Causal inferences on the effectiveness of complex social programs: Navigating assumptions, sources of complexity and evaluation design challenges

Resource type
Author/contributor
Title
Causal inferences on the effectiveness of complex social programs: Navigating assumptions, sources of complexity and evaluation design challenges
Abstract
This paper explores avenues for navigating evaluation design challenges posed by complex social programs (CSPs) and their environments when conducting studies that call for generalizable, causal inferences on the intervention’s effectiveness. A definition is provided of a CSP drawing on examples from different fields, and an evaluation case is analyzed in depth to derive seven (7) major sources of complexity that typify CSPs, threatening assumptions of textbook-recommended experimental designs for performing impact evaluations. Theoretically-supported, alternative methodological strategies are discussed to navigate assumptions and counter the design challenges posed by the complex configurations and ecology of CSPs. Specific recommendations include: sequential refinement of the evaluation design through systems thinking, systems-informed logic modeling; and use of extended term, mixed methods (ETMM) approaches with exploratory and confirmatory phases of the evaluation. In the proposed approach, logic models are refined through direct induction and interactions with stakeholders. To better guide assumption evaluation, question-framing, and selection of appropriate methodological strategies, a multiphase evaluation design is recommended.
Publication
Evaluation and Program Planning
Volume
59
Pages
128-140
Date
December 1, 2016
Journal Abbr
Evaluation and Program Planning
ISSN
0149-7189
Short Title
Causal inferences on the effectiveness of complex social programs
Accessed
04/02/2018, 17:17
Library Catalogue
ScienceDirect
Citation
Chatterji, M. (2016). Causal inferences on the effectiveness of complex social programs: Navigating assumptions, sources of complexity and evaluation design challenges. Evaluation and Program Planning, 59, 128–140. https://doi.org/10.1016/j.evalprogplan.2016.05.009