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The Importance of Negative Evidence

The Importance of Negative Evidence. Rob D. van den Berg May, 2013. Setting the Stage. Evaluations should enable “learning from mistakes” Negative evidence (“what does not work”) could help us Evidence movement focuses on positive evidence If it does not work: no clue why, just stop funding

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The Importance of Negative Evidence

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  1. The Importance of Negative Evidence Rob D. van den Berg May, 2013

  2. Setting the Stage • Evaluations should enable “learning from mistakes” • Negative evidence (“what does not work”) could help us • Evidence movement focuses on positive evidence • If it does not work: no clue why, just stop funding • If it does work: no certainty on why, just increase funding • The nature of positive and negative evidence • A framework for integrating negative evidence: a Theory of No Change (Christine Woerlen)

  3. Data Gathering by a Turkey • Every day the Turkey gathers data on food, water and security: • Safe and secure environment on the farm with a fence to keep wolves and foxes out • Food and water delivered by the farmer every day • Counterfactual: Turkey’s distant cousin lives in the wild and faces many uncertainties… • Often on the run from predators • Organized hunts • Food and water availability have wild fluctuations • High probability that life is good for a turkey on a farm

  4. Turkey graphs Predator threats Water availability Food availability

  5. Farm turkey Cut-off point: head of the Turkey Wild turkey Predator threats Water availability Food availability

  6. Black swan event (NassimTaleb/Popper) • Many data points on food and water availability and predator threats • Positive proof that farm turkeys are better off than wild turkeys • Farmer cuts off the head of the farm turkey • One event proofs that the “naïve” theory is not correct • Large n provides statistically significant proof for a theory • One n (a black swan event) is more powerful than the combined might of many n • However large the n is, it will never deliver 100 percent proof • One n may proof the theory wrong with 100 percent certainty

  7. Causality in Science • Causality refers to the relationship between two events: the cause and the effect, where the second event is caused by the first • Scientific theories predict and explain effects • Early 20th century: logical positivism • Logic guides deductions from general theories to set up tests • Empirical data can provide positive proof of theory • Popper: logical positivism cannot escape the induction problem of Hume • However many data you gather, it will never constitute positive proof that the theory is right • The proof that is scientifically and logically sound is negative proof • Challenge is to falsify a theory

  8. Positivism in Development • Logical positivism is no longer in vogue in the natural sciences • Testing of medicine is based on logical positivism and has been adopted as the “gold standard” by the evidence movement • Naïve positivism has been replaced with nuanced positivism that poses a null hypothesis that should be disproved; however, this still delivers “positive” proof the treatment works • Health, Education and Economics are heavily influenced; development has followed • Large n, divided in two groups (with/without intervention) is needed for evidence

  9. From zero to small n • Explanatory power: zero difference in n • Theory that explains more is accepted • Example: fractal geophysics (chaos theory) versus linear geophysics • Occam’s razor: zero difference in n • Theory that is simple wins against theory that is complicated • Example: Copernicus versus Ptolemy • Predictive power: one n may suffice • Special theory of relativity was proven through one observation of gravitational pull on light during a solar eclipse • Falsifying a theory: one n may suffice • One black swan will disproof the theory that all swans are white (Popper)

  10. Large n • Data on natural or human phenomena over time • Can establish historical trends – the more n the better • Modeling of large n through macro-economic or other theories • Mathematical approach to “what if” questions – the more n the better • Natural experimentation; also known as quasi-experimental • Large n is welcome but often difficult to find • Randomized controlled trials • Large n is welcome but costly and difficult to control • Systemic reviews • Sifting through large n to find relevant n

  11. Nature of Evidence • The term evidence increasingly refers to outcome of research/studies • Hierarchies of evidence (Campbell collaboration, Maryland hierarchy) focus on large n only • Evidence based on n=1 or no difference in n is no longer recognized as such in some of the literature of the “evidence-movement” • Sciences that use n=1 or no difference in n tend to not be less in policy discussions and provide hardly any countervailing perspectives

  12. Causality in Evaluations • Causality in research focuses on new subjects – to proof or disproof causal linkages that are predicted by theory • Causality in evaluations also tackles old subjects and is not focused on proof or disproof of scientific theories, but on what works and why • Interventions take place in a mixed environment of scientific and technical certainties, unproven theories and scientifically unknown territory • Identification of possible causal linkages takes place through a theory based approach

  13. From ToC to TonC • A theory based approach may lead to a theory of change identifying causal linkages and assumptions covering these • This may also lead to an identification of what could possibly prevent these causal linkages from “working” • It may also identify what prevents the intervention as a whole to move forward • Analogy: a car needs many working components to function as a car, but take away the wheels and it will stop moving • Identification of these factors leads to a “theory of no change”

  14. Meta Analysis • Systemic Reviews go through existing evidence in research and evaluations from the perspective of a specific question • Are cash transfers effective in promoting school attendance? • Many studies and evaluations do not address this question in the exact same way and are thus not accepted as evidence • Health review: only 50 studies accepted from 49.000 • Other forms of meta-evaluations do not pose restrictive questions but pose to explore existing evidence • All quality evaluations on a subject are accepted; and quality evidence in a bad evaluation may also be accepted • Theory based approach

  15. Over to Christine Woerlen!

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