Mobile Service Recommendation via Combining Enhanced Hierarchical Dirichlet Process and Factorization Machines
Document Type
Article
Publication Date
1-1-2019
Abstract
Recently, Mashup is becoming a promising software development method in the mobile service computing environment, which enables software developers to compose existing mobile services to create new or value-added composite RESTful web application. Due to the rapid increment of mobile services on the Internet, it is difficult to find the most suitable services for building user-desired Mashup application. In this paper, we integrate word embeddings enhanced hierarchical Dirichlet process and factorization machines to recommend mobile services to build high-quality Mashup application. This method, first of all, extends the description documents of Mashup applications and mobile services by using Word2vec tool and derives latent topics from the extended description documents of Mashup and mobile services by exploiting the hierarchical Dirichlet process. Secondly, the factorization machine is applied to train these latent topics to predict the probability of mobile services invoked by Mashup and recommend mobile services with high-quality for Mashup development. Finally, the performance of the proposed method is comprehensively evaluated. The experimental results indicate that compared with the existing recommendation methods, the proposed method has significant improvements in MAE and RMSE.
Identifier
85064344173 (Scopus)
Publication Title
Mobile Information Systems
External Full Text Location
https://doi.org/10.1155/2019/6423805
e-ISSN
1875905X
ISSN
1574017X
Volume
2019
Grant
17K033
Fund Ref
National Natural Science Foundation of China
Recommended Citation
Cao, Buqing; Li, Bing; Liu, Jianxun; Tang, Mingdong; Liu, Yizhi; and Li, Yanxinwen, "Mobile Service Recommendation via Combining Enhanced Hierarchical Dirichlet Process and Factorization Machines" (2019). Faculty Publications. 8098.
https://digitalcommons.njit.edu/fac_pubs/8098
