Graphical models and the challenge of evidence-based practice in development and sustainability

Abstract

Governments and social benefit organizations are expected to consider evidence in decision-making. In development and sustainability, evidence spans disciplines and methodological traditions and is often inconclusive. Graphical models are widely promoted to organize interdisciplinary evidence and improve decision-making by considering mediating variables. However, the reproducibility, objectivity and benefits for decision-making of graphical models have not been studied. We evaluate these considerations in the setting of energy services in the developing world, a contemporary development and sustainability imperative. We develop a database of relevant causal relations (313 concepts, 1337 relationships) asserted in the literature (561 peer-reviewed articles). We demonstrate that high-level relationships of interest to practitioners feature less consistent evidence than the causal relationships that underpin them, supporting increased use of problem decomposition through graphical modeling approaches. However, adding such detail increases complexity exponentially, introducing a hazard of overparameterization if evidence is not available to match the level of mechanistic detail.

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Keywords

Technology, Life Sciences & Biomedicine, Computer Science, Interdisciplinary Applications, Engineering, Environmental, Environmental Sciences, Computer Science, Engineering, Environmental Sciences & Ecology, Results chain, Bayesian network, Logic model, Evidence assessment, INTERNATIONAL DEVELOPMENT, SYSTEMATIC REVIEWS, CRITIQUE, Environmental Engineering

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