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Most Significant Change×Outcome Mapping×
CampPublic PolicyPublic Policy
FamíliaProcess / pipelineProcess / pipeline
Any d'origen20052001
Autor originalRick Davies & Jess DartSarah Earl, Fred Carden & Terry Smutylo (IDRC)
TipusParticipatory, story-based monitoring and evaluation techniqueActor-centred planning, monitoring and evaluation approach
Font seminalDavies, R., & Dart, J. (2005). The 'Most Significant Change' (MSC) Technique: A Guide to Its Use. link ↗Earl, S., Carden, F., & Smutylo, T. (2001). Outcome Mapping: Building Learning and Reflection into Development Programs. Ottawa: International Development Research Centre (IDRC). ISBN: 9780889369597
ÀliesMSC, MSC Technique, Story-Based Monitoring, Davies-Dart Most Significant ChangeOM, IDRC Outcome Mapping, Behavioural Change Mapping
Relacionats44
ResumThe Most Significant Change (MSC) technique is a participatory, story-based approach to monitoring and evaluation developed by Rick Davies and refined with Jess Dart. It involves the systematic collection of stories of significant change from the field and the deliberative selection of the most significant of these by panels of stakeholders. There are no predefined indicators; instead, value judgements about what change matters most are made transparently by those involved, making MSC especially suited to capturing unexpected and qualitative outcomes in complex programs.Outcome Mapping is a planning, monitoring and evaluation methodology developed by the International Development Research Centre (IDRC) and set out by Sarah Earl, Fred Carden and Terry Smutylo in 2001. It redefines results as changes in the behaviour, relationships, activities and actions of the people and organisations a program works with directly — its 'boundary partners' — rather than as downstream development impacts. By focusing on the behavioural changes a program can plausibly influence, Outcome Mapping addresses the attribution problem head-on and shifts evaluation toward learning and contribution.
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ScholarGateCompara mètodes: Most Significant Change · Outcome Mapping. Recuperat el 2026-06-24 de https://scholargate.app/ca/compare