| Literature DB >> 29104408 |
Liangyue Li1, Hanghang Tong1, Nan Cao2, Kate Ehrlich2, Yu-Ru Lin3, Norbou Buchler4.
Abstract
In this paper, we study ways to enhance the composition of teams based on new requirements in a collaborative environment. We focus on recommending team members who can maintain the team's performance by minimizing changes to the team's skills and social structure. Our recommendations are based on computing team-level similarity, which includes skill similarity, structural similarity as well as the synergy between the two. Current heuristic approaches are one-dimensional and not comprehensive, as they consider the two aspects independently. To formalize team-level similarity, we adopt the notion of graph kernel of attributed graphs to encompass the two aspects and their interaction. To tackle the computational challenges, we propose a family of fast algorithms by (a) designing effective pruning strategies, and (b) exploring the smoothness between the existing and the new team structures. Extensive empirical evaluations on real world datasets validate the effectiveness and efficiency of our algorithms.Entities:
Keywords: Team composition; graph kernel; scalability
Year: 2016 PMID: 29104408 PMCID: PMC5667925 DOI: 10.1109/TKDE.2016.2633464
Source DB: PubMed Journal: IEEE Trans Knowl Data Eng ISSN: 1041-4347 Impact factor: 6.977