4.7 Article

A Data-Characteristic-Aware Latent Factor Model for Web Services QoS Prediction

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2020.3014302

关键词

Web Service; quality-of-service; QoS; latent factor analysis; density peak; data-characteristic-aware; missing data; big data; topological neighborhood; noise data; service selection; data science

资金

  1. National Key Research and Development Program of China [2016YFB 1000901]
  2. National Natural Science Foundation of China [61702475, 61772493, 91746209, 61902370]
  3. Natural Science Foundation of Chongqing (China) [cstc2019jcyjjqX0013, cstc2019jcyjmsxmX0578]
  4. Guangdong Province Universities and College Pearl River Scholar Funded Scheme (2019)
  5. CAS Light of West China Program
  6. Pioneer Hundred Talents Program of Chinese Academy of Sciences

向作者/读者索取更多资源

This paper proposes a data-characteristic-aware latent factor (DCALF) model for highly accurate QoS predictions. By appropriately implementing predictions based on the characteristics of given QoS data and detecting user and service neighborhoods and noises, the model outperforms existing QoS predictors and is highly competitive in the field of Web service selection and recommendation.
How to accurately predict unknown quality-of-service (QoS) data based on observed ones is a hot yet thorny issue in Web service-related applications. Recently, a latent factor (LF) model has shown its efficiency in addressing this issue owing to its high accuracy and scalability. An LF model can be improved by identifying user and service neighborhoods based on user and service geographical information. However, such information can be difficult to acquire in most applications with the considerations of information security, identity privacy, and commercial interests in a real system. Besides, the existing LF model-based QoS predictors mostly ignore the reliability of given QoS data where noises commonly exist to cause accuracy loss. To address the above issues, this paper proposes a data-characteristic-aware latent factor (DCALF) model to implement highly accurate QoS predictions, where 'data-characteristic-aware' indicates that it can appropriately implement QoS prediction according to the characteristics of given QoS data. Its main idea is two-fold: a) it detects the neighborhoods and noises of users and services based on the dense LFs extracted from the original sparse QoS data, b) it incorporates a density peaks-based clustering method into its modeling process for achieving the simultaneous detections of both neighborhoods and noises of QoS data. With such designs, it precisely represents the given QoS data in spite of their sparsity, thereby achieving highly accurate predictions for unknown ones. Experimental results on two QoS datasets generated by real-world Web services demonstrate that the proposed DCALF model outperforms state-of-the-art QoS predictors, making it highly competitive in addressing the issue of Web service selection and recommendation.

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