The New Statistics: Why & How Corey Mackenzie, Ph.D., C. Psych.

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Presentation transcript:

The New Statistics: Why & How Corey Mackenzie, Ph.D., C. Psych

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

1 st change to how we do research: Enhance research integrity by addressing three threats

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

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

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

2 n change to how we do research: stop evaluating research outcomes by testing the null hypothesis

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.

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

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

Solution #2 cbu.cam.ac.uk/statswiki/FAQ/effectSize G*Power

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

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

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” 8/manuscriptSubmission

Epi Example