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An introduction to probabilities and statistics, focusing on the Frequentist and Bayesian approaches. The authors discuss the replication crisis in science and the issues with Frequentist statistics, including p-hacking, data dredging, and significance chasing. They then explain the Bayesian approach, which uses subjective belief and updates beliefs with new information. The document also includes a comparison of the two approaches and their benefits.
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Moutoshi Pal, Lica Iwaki & Carolin Lingl Research Methods in Clinical Psychology October 30, 2019
**1. Quick summary of the paper
Null Hypothesis Significance Testing (NHST)
Definition of the p-value
Definition of the p-value
Definition of the p-value
Recall, Frequentist’s definition of p-value:
****Emphasis: the p-value is not the probability of a theory or hypothesis, but the probability of the observed data given the hypothesis
Bayesian approach : probability is an expression of a degree of belief of an event, based on prior knowledge (i.e. previous experiments) or personal beliefs
The probability of the observed data/result given that some hypothesis is true is NOT equivalent to the probability that a hypothesis is true given that some data/result has been observed.
● Uses the idea of updating beliefs with new information when testing a hypothesis
● Start with a belief about how something works (i.e. “eating sushi is dangerous”)
Prior beliefs x Bayes’ Factor = Posterior belief (= updated, new belief)
Bayes’ Factor : represents the amount of information that we’ve learned about our hypotheses form the data
● Criticism: prior belief can be different from person to person ○ Includes subjective “beliefs” in calculation (subjective, not objective)
● Prior Distribution ● Likelihood gives the function of a parameter given the data ● Data
Frequentist
Bayesian
Frequentist
Confidence Interval : “there is a 95% probability that when I compute a confidence interval from data of this sort, the true value of θ will fall within it”.
Bayesian Credible Interval: “given our observed data (posterior distribution), there is a 95% probability that the true value of θ falls within the credible region”