.54
Tsengdar J. Lee5235.62
Yankai Zhang610.37
Yuhao Xu710.37
Seungwon Lee812732.51
Lei Pan9299.49
Patrick Gatlin1021.75
Manil Maskey113112.02