Amit Anil Nanavati, Nitendra Rajput, et al.
MobileHCI 2011
In IT strategic outsourcing businesses, it is critical to have competent deal teams design competitive service solutions and swiftly respond to clients' requests for proposals. In this paper we present a general team recommendation framework for finding the best deal teams to pursue such engagement opportunities. Little previous work on team recommendations considers both individual and team-level features at the same time. Our proposed framework can take into account diverse individual and team features, and accommodate various cost or feature functions. We introduce a team quality metric based on a weighted linear combination of these features, the weights of which are learned using a machine learning approach by leveraging historical project outcomes. A combinatorial optimization algorithm is finally applied to search the possible solution space for the approximate best team. We report a preliminary evaluation of our framework by applying it to real-world data from strategic outsourcing businesses at a large IT service company. We also compare our approach with other existing work by using the public DBLP dataset for recommending teams in academic paper authoring.
Amit Anil Nanavati, Nitendra Rajput, et al.
MobileHCI 2011
Amol Thakkar, Andrea Antonia Byekwaso, et al.
ACS Fall 2022
Dimitrios Christofidellis, Giorgio Giannone, et al.
MRS Spring Meeting 2023
Carla F. Griggio, Mayra D. Barrera Machuca, et al.
CSCW 2024