Day 2 Review Chapters 5 – 7 Probability, Random Variables, Sampling Distributions.

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Day 2 Review Chapters 5 – 7 Probability, Random Variables, Sampling Distributions

Probability A measurement of the likelihood of an event. It represents the proportion of times we’d expect to see an outcome in a long series of repetitions.

Formulas The following facts/formulas are helpful in calculating and interpreting the probability of an event: 0 ≤ P(A) ≤ 1 P(SampleSpace) = 1 P(A C ) = 1 - P(A) P(A or B) = P(A) + P(B) – P(A and B) P(A and B) = P(A) P(B|A) A and B are independent iff P(B) = P(B|A)

Hints and Tricks When calculating probabilities, it helps to consider the Sample Space. List all outcomes if possible. Draw a tree diagram or Venn diagram Use the Multiplication Counting Principle Sometimes it is easier to use common sense rather than memorizing formulas!

Random Variables A Random Variable, X, is a variable whose outcome is unpredictable in the short-term, but shows a predictable pattern in the long run. Discrete vs. Continuous

Expected Value The Expected Value, E(X) = μ, is the long-term average value of a Random Variable.

Variance of Expected Value The Variance, Var(X) =,is the amount of variability from μ that we expect to see in X. The Standard Deviation of X, Var(X) for a Discrete X

Means and Variances of Random Variables The following rules are helpful when working with Random Variables.

Binomial Settings Some Random Variables are the result of events that have only two outcomes (success and failure). We define a Binomial Setting to have the following features Two Outcomes - success/failure Fixed number of trials - n Independent trials Equal P(success) for each trial

Binomial Probabilities If conditions are met, a binomial situation may be approximated by a normal distribution If np ≥10 and n(1-p)≥10, then B(n,p) ~ Normal

Geometric Setting Some Random Variables are the result of events that have only two outcomes (success and failure), but have no fixed number of trials. We define a Geometric Setting to have the following features Two Outcomes - success/failure No Fixed number of trials (go until you succeed) Independent trials Equal P(success) for each trial

Geometric Probabilities If X is Geometric, the following formulas can be used to calculate the probabilities of events in X.

Parameters and Statistics Our goal in statistics to to gain information about the population by collecting data from a sample. Parameter Population Characteristic: μ, p (or π) Statistic Sample Characteristic:

Sampling Distributions When we take a sample, we are not guaranteed the statistic we measure is equal to the parameter in question. Repeated sampling may result in different statistic values. Bias and Variability

Proportions The distribution of p-hat is approximately normal if: If the population proportion is p or (π) and np≥10, n(1-p)≥10 population>10n (10% rule)

Means The sampling distribution of x-bar is approximately normal if: If the population mean is μ (and we know ) If the population is Normal OR n≥30 (Central Limit Theorem)