Central Limit Theorem
Sampling distribution of the sample mean approximates a normal distribution as sample size increases
Bimodal Distribution
Distribution with two different modes
Box Plot
Displays five-number summary (minimum, Q1, median, Q3, maximum)
Confounding Variable
Variable related to both the treatment and the outcome
ANOVA (Analysis of Variance)
Compares means of three or more groups
Categorical Data Analysis: Chi-square Test
Assesses relationships between categorical variables
Combination
Selection of objects without regard to order
Bayes' Theorem
Calculates probability of an event based on prior knowledge of conditions
Coefficient of Determination
R-squared; proportion of variance in the dependent variable predictable from the independent variable
Control Group
Group in an experiment that does not receive treatment
Biased vs Unbiased Estimator
Biased: systematically off; Unbiased: accurate on average
Addition Rule for Probability
P(A or B) = P(A) + P(B) - P(A and B)
Binomial Distribution
Probability distribution of number of successes in a fixed number of trials
Cluster Sampling
Population divided into clusters; randomly select clusters, then sample all in cluster
Convenience Sampling
Use results that are easy to get
Conditional Probability
Probability of an event occurring given another event has already occurred
Chi-Square Goodness of Fit Test
Tests if sample distribution fits a population distribution
Correlation Coefficient
Measures strength and direction of linear relationship between two variables
Confounding vs Lurking Variable
Confounding: affects both variables; Lurking: affects outcome but not considered in analysis
Blinding
Participants unaware of whether they are receiving treatment or placebo
Confidence Interval
Range of values believed to contain population parameter with a certain level of confidence
Cumulative Frequency
Sum of frequencies for that category and all previous categories
Chi-Square Test for Independence
Tests if two categorical variables are independent
Alternative Hypothesis
Statement researcher wants to prove
Conditional Probability Formula
P(A|B) = P(A and B)/P(B)