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The New Statistics: Why & How Corey Mackenzie, Ph.D., C. Psych
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http://www.latrobe.edu.au/scitecheng/about/staff/profile?uname=GDCumming http://www.latrobe.edu.au/psy/research/cognitive-and-developmental-psychology/esci
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Outline Need for changes to how we conduct research – Three threats to research integrity – Shift from Null Hypothesis Sig Testing (NHST) 3 “new” solutions – Estimation – Effect sizes – Meta-analysis
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1 st change to how we do research: Enhance research integrity by addressing three threats
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Threat to Integrity #1 We must have complete reporting of findings – Small or large effects, important or not Challenging because journals have limited space and are looking for novel, “significant” findings Potential solutions – Online data repositories – New online journals – Open-access journals
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Threat to Integrity #2 We need to avoid selection and bias in data analysis (e.g., cherry picking) How? – Prespecified research in which critical aspects of studies are registered beforehand – Distinguishing exploratory from prespecified studies
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Threat to Integrity #3 We need published replications (ideally with more precise estimates than original study) – Key for meta-analysis – Need greater opportunities to report them
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2 n change to how we do research: stop evaluating research outcomes by testing the null hypothesis
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Problems with p-values In April 2009, people rushed to Boots pharmacies in Britain to buy No. 7 Protect & Perfect Intense Beauty Serum. They were prompted by media reports of an article in the British Journal of Dermatology stating that the anti-ageing cream “produced statistically significant improvement in facial wrinkles as compared to baseline assessment (p =.013), whereas [placebo-treated] skin was not significantly improved (p =.11)”. The article claimed a statistically significant effect of the cream because p.05. In other words, the cream had an effect, but the control material didn’t.
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Problems with NHST Kline (2004) What’s Wrong with Stats Tests – 8 Fallacies about null hypothesis testing Encourages dichotomous thinking, but effects come in shades of grey – P =.001,.04,.06,.92 NHST is strongly affected by sample size
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Solution #1 Support for Bill 32 is 53% in a poll with an error margin of 2% – i.e., 53 (51-55 with 95% confidence) vs Support is statistically significantly greater than 50%, p <.01
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Solution #2 http://en.wikipedia.org/wiki/Effect_size http://lsr-wiki-01.mrc- cbu.cam.ac.uk/statswiki/FAQ/effectSize G*Power
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Solution #3 Meta-analysis – P-values have no (or very little) role except their negative influence on the file-drawer effect – Overcomes wide confidence intervals often given by individual studies – Can makes sense of messy and disputed research literatures
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Why do we love P? Suggests importance We’re reluctant to change Confidence intervals are sometimes embarrassingly wide – 9 ±12 – But this accurately indicates unreliability of data
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Why might we change? 30 years of damning critiques of NHST 6 th edition of APA publication manual – Used by more than 1000 journals across disciplines – Researchers should “wherever possible, base discussion and interpretation of results on point and interval estimates” http://www.sagepub.com/journals/Journal20080 8/manuscriptSubmission
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Epi Example
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