Statistical terminology Flashcards
α (Alpha) definition
Significance of a statistical test.
α (Alpha) is the probability of making a Type 1 error
Type 1 error definition
Rejecting the null hypothesis when the null hypothesis is true. I.e. finding a difference when there is none (or it occurs by chance alone)
p value
the probability of obtaining the observed values if the null hypothesis is true. P value is compared to the preset alpha value (preset level of significance). Does not confirm that the difference is true, only the probability that the difference has occurred by chance.
β (Beta) definition
β (Beta): power of a statistical test.
This is the probability of making a type 2 error.
Type 2 error
This is the probability of accepting the null hypothesis when the alternative hypothesis is true i.e. not accepting a difference when there is one.
This is the study power, which is determined by the sample size, effect size and variance.
Power definition
Power = 1- β
which equates to the probability of correctly rejecting the null hypothesis (finding a difference when there truly is one). Typically set at 0.8
Sample size
the number of subjects required in a study to determine an effect with a predetermined alpha and power value
95% confidence interval definition
Describes the values between which there is a 95% chance that the true population value lies. When the confidence intervals for two samples overlap, there is no statistically significant difference.