| Literature DB >> 29704777 |
Frances Lawrenz1, Elizabeth Kunz Kollmann2, Jean A King3, Marjorie Bequette4, Scott Pattison5, Amy Grack Nelson6, Sarah Cohn7, Christopher L B Cardiel8, Stephanie Iacovelli9, Gayra Ostgaard Eliou10, Juli Goss11, Lauren Causey12, Anne Sinkey13, Marta Beyer14, Melanie Francisco13.
Abstract
This study provides results from an NSF funded, four year, case study about evaluation capacity building in a complex adaptive system, the Nanoscale Informal Science Education Network (NISE Net). The results of the Complex Adaptive Systems as a Model for Network Evaluations (CASNET) project indicate that complex adaptive system concepts help to explain evaluation capacity building in a network. The NISE Network was found to be a complex learning system that was supportive of evaluation capacity building through feedback loops that provided for information sharing and interaction. Participants in the system had different levels of and sources of evaluation knowledge. To be successful at building capacity, the system needed to have a balance between both centralized and decentralized control, coherence, redundancy, and diversity. Embeddedness of individuals within the system also provided support and moved the capacity of the system forward. Finally, success depended on attention being paid to the control of resources. Implications of these findings are discussed.Entities:
Keywords: Case studies; Complex adaptive systems; Evaluation capacity building; Networks
Mesh:
Year: 2018 PMID: 29704777 DOI: 10.1016/j.evalprogplan.2018.04.005
Source DB: PubMed Journal: Eval Program Plann ISSN: 0149-7189