4.6 Article

Time-Series Snapshot Network for Partner Recommendation: A Case Study on OSS

Journal

IEEE TRANSACTIONS ON COMPUTATIONAL SOCIAL SYSTEMS
Volume 9, Issue 4, Pages 1048-1059

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSS.2021.3070914

Keywords

Data models; Task analysis; Search problems; Synchronization; Sustainable development; Social networking (online); Productivity; Link prediction; network embedding; open-source software (OSS); partner recommendation; random walk; social network; temporal network

Funding

  1. National Natural Science Foundation of China [61973273, 62072406]
  2. Zhejiang Provincial Natural Science Foundation of China [LR19F030001, LY19F020025]

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The last decade has seen rapid growth in open-source software (OSS) development, with partner recommendation potentially further boosting its development. Researchers propose a method to improve developer recommendation performance through a time-series snapshot network (TSSN) and temporal biased walk (TBW).
The last decade has witnessed the rapid growth of open-source software (OSS). Still, all contributors may find it difficult to assimilate into the OSS community even they are enthusiastic to make contributions. We thus suggest that partner recommendation across different roles may benefit both the users and developers, i.e., once we are able to make successful recommendation for those in need, it may dramatically contribute to the productivity of developers and the enthusiasm of users, thus further boosting OSS projects' development. Motivated by this potential, we model the partner recommendation as link prediction task from email data via network embedding methods. In this article, we introduce time-series snapshot network (TSSN) that is a mixture network to model the interactions among users and developers. Based on the established TSSN, we perform temporal biased walk (TBW) to automatically capture both temporal and structural information of the email network, i.e., the behavioral similarity between individuals in the OSS email network. Experiments on ten Apache data sets demonstrate that the proposed TBW significantly outperforms a number of advanced random walk-based embedding methods, leading to the state-of-the-art recommendation performance.

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