English

Graph Pattern Matching for Dynamic Team Formation

Databases 2018-01-04 v1

Abstract

Finding a list of k teams of experts, referred to as top-k team formation, with the required skills and high collaboration compatibility has been extensively studied. However, existing methods have not considered the specific collaboration relationships among different team members, i.e., structural constraints, which are typically needed in practice. In this study, we first propose a novel graph pattern matching approach for top-k team formation, which incorporates both structural constraints and capacity bounds. Second, we formulate and study the dynamic top-k team formation problem due to the growing need of a dynamic environment. Third, we develop an unified incremental approach, together with an optimization technique, to handle continuous pattern and data updates, separately and simultaneously, which has not been explored before. Finally, using real-life and synthetic data, we conduct an extensive experimental study to show the effectiveness and efficiency of our graph pattern matching approach for (dynamic) top-k team formation.

Keywords

Cite

@article{arxiv.1801.01012,
  title  = {Graph Pattern Matching for Dynamic Team Formation},
  author = {Shuai Ma and Jia Li and Chunming Hu and Xudong Liu and Jinpeng Huai},
  journal= {arXiv preprint arXiv:1801.01012},
  year   = {2018}
}