Previous research shows that teams with diverse backgrounds and skills can outperform homogeneous teams. However, people often prefer to work with others who are similar and familiar to them and fail to assemble teams with high diversity levels. We study the team formation problem by considering a pool of individuals with different skills and characteristics, and a social network that captures the familiarity among these individuals. The goal is to assign all individuals to diverse teams based on their social connections, thereby allowing them to preserve a level of familiarity. We formulate this team formation problem as a multiobjective optimization problem to split members into well-connected and diverse teams within a social network. We implement this problem employing the Non-dominated Sorting Genetic Algorithm II (NSGA-II), which finds team combinations with high familiarity and diversity levels in O(n2) time. We tested this algorithm on three empirically collected team formation datasets and against three benchmark algorithms. The experimental results confirm that the proposed algorithm successfully formed teams that have both diversity in member attributes and previous connections between members. We discuss the benefits of using computational approaches to augment team formation and composition.
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Autor | Gómez Zara, Diego Alonso Das, Archan Pawlow, Bradley Contractor, Noshir |
Título | In search of diverse and connected teams: A computational approach to assemble diverse teams based on members’ social networks |
Revista | PLoS ONE |
ISSN electrónico | 19326203 |
Volumen | 17 |
Número de publicación | 9 |
Número de artículo | e0276061 |
Fecha de publicación | 2022 |
Resumen | Previous research shows that teams with diverse backgrounds and skills can outperform homogeneous teams. However, people often prefer to work with others who are similar and familiar to them and fail to assemble teams with high diversity levels. We study the team formation problem by considering a pool of individuals with different skills and characteristics, and a social network that captures the familiarity among these individuals. The goal is to assign all individuals to diverse teams based on their social connections, thereby allowing them to preserve a level of familiarity. We formulate this team formation problem as a multiobjective optimization problem to split members into well-connected and diverse teams within a social network. We implement this problem employing the Non-dominated Sorting Genetic Algorithm II (NSGA-II), which finds team combinations with high familiarity and diversity levels in O(n2) time. We tested this algorithm on three empirically collected team formation datasets and against three benchmark algorithms. The experimental results confirm that the proposed algorithm successfully formed teams that have both diversity in member attributes and previous connections between members. We discuss the benefits of using computational approaches to augment team formation and composition. |
Derechos | acceso abierto |
Licencia | Attribution 4.0 International (CC BY 4.0) |
Agencia financiadora | 2020 Microsoft Research National Science Foundation National Institute of Health Directorate for Social, Behavioral and Economic Sciences National Aeronautics and Space Administration Microsoft Research |
DOI | 10.1371/journal.pone.0276061 |
Editorial | Public Library of Science |
Enlace | https://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0276061&type=printable https://doi.org/10.1371/journal.pone.0276061 |
Id de publicación en Pubmed | 36350821 |
Id de publicación en Scopus | SCOPUS_ID:85141526784 |
Id de publicación en WoS | WOS:000924711500019 |
Publicado en / Colección | PLoS ONE |
Tema ODS | 11 Sustainable cities and communities 03 Good health and well-being |
Tema ODS español | 11 Ciudades y comunidades sostenibles 03 Salud y bienestar |
Temática | Ciencias de la computación |
Tipo de documento | artículo |